[Enhancement] md2yml pre-commit hook (#732)

* init script

* update scripts and generate new yml

* fix lint: deeplabv3plus.yml

* modify resolution representation

* remove  field

* format crop_size
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谢昕辰 2021-08-01 00:31:58 +08:00 committed by GitHub
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commit 52b4fa5b9a
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62 changed files with 8074 additions and 7498 deletions

193
.dev/md2yml.py Executable file
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#!/usr/bin/env python
# This tool is used to update model-index.yml which is required by MIM, and
# will be automatically called as a pre-commit hook. The updating will be
# triggered if any change of model information (.md files in configs/) has been
# detected before a commit.
import glob
import os
import os.path as osp
import sys
import mmcv
MMSEG_ROOT = osp.dirname(osp.dirname((osp.dirname(__file__))))
def dump_yaml_and_check_difference(obj, filename):
"""Dump object to a yaml file, and check if the file content is different
from the original.
Args:
obj (any): The python object to be dumped.
filename (str): YAML filename to dump the object to.
Returns:
Bool: If the target YAML file is different from the original.
"""
original = None
if osp.isfile(filename):
with open(filename, 'r', encoding='utf-8') as f:
original = f.read()
with open(filename, 'w', encoding='utf-8') as f:
mmcv.dump(obj, f, file_format='yaml', sort_keys=False)
is_different = True
if original is not None:
with open(filename, 'r') as f:
new = f.read()
is_different = (original != new)
return is_different
def parse_md(md_file):
"""Parse .md file and convert it to a .yml file which can be used for MIM.
Args:
md_file (str): Path to .md file.
Returns:
Bool: If the target YAML file is different from the original.
"""
collection_name = osp.dirname(md_file).split('/')[-1]
configs = os.listdir(osp.dirname(md_file))
collection = dict(Name=collection_name, Metadata={'Training Data': []})
models = []
datasets = []
with open(md_file, 'r') as md:
lines = md.readlines()
i = 0
current_dataset = ''
while i < len(lines):
line = lines[i].strip()
if len(line) == 0:
i += 1
continue
if line[:3] == '###':
datasets.append(line[4:])
current_dataset = line[4:]
i += 2
elif line[0] == '|' and (
i + 1) < len(lines) and lines[i + 1][:3] == '| -':
cols = [col.strip() for col in line.split('|')]
backbone_id = cols.index('Backbone')
crop_size_id = cols.index('Crop Size')
lr_schd_id = cols.index('Lr schd')
mem_id = cols.index('Mem (GB)')
fps_id = cols.index('Inf time (fps)')
try:
ss_id = cols.index('mIoU')
except ValueError:
ss_id = cols.index('Dice')
try:
ms_id = cols.index('mIoU(ms+flip)')
except ValueError:
ms_id = False
config_id = cols.index('config')
download_id = cols.index('download')
j = i + 2
while j < len(lines) and lines[j][0] == '|':
els = [el.strip() for el in lines[j].split('|')]
config = ''
model_name = ''
weight = ''
for fn in configs:
if fn in els[config_id]:
left = els[download_id].index(
'https://download.openmmlab.com')
right = els[download_id].index('.pth') + 4
weight = els[download_id][left:right]
config = f'configs/{collection_name}/{fn}'
model_name = fn[:-3]
fps = els[fps_id] if els[fps_id] != '-' and els[
fps_id] != '' else -1
mem = els[mem_id] if els[mem_id] != '-' and els[
mem_id] != '' else -1
crop_size = els[crop_size_id].split('x')
assert len(crop_size) == 2
model = {
'Name': model_name,
'In Collection': collection_name,
'Metadata': {
'backbone': els[backbone_id],
'crop size': f'({crop_size[0]},{crop_size[1]})',
'lr schd': int(els[lr_schd_id]),
},
'Results': {
'Task': 'Semantic Segmentation',
'Dataset': current_dataset,
'Metrics': {
'mIoU': float(els[ss_id]),
},
},
'Config': config,
'Weights': weight,
}
if fps != -1:
try:
fps = float(fps)
except Exception:
j += 1
continue
model['Metadata']['inference time (ms/im)'] = [{
'value':
round(1000 / float(fps), 2),
'hardware':
'V100',
'backend':
'PyTorch',
'batch size':
1,
'mode':
'FP32',
'resolution':
f'({crop_size[0]},{crop_size[1]})'
}]
if mem != -1:
model['Metadata']['memory (GB)'] = float(mem)
if ms_id and els[ms_id] != '-' and els[ms_id] != '':
model['Results']['Metrics']['mIoU(ms+flip)'] = float(
els[ms_id])
models.append(model)
j += 1
i = j
else:
i += 1
collection['Metadata']['Training Data'] = datasets
result = {'Collections': [collection], 'Models': models}
yml_file = f'{md_file[:-9]}{collection_name}.yml'
return dump_yaml_and_check_difference(result, yml_file)
def update_model_index():
"""Update model-index.yml according to model .md files.
Returns:
Bool: If the updated model-index.yml is different from the original.
"""
configs_dir = osp.join(MMSEG_ROOT, 'configs')
yml_files = glob.glob(osp.join(configs_dir, '**', '*.yml'), recursive=True)
yml_files.sort()
model_index = {
'Import':
[osp.relpath(yml_file, MMSEG_ROOT) for yml_file in yml_files]
}
model_index_file = osp.join(MMSEG_ROOT, 'model-index.yml')
is_different = dump_yaml_and_check_difference(model_index,
model_index_file)
return is_different
if __name__ == '__main__':
file_list = [fn for fn in sys.argv[1:] if osp.basename(fn) == 'README.md']
if not file_list:
exit(0)
file_modified = False
for fn in file_list:
file_modified |= parse_md(fn)
file_modified |= update_model_index()
exit(1 if file_modified else 0)

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@ -38,3 +38,12 @@ repos:
hooks:
- id: docformatter
args: ["--in-place", "--wrap-descriptions", "79"]
- repo: local
hooks:
- id: update-model-index
name: update-model-index
description: Collect model information and update model-index.yml
entry: .dev/md2yml.py
additional_dependencies: [mmcv]
language: python
files: ^configs/.*\.md$

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configs/ann/ann.yml Normal file
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Collections:
- Name: ann
Metadata:
Training Data:
- Cityscapes
- ADE20K
- Pascal VOC 2012 + Aug
Models:
- Name: ann_r50-d8_512x1024_40k_cityscapes
In Collection: ann
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 269.54
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 6.0
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.4
mIoU(ms+flip): 78.57
Config: configs/ann/ann_r50-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r50-d8_512x1024_40k_cityscapes/ann_r50-d8_512x1024_40k_cityscapes_20200605_095211-049fc292.pth
- Name: ann_r101-d8_512x1024_40k_cityscapes
In Collection: ann
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 392.16
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 9.5
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.55
mIoU(ms+flip): 78.85
Config: configs/ann/ann_r101-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r101-d8_512x1024_40k_cityscapes/ann_r101-d8_512x1024_40k_cityscapes_20200605_095243-adf6eece.pth
- Name: ann_r50-d8_769x769_40k_cityscapes
In Collection: ann
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 588.24
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 6.8
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.89
mIoU(ms+flip): 80.46
Config: configs/ann/ann_r50-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r50-d8_769x769_40k_cityscapes/ann_r50-d8_769x769_40k_cityscapes_20200530_025712-2b46b04d.pth
- Name: ann_r101-d8_769x769_40k_cityscapes
In Collection: ann
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 869.57
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 10.7
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.32
mIoU(ms+flip): 80.94
Config: configs/ann/ann_r101-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r101-d8_769x769_40k_cityscapes/ann_r101-d8_769x769_40k_cityscapes_20200530_025720-059bff28.pth
- Name: ann_r50-d8_512x1024_80k_cityscapes
In Collection: ann
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.34
mIoU(ms+flip): 78.65
Config: configs/ann/ann_r50-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r50-d8_512x1024_80k_cityscapes/ann_r50-d8_512x1024_80k_cityscapes_20200607_101911-5a9ad545.pth
- Name: ann_r101-d8_512x1024_80k_cityscapes
In Collection: ann
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.14
mIoU(ms+flip): 78.81
Config: configs/ann/ann_r101-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r101-d8_512x1024_80k_cityscapes/ann_r101-d8_512x1024_80k_cityscapes_20200607_013728-aceccc6e.pth
- Name: ann_r50-d8_769x769_80k_cityscapes
In Collection: ann
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.88
mIoU(ms+flip): 80.57
Config: configs/ann/ann_r50-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r50-d8_769x769_80k_cityscapes/ann_r50-d8_769x769_80k_cityscapes_20200607_044426-cc7ff323.pth
- Name: ann_r101-d8_769x769_80k_cityscapes
In Collection: ann
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.8
mIoU(ms+flip): 80.34
Config: configs/ann/ann_r101-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r101-d8_769x769_80k_cityscapes/ann_r101-d8_769x769_80k_cityscapes_20200607_013713-a9d4be8d.pth
- Name: ann_r50-d8_512x512_80k_ade20k
In Collection: ann
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 47.6
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 9.1
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 41.01
mIoU(ms+flip): 42.3
Config: configs/ann/ann_r50-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r50-d8_512x512_80k_ade20k/ann_r50-d8_512x512_80k_ade20k_20200615_014818-26f75e11.pth
- Name: ann_r101-d8_512x512_80k_ade20k
In Collection: ann
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 70.82
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 12.5
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.94
mIoU(ms+flip): 44.18
Config: configs/ann/ann_r101-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r101-d8_512x512_80k_ade20k/ann_r101-d8_512x512_80k_ade20k_20200615_014818-c0153543.pth
- Name: ann_r50-d8_512x512_160k_ade20k
In Collection: ann
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 41.74
mIoU(ms+flip): 42.62
Config: configs/ann/ann_r50-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r50-d8_512x512_160k_ade20k/ann_r50-d8_512x512_160k_ade20k_20200615_231733-892247bc.pth
- Name: ann_r101-d8_512x512_160k_ade20k
In Collection: ann
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.94
mIoU(ms+flip): 44.06
Config: configs/ann/ann_r101-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r101-d8_512x512_160k_ade20k/ann_r101-d8_512x512_160k_ade20k_20200615_231733-955eb1ec.pth
- Name: ann_r50-d8_512x512_20k_voc12aug
In Collection: ann
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 47.8
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 6.0
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 74.86
mIoU(ms+flip): 76.13
Config: configs/ann/ann_r50-d8_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r50-d8_512x512_20k_voc12aug/ann_r50-d8_512x512_20k_voc12aug_20200617_222246-dfcb1c62.pth
- Name: ann_r101-d8_512x512_20k_voc12aug
In Collection: ann
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 71.74
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 9.5
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.47
mIoU(ms+flip): 78.7
Config: configs/ann/ann_r101-d8_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r101-d8_512x512_20k_voc12aug/ann_r101-d8_512x512_20k_voc12aug_20200617_222246-2fad0042.pth
- Name: ann_r50-d8_512x512_40k_voc12aug
In Collection: ann
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.56
mIoU(ms+flip): 77.51
Config: configs/ann/ann_r50-d8_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r50-d8_512x512_40k_voc12aug/ann_r50-d8_512x512_40k_voc12aug_20200613_231314-b5dac322.pth
- Name: ann_r101-d8_512x512_40k_voc12aug
In Collection: ann
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.7
mIoU(ms+flip): 78.06
Config: configs/ann/ann_r101-d8_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r101-d8_512x512_40k_voc12aug/ann_r101-d8_512x512_40k_voc12aug_20200613_231314-bd205bbe.pth

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@ -1,311 +0,0 @@
Collections:
- Name: ANN
Metadata:
Training Data:
- Cityscapes
- Pascal VOC 2012 + Aug
- ADE20K
Models:
- Name: ann_r50-d8_512x1024_40k_cityscapes
In Collection: ANN
Metadata:
inference time (ms/im):
- value: 269.54
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.40
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r50-d8_512x1024_40k_cityscapes/ann_r50-d8_512x1024_40k_cityscapes_20200605_095211-049fc292.pth
Config: configs/ann/ann_r50-d8_512x1024_40k_cityscapes.py
- Name: ann_r101-d8_512x1024_40k_cityscapes
In Collection: ANN
Metadata:
inference time (ms/im):
- value: 392.16
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.55
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r101-d8_512x1024_40k_cityscapes/ann_r101-d8_512x1024_40k_cityscapes_20200605_095243-adf6eece.pth
Config: configs/ann/ann_r101-d8_512x1024_40k_cityscapes.py
- Name: ann_r50-d8_769x769_40k_cityscapes
In Collection: ANN
Metadata:
inference time (ms/im):
- value: 588.24
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.89
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r50-d8_769x769_40k_cityscapes/ann_r50-d8_769x769_40k_cityscapes_20200530_025712-2b46b04d.pth
Config: configs/ann/ann_r50-d8_769x769_40k_cityscapes.py
- Name: ann_r101-d8_769x769_40k_cityscapes
In Collection: ANN
Metadata:
inference time (ms/im):
- value: 869.57
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.32
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r101-d8_769x769_40k_cityscapes/ann_r101-d8_769x769_40k_cityscapes_20200530_025720-059bff28.pth
Config: configs/ann/ann_r101-d8_769x769_40k_cityscapes.py
- Name: ann_r50-d8_512x1024_80k_cityscapes
In Collection: ANN
Metadata:
inference time (ms/im):
- value: 269.54
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.34
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r50-d8_512x1024_80k_cityscapes/ann_r50-d8_512x1024_80k_cityscapes_20200607_101911-5a9ad545.pth
Config: configs/ann/ann_r50-d8_512x1024_80k_cityscapes.py
- Name: ann_r101-d8_512x1024_80k_cityscapes
In Collection: ANN
Metadata:
inference time (ms/im):
- value: 392.16
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.14
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r101-d8_512x1024_80k_cityscapes/ann_r101-d8_512x1024_80k_cityscapes_20200607_013728-aceccc6e.pth
Config: configs/ann/ann_r101-d8_512x1024_80k_cityscapes.py
- Name: ann_r50-d8_769x769_80k_cityscapes
In Collection: ANN
Metadata:
inference time (ms/im):
- value: 588.24
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.88
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r50-d8_769x769_80k_cityscapes/ann_r50-d8_769x769_80k_cityscapes_20200607_044426-cc7ff323.pth
Config: configs/ann/ann_r50-d8_769x769_80k_cityscapes.py
- Name: ann_r101-d8_769x769_80k_cityscapes
In Collection: ANN
Metadata:
inference time (ms/im):
- value: 869.57
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.80
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r101-d8_769x769_80k_cityscapes/ann_r101-d8_769x769_80k_cityscapes_20200607_013713-a9d4be8d.pth
Config: configs/ann/ann_r101-d8_769x769_80k_cityscapes.py
- Name: ann_r50-d8_512x512_80k_ade20k
In Collection: ANN
Metadata:
inference time (ms/im):
- value: 47.6
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 41.01
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r50-d8_512x512_80k_ade20k/ann_r50-d8_512x512_80k_ade20k_20200615_014818-26f75e11.pth
Config: configs/ann/ann_r50-d8_512x512_80k_ade20k.py
- Name: ann_r101-d8_512x512_80k_ade20k
In Collection: ANN
Metadata:
inference time (ms/im):
- value: 70.82
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.94
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r101-d8_512x512_80k_ade20k/ann_r101-d8_512x512_80k_ade20k_20200615_014818-c0153543.pth
Config: configs/ann/ann_r101-d8_512x512_80k_ade20k.py
- Name: ann_r50-d8_512x512_160k_ade20k
In Collection: ANN
Metadata:
inference time (ms/im):
- value: 47.6
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 41.74
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r50-d8_512x512_160k_ade20k/ann_r50-d8_512x512_160k_ade20k_20200615_231733-892247bc.pth
Config: configs/ann/ann_r50-d8_512x512_160k_ade20k.py
- Name: ann_r101-d8_512x512_160k_ade20k
In Collection: ANN
Metadata:
inference time (ms/im):
- value: 70.82
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.94
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r101-d8_512x512_160k_ade20k/ann_r101-d8_512x512_160k_ade20k_20200615_231733-955eb1ec.pth
Config: configs/ann/ann_r101-d8_512x512_160k_ade20k.py
- Name: ann_r50-d8_512x512_20k_voc12aug
In Collection: ANN
Metadata:
inference time (ms/im):
- value: 47.8
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 74.86
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r50-d8_512x512_20k_voc12aug/ann_r50-d8_512x512_20k_voc12aug_20200617_222246-dfcb1c62.pth
Config: configs/ann/ann_r50-d8_512x512_20k_voc12aug.py
- Name: ann_r101-d8_512x512_20k_voc12aug
In Collection: ANN
Metadata:
inference time (ms/im):
- value: 71.74
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.47
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r101-d8_512x512_20k_voc12aug/ann_r101-d8_512x512_20k_voc12aug_20200617_222246-2fad0042.pth
Config: configs/ann/ann_r101-d8_512x512_20k_voc12aug.py
- Name: ann_r50-d8_512x512_40k_voc12aug
In Collection: ANN
Metadata:
inference time (ms/im):
- value: 47.8
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.56
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r50-d8_512x512_40k_voc12aug/ann_r50-d8_512x512_40k_voc12aug_20200613_231314-b5dac322.pth
Config: configs/ann/ann_r50-d8_512x512_40k_voc12aug.py
- Name: ann_r101-d8_512x512_40k_voc12aug
In Collection: ANN
Metadata:
inference time (ms/im):
- value: 71.74
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.70
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ann/ann_r101-d8_512x512_40k_voc12aug/ann_r101-d8_512x512_40k_voc12aug_20200613_231314-bd205bbe.pth
Config: configs/ann/ann_r101-d8_512x512_40k_voc12aug.py

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configs/apcnet/apcnet.yml Normal file
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Collections:
- Name: apcnet
Metadata:
Training Data:
- Cityscapes
- ADE20K
Models:
- Name: apcnet_r50-d8_512x1024_40k_cityscapes
In Collection: apcnet
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 280.11
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 7.7
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.02
mIoU(ms+flip): 79.26
Config: configs/apcnet/apcnet_r50-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/apcnet/apcnet_r50-d8_512x1024_40k_cityscapes/apcnet_r50-d8_512x1024_40k_cityscapes_20201214_115717-5e88fa33.pth
- Name: apcnet_r101-d8_512x1024_40k_cityscapes
In Collection: apcnet
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 465.12
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 11.2
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.08
mIoU(ms+flip): 80.34
Config: configs/apcnet/apcnet_r101-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/apcnet/apcnet_r101-d8_512x1024_40k_cityscapes/apcnet_r101-d8_512x1024_40k_cityscapes_20201214_115716-abc9d111.pth
- Name: apcnet_r50-d8_769x769_40k_cityscapes
In Collection: apcnet
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 657.89
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 8.7
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.89
mIoU(ms+flip): 79.75
Config: configs/apcnet/apcnet_r50-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/apcnet/apcnet_r50-d8_769x769_40k_cityscapes/apcnet_r50-d8_769x769_40k_cityscapes_20201214_115717-2a2628d7.pth
- Name: apcnet_r101-d8_769x769_40k_cityscapes
In Collection: apcnet
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 970.87
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 12.7
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.96
mIoU(ms+flip): 79.24
Config: configs/apcnet/apcnet_r101-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/apcnet/apcnet_r101-d8_769x769_40k_cityscapes/apcnet_r101-d8_769x769_40k_cityscapes_20201214_115718-b650de90.pth
- Name: apcnet_r50-d8_512x1024_80k_cityscapes
In Collection: apcnet
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.96
mIoU(ms+flip): 79.94
Config: configs/apcnet/apcnet_r50-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/apcnet/apcnet_r50-d8_512x1024_80k_cityscapes/apcnet_r50-d8_512x1024_80k_cityscapes_20201214_115716-987f51e3.pth
- Name: apcnet_r101-d8_512x1024_80k_cityscapes
In Collection: apcnet
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.64
mIoU(ms+flip): 80.61
Config: configs/apcnet/apcnet_r101-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/apcnet/apcnet_r101-d8_512x1024_80k_cityscapes/apcnet_r101-d8_512x1024_80k_cityscapes_20201214_115705-b1ff208a.pth
- Name: apcnet_r50-d8_769x769_80k_cityscapes
In Collection: apcnet
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.79
mIoU(ms+flip): 80.35
Config: configs/apcnet/apcnet_r50-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/apcnet/apcnet_r50-d8_769x769_80k_cityscapes/apcnet_r50-d8_769x769_80k_cityscapes_20201214_115718-7ea9fa12.pth
- Name: apcnet_r101-d8_769x769_80k_cityscapes
In Collection: apcnet
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.45
mIoU(ms+flip): 79.91
Config: configs/apcnet/apcnet_r101-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/apcnet/apcnet_r101-d8_769x769_80k_cityscapes/apcnet_r101-d8_769x769_80k_cityscapes_20201214_115716-a7fbc2ab.pth
- Name: apcnet_r50-d8_512x512_80k_ade20k
In Collection: apcnet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 50.99
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 10.1
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.2
mIoU(ms+flip): 43.3
Config: configs/apcnet/apcnet_r50-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/apcnet/apcnet_r50-d8_512x512_80k_ade20k/apcnet_r50-d8_512x512_80k_ade20k_20201214_115705-a8626293.pth
- Name: apcnet_r101-d8_512x512_80k_ade20k
In Collection: apcnet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 76.34
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 13.6
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 45.54
mIoU(ms+flip): 46.65
Config: configs/apcnet/apcnet_r101-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/apcnet/apcnet_r101-d8_512x512_80k_ade20k/apcnet_r101-d8_512x512_80k_ade20k_20201214_115704-c656c3fb.pth
- Name: apcnet_r50-d8_512x512_160k_ade20k
In Collection: apcnet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.4
mIoU(ms+flip): 43.94
Config: configs/apcnet/apcnet_r50-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/apcnet/apcnet_r50-d8_512x512_160k_ade20k/apcnet_r50-d8_512x512_160k_ade20k_20201214_115706-25fb92c2.pth
- Name: apcnet_r101-d8_512x512_160k_ade20k
In Collection: apcnet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 45.41
mIoU(ms+flip): 46.63
Config: configs/apcnet/apcnet_r101-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/apcnet/apcnet_r101-d8_512x512_160k_ade20k/apcnet_r101-d8_512x512_160k_ade20k_20201214_115705-73f9a8d7.pth

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Collections:
- Name: APCNet
Metadata:
Training Data:
- Cityscapes
- ADE20K
Models:
- Name: apcnet_r50-d8_512x1024_40k_cityscapes
In Collection: APCNet
Metadata:
inference time (ms/im):
- value: 280.11
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.02
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/apcnet/apcnet_r50-d8_512x1024_40k_cityscapes/apcnet_r50-d8_512x1024_40k_cityscapes_20201214_115717-5e88fa33.pth
Config: configs/apcnet/apcnet_r50-d8_512x1024_40k_cityscapes.py
- Name: apcnet_r101-d8_512x1024_40k_cityscapes
In Collection: APCNet
Metadata:
inference time (ms/im):
- value: 465.12
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.08
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/apcnet/apcnet_r101-d8_512x1024_40k_cityscapes/apcnet_r101-d8_512x1024_40k_cityscapes_20201214_115716-abc9d111.pth
Config: configs/apcnet/apcnet_r101-d8_512x1024_40k_cityscapes.py
- Name: apcnet_r50-d8_769x769_40k_cityscapes
In Collection: APCNet
Metadata:
inference time (ms/im):
- value: 657.89
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.89
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/apcnet/apcnet_r50-d8_769x769_40k_cityscapes/apcnet_r50-d8_769x769_40k_cityscapes_20201214_115717-2a2628d7.pth
Config: configs/apcnet/apcnet_r50-d8_769x769_40k_cityscapes.py
- Name: apcnet_r101-d8_769x769_40k_cityscapes
In Collection: APCNet
Metadata:
inference time (ms/im):
- value: 970.87
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.96
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/apcnet/apcnet_r101-d8_769x769_40k_cityscapes/apcnet_r101-d8_769x769_40k_cityscapes_20201214_115718-b650de90.pth
Config: configs/apcnet/apcnet_r101-d8_769x769_40k_cityscapes.py
- Name: apcnet_r50-d8_512x1024_80k_cityscapes
In Collection: APCNet
Metadata:
inference time (ms/im):
- value: 280.11
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.96
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/apcnet/apcnet_r50-d8_512x1024_80k_cityscapes/apcnet_r50-d8_512x1024_80k_cityscapes_20201214_115716-987f51e3.pth
Config: configs/apcnet/apcnet_r50-d8_512x1024_80k_cityscapes.py
- Name: apcnet_r101-d8_512x1024_80k_cityscapes
In Collection: APCNet
Metadata:
inference time (ms/im):
- value: 465.12
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.64
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/apcnet/apcnet_r101-d8_512x1024_80k_cityscapes/apcnet_r101-d8_512x1024_80k_cityscapes_20201214_115705-b1ff208a.pth
Config: configs/apcnet/apcnet_r101-d8_512x1024_80k_cityscapes.py
- Name: apcnet_r50-d8_769x769_80k_cityscapes
In Collection: APCNet
Metadata:
inference time (ms/im):
- value: 657.89
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.79
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/apcnet/apcnet_r50-d8_769x769_80k_cityscapes/apcnet_r50-d8_769x769_80k_cityscapes_20201214_115718-7ea9fa12.pth
Config: configs/apcnet/apcnet_r50-d8_769x769_80k_cityscapes.py
- Name: apcnet_r101-d8_769x769_80k_cityscapes
In Collection: APCNet
Metadata:
inference time (ms/im):
- value: 970.87
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.45
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/apcnet/apcnet_r101-d8_769x769_80k_cityscapes/apcnet_r101-d8_769x769_80k_cityscapes_20201214_115716-a7fbc2ab.pth
Config: configs/apcnet/apcnet_r101-d8_769x769_80k_cityscapes.py
- Name: apcnet_r50-d8_512x512_80k_ade20k
In Collection: APCNet
Metadata:
inference time (ms/im):
- value: 50.99
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.20
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/apcnet/apcnet_r50-d8_512x512_80k_ade20k/apcnet_r50-d8_512x512_80k_ade20k_20201214_115705-a8626293.pth
Config: configs/apcnet/apcnet_r50-d8_512x512_80k_ade20k.py
- Name: apcnet_r101-d8_512x512_80k_ade20k
In Collection: APCNet
Metadata:
inference time (ms/im):
- value: 76.34
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 45.54
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/apcnet/apcnet_r101-d8_512x512_80k_ade20k/apcnet_r101-d8_512x512_80k_ade20k_20201214_115704-c656c3fb.pth
Config: configs/apcnet/apcnet_r101-d8_512x512_80k_ade20k.py
- Name: apcnet_r50-d8_512x512_160k_ade20k
In Collection: APCNet
Metadata:
inference time (ms/im):
- value: 50.99
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.40
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/apcnet/apcnet_r50-d8_512x512_160k_ade20k/apcnet_r50-d8_512x512_160k_ade20k_20201214_115706-25fb92c2.pth
Config: configs/apcnet/apcnet_r50-d8_512x512_160k_ade20k.py
- Name: apcnet_r101-d8_512x512_160k_ade20k
In Collection: APCNet
Metadata:
inference time (ms/im):
- value: 76.34
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 45.41
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/apcnet/apcnet_r101-d8_512x512_160k_ade20k/apcnet_r101-d8_512x512_160k_ade20k_20201214_115705-73f9a8d7.pth
Config: configs/apcnet/apcnet_r101-d8_512x512_160k_ade20k.py

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Collections:
- Name: ccnet
Metadata:
Training Data:
- Cityscapes
- ADE20K
- Pascal VOC 2012 + Aug
Models:
- Name: ccnet_r50-d8_512x1024_40k_cityscapes
In Collection: ccnet
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 301.2
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 6.0
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.76
mIoU(ms+flip): 78.87
Config: configs/ccnet/ccnet_r50-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r50-d8_512x1024_40k_cityscapes/ccnet_r50-d8_512x1024_40k_cityscapes_20200616_142517-4123f401.pth
- Name: ccnet_r101-d8_512x1024_40k_cityscapes
In Collection: ccnet
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 432.9
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 9.5
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.35
mIoU(ms+flip): 78.19
Config: configs/ccnet/ccnet_r101-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r101-d8_512x1024_40k_cityscapes/ccnet_r101-d8_512x1024_40k_cityscapes_20200616_142540-a3b84ba6.pth
- Name: ccnet_r50-d8_769x769_40k_cityscapes
In Collection: ccnet
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 699.3
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 6.8
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.46
mIoU(ms+flip): 79.93
Config: configs/ccnet/ccnet_r50-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r50-d8_769x769_40k_cityscapes/ccnet_r50-d8_769x769_40k_cityscapes_20200616_145125-76d11884.pth
- Name: ccnet_r101-d8_769x769_40k_cityscapes
In Collection: ccnet
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 990.1
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 10.7
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.94
mIoU(ms+flip): 78.62
Config: configs/ccnet/ccnet_r101-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r101-d8_769x769_40k_cityscapes/ccnet_r101-d8_769x769_40k_cityscapes_20200617_101428-4f57c8d0.pth
- Name: ccnet_r50-d8_512x1024_80k_cityscapes
In Collection: ccnet
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.03
mIoU(ms+flip): 80.16
Config: configs/ccnet/ccnet_r50-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r50-d8_512x1024_80k_cityscapes/ccnet_r50-d8_512x1024_80k_cityscapes_20200617_010421-869a3423.pth
- Name: ccnet_r101-d8_512x1024_80k_cityscapes
In Collection: ccnet
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.87
mIoU(ms+flip): 79.9
Config: configs/ccnet/ccnet_r101-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r101-d8_512x1024_80k_cityscapes/ccnet_r101-d8_512x1024_80k_cityscapes_20200617_203935-ffae8917.pth
- Name: ccnet_r50-d8_769x769_80k_cityscapes
In Collection: ccnet
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.29
mIoU(ms+flip): 81.08
Config: configs/ccnet/ccnet_r50-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r50-d8_769x769_80k_cityscapes/ccnet_r50-d8_769x769_80k_cityscapes_20200617_010421-73eed8ca.pth
- Name: ccnet_r101-d8_769x769_80k_cityscapes
In Collection: ccnet
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.45
mIoU(ms+flip): 80.66
Config: configs/ccnet/ccnet_r101-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r101-d8_769x769_80k_cityscapes/ccnet_r101-d8_769x769_80k_cityscapes_20200618_011502-ad3cd481.pth
- Name: ccnet_r50-d8_512x512_80k_ade20k
In Collection: ccnet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 47.87
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 8.8
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 41.78
mIoU(ms+flip): 42.98
Config: configs/ccnet/ccnet_r50-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r50-d8_512x512_80k_ade20k/ccnet_r50-d8_512x512_80k_ade20k_20200615_014848-aa37f61e.pth
- Name: ccnet_r101-d8_512x512_80k_ade20k
In Collection: ccnet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 70.87
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 12.2
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.97
mIoU(ms+flip): 45.13
Config: configs/ccnet/ccnet_r101-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r101-d8_512x512_80k_ade20k/ccnet_r101-d8_512x512_80k_ade20k_20200615_014848-1f4929a3.pth
- Name: ccnet_r50-d8_512x512_160k_ade20k
In Collection: ccnet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.08
mIoU(ms+flip): 43.13
Config: configs/ccnet/ccnet_r50-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r50-d8_512x512_160k_ade20k/ccnet_r50-d8_512x512_160k_ade20k_20200616_084435-7c97193b.pth
- Name: ccnet_r101-d8_512x512_160k_ade20k
In Collection: ccnet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.71
mIoU(ms+flip): 45.04
Config: configs/ccnet/ccnet_r101-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r101-d8_512x512_160k_ade20k/ccnet_r101-d8_512x512_160k_ade20k_20200616_000644-e849e007.pth
- Name: ccnet_r50-d8_512x512_20k_voc12aug
In Collection: ccnet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 48.9
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 6.0
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.17
mIoU(ms+flip): 77.51
Config: configs/ccnet/ccnet_r50-d8_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r50-d8_512x512_20k_voc12aug/ccnet_r50-d8_512x512_20k_voc12aug_20200617_193212-fad81784.pth
- Name: ccnet_r101-d8_512x512_20k_voc12aug
In Collection: ccnet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 73.31
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 9.5
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.27
mIoU(ms+flip): 79.02
Config: configs/ccnet/ccnet_r101-d8_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r101-d8_512x512_20k_voc12aug/ccnet_r101-d8_512x512_20k_voc12aug_20200617_193212-0007b61d.pth
- Name: ccnet_r50-d8_512x512_40k_voc12aug
In Collection: ccnet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 75.96
mIoU(ms+flip): 77.04
Config: configs/ccnet/ccnet_r50-d8_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r50-d8_512x512_40k_voc12aug/ccnet_r50-d8_512x512_40k_voc12aug_20200613_232127-c2a15f02.pth
- Name: ccnet_r101-d8_512x512_40k_voc12aug
In Collection: ccnet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.87
mIoU(ms+flip): 78.9
Config: configs/ccnet/ccnet_r101-d8_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r101-d8_512x512_40k_voc12aug/ccnet_r101-d8_512x512_40k_voc12aug_20200613_232127-c30da577.pth

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@ -1,311 +0,0 @@
Collections:
- Name: CCNet
Metadata:
Training Data:
- Cityscapes
- Pascal VOC 2012 + Aug
- ADE20K
Models:
- Name: ccnet_r50-d8_512x1024_40k_cityscapes
In Collection: CCNet
Metadata:
inference time (ms/im):
- value: 301.2
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.76
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r50-d8_512x1024_40k_cityscapes/ccnet_r50-d8_512x1024_40k_cityscapes_20200616_142517-4123f401.pth
Config: configs/ccnet/ccnet_r50-d8_512x1024_40k_cityscapes.py
- Name: ccnet_r101-d8_512x1024_40k_cityscapes
In Collection: CCNet
Metadata:
inference time (ms/im):
- value: 432.9
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.35
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r101-d8_512x1024_40k_cityscapes/ccnet_r101-d8_512x1024_40k_cityscapes_20200616_142540-a3b84ba6.pth
Config: configs/ccnet/ccnet_r101-d8_512x1024_40k_cityscapes.py
- Name: ccnet_r50-d8_769x769_40k_cityscapes
In Collection: CCNet
Metadata:
inference time (ms/im):
- value: 699.3
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.46
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r50-d8_769x769_40k_cityscapes/ccnet_r50-d8_769x769_40k_cityscapes_20200616_145125-76d11884.pth
Config: configs/ccnet/ccnet_r50-d8_769x769_40k_cityscapes.py
- Name: ccnet_r101-d8_769x769_40k_cityscapes
In Collection: CCNet
Metadata:
inference time (ms/im):
- value: 990.1
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.94
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r101-d8_769x769_40k_cityscapes/ccnet_r101-d8_769x769_40k_cityscapes_20200617_101428-4f57c8d0.pth
Config: configs/ccnet/ccnet_r101-d8_769x769_40k_cityscapes.py
- Name: ccnet_r50-d8_512x1024_80k_cityscapes
In Collection: CCNet
Metadata:
inference time (ms/im):
- value: 301.2
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.03
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r50-d8_512x1024_80k_cityscapes/ccnet_r50-d8_512x1024_80k_cityscapes_20200617_010421-869a3423.pth
Config: configs/ccnet/ccnet_r50-d8_512x1024_80k_cityscapes.py
- Name: ccnet_r101-d8_512x1024_80k_cityscapes
In Collection: CCNet
Metadata:
inference time (ms/im):
- value: 432.9
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.87
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r101-d8_512x1024_80k_cityscapes/ccnet_r101-d8_512x1024_80k_cityscapes_20200617_203935-ffae8917.pth
Config: configs/ccnet/ccnet_r101-d8_512x1024_80k_cityscapes.py
- Name: ccnet_r50-d8_769x769_80k_cityscapes
In Collection: CCNet
Metadata:
inference time (ms/im):
- value: 699.3
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.29
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r50-d8_769x769_80k_cityscapes/ccnet_r50-d8_769x769_80k_cityscapes_20200617_010421-73eed8ca.pth
Config: configs/ccnet/ccnet_r50-d8_769x769_80k_cityscapes.py
- Name: ccnet_r101-d8_769x769_80k_cityscapes
In Collection: CCNet
Metadata:
inference time (ms/im):
- value: 990.1
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.45
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r101-d8_769x769_80k_cityscapes/ccnet_r101-d8_769x769_80k_cityscapes_20200618_011502-ad3cd481.pth
Config: configs/ccnet/ccnet_r101-d8_769x769_80k_cityscapes.py
- Name: ccnet_r50-d8_512x512_80k_ade20k
In Collection: CCNet
Metadata:
inference time (ms/im):
- value: 47.87
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 41.78
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r50-d8_512x512_80k_ade20k/ccnet_r50-d8_512x512_80k_ade20k_20200615_014848-aa37f61e.pth
Config: configs/ccnet/ccnet_r50-d8_512x512_80k_ade20k.py
- Name: ccnet_r101-d8_512x512_80k_ade20k
In Collection: CCNet
Metadata:
inference time (ms/im):
- value: 70.87
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.97
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r101-d8_512x512_80k_ade20k/ccnet_r101-d8_512x512_80k_ade20k_20200615_014848-1f4929a3.pth
Config: configs/ccnet/ccnet_r101-d8_512x512_80k_ade20k.py
- Name: ccnet_r50-d8_512x512_160k_ade20k
In Collection: CCNet
Metadata:
inference time (ms/im):
- value: 47.87
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.08
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r50-d8_512x512_160k_ade20k/ccnet_r50-d8_512x512_160k_ade20k_20200616_084435-7c97193b.pth
Config: configs/ccnet/ccnet_r50-d8_512x512_160k_ade20k.py
- Name: ccnet_r101-d8_512x512_160k_ade20k
In Collection: CCNet
Metadata:
inference time (ms/im):
- value: 70.87
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.71
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r101-d8_512x512_160k_ade20k/ccnet_r101-d8_512x512_160k_ade20k_20200616_000644-e849e007.pth
Config: configs/ccnet/ccnet_r101-d8_512x512_160k_ade20k.py
- Name: ccnet_r50-d8_512x512_20k_voc12aug
In Collection: CCNet
Metadata:
inference time (ms/im):
- value: 48.9
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.17
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r50-d8_512x512_20k_voc12aug/ccnet_r50-d8_512x512_20k_voc12aug_20200617_193212-fad81784.pth
Config: configs/ccnet/ccnet_r50-d8_512x512_20k_voc12aug.py
- Name: ccnet_r101-d8_512x512_20k_voc12aug
In Collection: CCNet
Metadata:
inference time (ms/im):
- value: 73.31
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.27
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r101-d8_512x512_20k_voc12aug/ccnet_r101-d8_512x512_20k_voc12aug_20200617_193212-0007b61d.pth
Config: configs/ccnet/ccnet_r101-d8_512x512_20k_voc12aug.py
- Name: ccnet_r50-d8_512x512_40k_voc12aug
In Collection: CCNet
Metadata:
inference time (ms/im):
- value: 48.9
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 75.96
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r50-d8_512x512_40k_voc12aug/ccnet_r50-d8_512x512_40k_voc12aug_20200613_232127-c2a15f02.pth
Config: configs/ccnet/ccnet_r50-d8_512x512_40k_voc12aug.py
- Name: ccnet_r101-d8_512x512_40k_voc12aug
In Collection: CCNet
Metadata:
inference time (ms/im):
- value: 73.31
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.87
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ccnet/ccnet_r101-d8_512x512_40k_voc12aug/ccnet_r101-d8_512x512_40k_voc12aug_20200613_232127-c30da577.pth
Config: configs/ccnet/ccnet_r101-d8_512x512_40k_voc12aug.py

50
configs/cgnet/cgnet.yml Normal file
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Collections:
- Name: cgnet
Metadata:
Training Data:
- Cityscapes
Models:
- Name: cgnet_680x680_60k_cityscapes
In Collection: cgnet
Metadata:
backbone: M3N21
crop size: (680,680)
lr schd: 60000
inference time (ms/im):
- value: 32.78
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (680,680)
memory (GB): 7.5
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 65.63
mIoU(ms+flip): 68.04
Config: configs/cgnet/cgnet_680x680_60k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/cgnet/cgnet_680x680_60k_cityscapes/cgnet_680x680_60k_cityscapes_20201101_110253-4c0b2f2d.pth
- Name: cgnet_512x1024_60k_cityscapes
In Collection: cgnet
Metadata:
backbone: M3N21
crop size: (512,1024)
lr schd: 60000
inference time (ms/im):
- value: 32.11
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 8.3
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 68.27
mIoU(ms+flip): 70.33
Config: configs/cgnet/cgnet_512x1024_60k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/cgnet/cgnet_512x1024_60k_cityscapes/cgnet_512x1024_60k_cityscapes_20201101_110254-124ea03b.pth

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Collections:
- Name: CGNet
Metadata:
Training Data:
- Cityscapes
Models:
- Name: cgnet_680x680_60k_cityscapes
In Collection: CGNet
Metadata:
inference time (ms/im):
- value: 32.78
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 65.63
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/cgnet/cgnet_680x680_60k_cityscapes/cgnet_680x680_60k_cityscapes_20201101_110253-4c0b2f2d.pth
Config: configs/cgnet/cgnet_680x680_60k_cityscapes.py
- Name: cgnet_512x1024_60k_cityscapes
In Collection: CGNet
Metadata:
inference time (ms/im):
- value: 32.11
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 68.27
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/cgnet/cgnet_512x1024_60k_cityscapes/cgnet_512x1024_60k_cityscapes_20201101_110254-124ea03b.pth
Config: configs/cgnet/cgnet_512x1024_60k_cityscapes.py

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configs/danet/danet.yml Normal file
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Collections:
- Name: danet
Metadata:
Training Data:
- Cityscapes
- ADE20K
- Pascal VOC 2012 + Aug
Models:
- Name: danet_r50-d8_512x1024_40k_cityscapes
In Collection: danet
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 375.94
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 7.4
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.74
Config: configs/danet/danet_r50-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r50-d8_512x1024_40k_cityscapes/danet_r50-d8_512x1024_40k_cityscapes_20200605_191324-c0dbfa5f.pth
- Name: danet_r101-d8_512x1024_40k_cityscapes
In Collection: danet
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 502.51
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 10.9
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.52
Config: configs/danet/danet_r101-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r101-d8_512x1024_40k_cityscapes/danet_r101-d8_512x1024_40k_cityscapes_20200605_200831-c57a7157.pth
- Name: danet_r50-d8_769x769_40k_cityscapes
In Collection: danet
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 641.03
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 8.8
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.88
mIoU(ms+flip): 80.62
Config: configs/danet/danet_r50-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r50-d8_769x769_40k_cityscapes/danet_r50-d8_769x769_40k_cityscapes_20200530_025703-76681c60.pth
- Name: danet_r101-d8_769x769_40k_cityscapes
In Collection: danet
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 934.58
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 12.8
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.88
mIoU(ms+flip): 81.47
Config: configs/danet/danet_r101-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r101-d8_769x769_40k_cityscapes/danet_r101-d8_769x769_40k_cityscapes_20200530_025717-dcb7fd4e.pth
- Name: danet_r50-d8_512x1024_80k_cityscapes
In Collection: danet
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.34
Config: configs/danet/danet_r50-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r50-d8_512x1024_80k_cityscapes/danet_r50-d8_512x1024_80k_cityscapes_20200607_133029-2bfa2293.pth
- Name: danet_r101-d8_512x1024_80k_cityscapes
In Collection: danet
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.41
Config: configs/danet/danet_r101-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r101-d8_512x1024_80k_cityscapes/danet_r101-d8_512x1024_80k_cityscapes_20200607_132918-955e6350.pth
- Name: danet_r50-d8_769x769_80k_cityscapes
In Collection: danet
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.27
mIoU(ms+flip): 80.96
Config: configs/danet/danet_r50-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r50-d8_769x769_80k_cityscapes/danet_r50-d8_769x769_80k_cityscapes_20200607_132954-495689b4.pth
- Name: danet_r101-d8_769x769_80k_cityscapes
In Collection: danet
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.47
mIoU(ms+flip): 82.02
Config: configs/danet/danet_r101-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r101-d8_769x769_80k_cityscapes/danet_r101-d8_769x769_80k_cityscapes_20200607_132918-f3a929e7.pth
- Name: danet_r50-d8_512x512_80k_ade20k
In Collection: danet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 47.17
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 11.5
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 41.66
mIoU(ms+flip): 42.9
Config: configs/danet/danet_r50-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r50-d8_512x512_80k_ade20k/danet_r50-d8_512x512_80k_ade20k_20200615_015125-edb18e08.pth
- Name: danet_r101-d8_512x512_80k_ade20k
In Collection: danet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 70.52
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 15.0
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.64
mIoU(ms+flip): 45.19
Config: configs/danet/danet_r101-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r101-d8_512x512_80k_ade20k/danet_r101-d8_512x512_80k_ade20k_20200615_015126-d0357c73.pth
- Name: danet_r50-d8_512x512_160k_ade20k
In Collection: danet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.45
mIoU(ms+flip): 43.25
Config: configs/danet/danet_r50-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r50-d8_512x512_160k_ade20k/danet_r50-d8_512x512_160k_ade20k_20200616_082340-9cb35dcd.pth
- Name: danet_r101-d8_512x512_160k_ade20k
In Collection: danet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 44.17
mIoU(ms+flip): 45.02
Config: configs/danet/danet_r101-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r101-d8_512x512_160k_ade20k/danet_r101-d8_512x512_160k_ade20k_20200616_082348-23bf12f9.pth
- Name: danet_r50-d8_512x512_20k_voc12aug
In Collection: danet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 47.76
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 6.5
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 74.45
mIoU(ms+flip): 75.69
Config: configs/danet/danet_r50-d8_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r50-d8_512x512_20k_voc12aug/danet_r50-d8_512x512_20k_voc12aug_20200618_070026-9e9e3ab3.pth
- Name: danet_r101-d8_512x512_20k_voc12aug
In Collection: danet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 72.67
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 9.9
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.02
mIoU(ms+flip): 77.23
Config: configs/danet/danet_r101-d8_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r101-d8_512x512_20k_voc12aug/danet_r101-d8_512x512_20k_voc12aug_20200618_070026-d48d23b2.pth
- Name: danet_r50-d8_512x512_40k_voc12aug
In Collection: danet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.37
mIoU(ms+flip): 77.29
Config: configs/danet/danet_r50-d8_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r50-d8_512x512_40k_voc12aug/danet_r50-d8_512x512_40k_voc12aug_20200613_235526-426e3a64.pth
- Name: danet_r101-d8_512x512_40k_voc12aug
In Collection: danet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.51
mIoU(ms+flip): 77.32
Config: configs/danet/danet_r101-d8_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r101-d8_512x512_40k_voc12aug/danet_r101-d8_512x512_40k_voc12aug_20200613_223031-788e232a.pth

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Collections:
- Name: DANet
Metadata:
Training Data:
- Cityscapes
- Pascal VOC 2012 + Aug
- ADE20K
Models:
- Name: danet_r50-d8_512x1024_40k_cityscapes
In Collection: DANet
Metadata:
inference time (ms/im):
- value: 375.94
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.74
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r50-d8_512x1024_40k_cityscapes/danet_r50-d8_512x1024_40k_cityscapes_20200605_191324-c0dbfa5f.pth
Config: configs/danet/danet_r50-d8_512x1024_40k_cityscapes.py
- Name: danet_r101-d8_512x1024_40k_cityscapes
In Collection: DANet
Metadata:
inference time (ms/im):
- value: 502.51
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.52
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r101-d8_512x1024_40k_cityscapes/danet_r101-d8_512x1024_40k_cityscapes_20200605_200831-c57a7157.pth
Config: configs/danet/danet_r101-d8_512x1024_40k_cityscapes.py
- Name: danet_r50-d8_769x769_40k_cityscapes
In Collection: DANet
Metadata:
inference time (ms/im):
- value: 641.03
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.88
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r50-d8_769x769_40k_cityscapes/danet_r50-d8_769x769_40k_cityscapes_20200530_025703-76681c60.pth
Config: configs/danet/danet_r50-d8_769x769_40k_cityscapes.py
- Name: danet_r101-d8_769x769_40k_cityscapes
In Collection: DANet
Metadata:
inference time (ms/im):
- value: 934.58
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.88
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r101-d8_769x769_40k_cityscapes/danet_r101-d8_769x769_40k_cityscapes_20200530_025717-dcb7fd4e.pth
Config: configs/danet/danet_r101-d8_769x769_40k_cityscapes.py
- Name: danet_r50-d8_512x1024_80k_cityscapes
In Collection: DANet
Metadata:
inference time (ms/im):
- value: 375.94
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.34
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r50-d8_512x1024_80k_cityscapes/danet_r50-d8_512x1024_80k_cityscapes_20200607_133029-2bfa2293.pth
Config: configs/danet/danet_r50-d8_512x1024_80k_cityscapes.py
- Name: danet_r101-d8_512x1024_80k_cityscapes
In Collection: DANet
Metadata:
inference time (ms/im):
- value: 502.51
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.41
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r101-d8_512x1024_80k_cityscapes/danet_r101-d8_512x1024_80k_cityscapes_20200607_132918-955e6350.pth
Config: configs/danet/danet_r101-d8_512x1024_80k_cityscapes.py
- Name: danet_r50-d8_769x769_80k_cityscapes
In Collection: DANet
Metadata:
inference time (ms/im):
- value: 641.03
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.27
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r50-d8_769x769_80k_cityscapes/danet_r50-d8_769x769_80k_cityscapes_20200607_132954-495689b4.pth
Config: configs/danet/danet_r50-d8_769x769_80k_cityscapes.py
- Name: danet_r101-d8_769x769_80k_cityscapes
In Collection: DANet
Metadata:
inference time (ms/im):
- value: 934.58
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.47
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r101-d8_769x769_80k_cityscapes/danet_r101-d8_769x769_80k_cityscapes_20200607_132918-f3a929e7.pth
Config: configs/danet/danet_r101-d8_769x769_80k_cityscapes.py
- Name: danet_r50-d8_512x512_80k_ade20k
In Collection: DANet
Metadata:
inference time (ms/im):
- value: 47.17
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 41.66
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r50-d8_512x512_80k_ade20k/danet_r50-d8_512x512_80k_ade20k_20200615_015125-edb18e08.pth
Config: configs/danet/danet_r50-d8_512x512_80k_ade20k.py
- Name: danet_r101-d8_512x512_80k_ade20k
In Collection: DANet
Metadata:
inference time (ms/im):
- value: 70.52
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.64
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r101-d8_512x512_80k_ade20k/danet_r101-d8_512x512_80k_ade20k_20200615_015126-d0357c73.pth
Config: configs/danet/danet_r101-d8_512x512_80k_ade20k.py
- Name: danet_r50-d8_512x512_160k_ade20k
In Collection: DANet
Metadata:
inference time (ms/im):
- value: 47.17
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.45
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r50-d8_512x512_160k_ade20k/danet_r50-d8_512x512_160k_ade20k_20200616_082340-9cb35dcd.pth
Config: configs/danet/danet_r50-d8_512x512_160k_ade20k.py
- Name: danet_r101-d8_512x512_160k_ade20k
In Collection: DANet
Metadata:
inference time (ms/im):
- value: 70.52
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 44.17
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r101-d8_512x512_160k_ade20k/danet_r101-d8_512x512_160k_ade20k_20200616_082348-23bf12f9.pth
Config: configs/danet/danet_r101-d8_512x512_160k_ade20k.py
- Name: danet_r50-d8_512x512_20k_voc12aug
In Collection: DANet
Metadata:
inference time (ms/im):
- value: 47.76
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 74.45
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r50-d8_512x512_20k_voc12aug/danet_r50-d8_512x512_20k_voc12aug_20200618_070026-9e9e3ab3.pth
Config: configs/danet/danet_r50-d8_512x512_20k_voc12aug.py
- Name: danet_r101-d8_512x512_20k_voc12aug
In Collection: DANet
Metadata:
inference time (ms/im):
- value: 72.67
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.02
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r101-d8_512x512_20k_voc12aug/danet_r101-d8_512x512_20k_voc12aug_20200618_070026-d48d23b2.pth
Config: configs/danet/danet_r101-d8_512x512_20k_voc12aug.py
- Name: danet_r50-d8_512x512_40k_voc12aug
In Collection: DANet
Metadata:
inference time (ms/im):
- value: 47.76
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.37
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r50-d8_512x512_40k_voc12aug/danet_r50-d8_512x512_40k_voc12aug_20200613_235526-426e3a64.pth
Config: configs/danet/danet_r50-d8_512x512_40k_voc12aug.py
- Name: danet_r101-d8_512x512_40k_voc12aug
In Collection: DANet
Metadata:
inference time (ms/im):
- value: 72.67
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.51
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/danet/danet_r101-d8_512x512_40k_voc12aug/danet_r101-d8_512x512_40k_voc12aug_20200613_223031-788e232a.pth
Config: configs/danet/danet_r101-d8_512x512_40k_voc12aug.py

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Collections:
- Name: deeplabv3
Metadata:
Training Data:
- Cityscapes
- ADE20K
- Pascal VOC 2012 + Aug
- Pascal Context
- Pascal Context 59
Models:
- Name: deeplabv3_r50-d8_512x1024_40k_cityscapes
In Collection: deeplabv3
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 389.11
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 6.1
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.09
mIoU(ms+flip): 80.45
Config: configs/deeplabv3/deeplabv3_r50-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r50-d8_512x1024_40k_cityscapes/deeplabv3_r50-d8_512x1024_40k_cityscapes_20200605_022449-acadc2f8.pth
- Name: deeplabv3_r101-d8_512x1024_40k_cityscapes
In Collection: deeplabv3
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 520.83
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 9.6
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.12
mIoU(ms+flip): 79.61
Config: configs/deeplabv3/deeplabv3_r101-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d8_512x1024_40k_cityscapes/deeplabv3_r101-d8_512x1024_40k_cityscapes_20200605_012241-7fd3f799.pth
- Name: deeplabv3_r50-d8_769x769_40k_cityscapes
In Collection: deeplabv3
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 900.9
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 6.9
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.58
mIoU(ms+flip): 79.89
Config: configs/deeplabv3/deeplabv3_r50-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r50-d8_769x769_40k_cityscapes/deeplabv3_r50-d8_769x769_40k_cityscapes_20200606_113723-7eda553c.pth
- Name: deeplabv3_r101-d8_769x769_40k_cityscapes
In Collection: deeplabv3
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 1204.82
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 10.9
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.27
mIoU(ms+flip): 80.11
Config: configs/deeplabv3/deeplabv3_r101-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d8_769x769_40k_cityscapes/deeplabv3_r101-d8_769x769_40k_cityscapes_20200606_113809-c64f889f.pth
- Name: deeplabv3_r18-d8_512x1024_80k_cityscapes
In Collection: deeplabv3
Metadata:
backbone: R-18-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 72.57
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 1.7
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.7
mIoU(ms+flip): 78.27
Config: configs/deeplabv3/deeplabv3_r18-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r18-d8_512x1024_80k_cityscapes/deeplabv3_r18-d8_512x1024_80k_cityscapes_20201225_021506-23dffbe2.pth
- Name: deeplabv3_r50-d8_512x1024_80k_cityscapes
In Collection: deeplabv3
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.32
mIoU(ms+flip): 80.57
Config: configs/deeplabv3/deeplabv3_r50-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r50-d8_512x1024_80k_cityscapes/deeplabv3_r50-d8_512x1024_80k_cityscapes_20200606_113404-b92cfdd4.pth
- Name: deeplabv3_r101-d8_512x1024_80k_cityscapes
In Collection: deeplabv3
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.2
mIoU(ms+flip): 81.21
Config: configs/deeplabv3/deeplabv3_r101-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d8_512x1024_80k_cityscapes/deeplabv3_r101-d8_512x1024_80k_cityscapes_20200606_113503-9e428899.pth
- Name: deeplabv3_r18-d8_769x769_80k_cityscapes
In Collection: deeplabv3
Metadata:
backbone: R-18-D8
crop size: (769,769)
lr schd: 80000
inference time (ms/im):
- value: 180.18
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 1.9
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.6
mIoU(ms+flip): 78.26
Config: configs/deeplabv3/deeplabv3_r18-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r18-d8_769x769_80k_cityscapes/deeplabv3_r18-d8_769x769_80k_cityscapes_20201225_021506-6452126a.pth
- Name: deeplabv3_r50-d8_769x769_80k_cityscapes
In Collection: deeplabv3
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.89
mIoU(ms+flip): 81.06
Config: configs/deeplabv3/deeplabv3_r50-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r50-d8_769x769_80k_cityscapes/deeplabv3_r50-d8_769x769_80k_cityscapes_20200606_221338-788d6228.pth
- Name: deeplabv3_r101-d8_769x769_80k_cityscapes
In Collection: deeplabv3
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.67
mIoU(ms+flip): 80.81
Config: configs/deeplabv3/deeplabv3_r101-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d8_769x769_80k_cityscapes/deeplabv3_r101-d8_769x769_80k_cityscapes_20200607_013353-60e95418.pth
- Name: deeplabv3_r101-d16-mg124_512x1024_80k_cityscapes
In Collection: deeplabv3
Metadata:
backbone: R-101-D16-MG124
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.36
mIoU(ms+flip): 79.84
Config: configs/deeplabv3/deeplabv3_r101-d16-mg124_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d16-mg124_512x1024_80k_cityscapes/deeplabv3_r101-d16-mg124_512x1024_80k_cityscapes_20200908_005644-57bb8425.pth
- Name: deeplabv3_r18b-d8_512x1024_80k_cityscapes
In Collection: deeplabv3
Metadata:
backbone: R-18b-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 71.79
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 1.6
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.26
mIoU(ms+flip): 77.88
Config: configs/deeplabv3/deeplabv3_r18b-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r18b-d8_512x1024_80k_cityscapes/deeplabv3_r18b-d8_512x1024_80k_cityscapes_20201225_094144-46040cef.pth
- Name: deeplabv3_r50b-d8_512x1024_80k_cityscapes
In Collection: deeplabv3
Metadata:
backbone: R-50b-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 364.96
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 6.0
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.63
mIoU(ms+flip): 80.98
Config: configs/deeplabv3/deeplabv3_r50b-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r50b-d8_512x1024_80k_cityscapes/deeplabv3_r50b-d8_512x1024_80k_cityscapes_20201225_155148-ec368954.pth
- Name: deeplabv3_r101b-d8_512x1024_80k_cityscapes
In Collection: deeplabv3
Metadata:
backbone: R-101b-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 552.49
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 9.5
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.01
mIoU(ms+flip): 81.21
Config: configs/deeplabv3/deeplabv3_r101b-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101b-d8_512x1024_80k_cityscapes/deeplabv3_r101b-d8_512x1024_80k_cityscapes_20201226_171821-8fd49503.pth
- Name: deeplabv3_r18b-d8_769x769_80k_cityscapes
In Collection: deeplabv3
Metadata:
backbone: R-18b-D8
crop size: (769,769)
lr schd: 80000
inference time (ms/im):
- value: 172.71
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 1.8
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.63
mIoU(ms+flip): 77.51
Config: configs/deeplabv3/deeplabv3_r18b-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r18b-d8_769x769_80k_cityscapes/deeplabv3_r18b-d8_769x769_80k_cityscapes_20201225_094144-fdc985d9.pth
- Name: deeplabv3_r50b-d8_769x769_80k_cityscapes
In Collection: deeplabv3
Metadata:
backbone: R-50b-D8
crop size: (769,769)
lr schd: 80000
inference time (ms/im):
- value: 862.07
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 6.8
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.8
mIoU(ms+flip): 80.27
Config: configs/deeplabv3/deeplabv3_r50b-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r50b-d8_769x769_80k_cityscapes/deeplabv3_r50b-d8_769x769_80k_cityscapes_20201225_155404-87fb0cf4.pth
- Name: deeplabv3_r101b-d8_769x769_80k_cityscapes
In Collection: deeplabv3
Metadata:
backbone: R-101b-D8
crop size: (769,769)
lr schd: 80000
inference time (ms/im):
- value: 1219.51
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 10.7
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.41
mIoU(ms+flip): 80.73
Config: configs/deeplabv3/deeplabv3_r101b-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101b-d8_769x769_80k_cityscapes/deeplabv3_r101b-d8_769x769_80k_cityscapes_20201226_190843-9142ee57.pth
- Name: deeplabv3_r50-d8_512x512_80k_ade20k
In Collection: deeplabv3
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 67.75
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 8.9
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.42
mIoU(ms+flip): 43.28
Config: configs/deeplabv3/deeplabv3_r50-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r50-d8_512x512_80k_ade20k/deeplabv3_r50-d8_512x512_80k_ade20k_20200614_185028-0bb3f844.pth
- Name: deeplabv3_r101-d8_512x512_80k_ade20k
In Collection: deeplabv3
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 98.62
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 12.4
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 44.08
mIoU(ms+flip): 45.19
Config: configs/deeplabv3/deeplabv3_r101-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d8_512x512_80k_ade20k/deeplabv3_r101-d8_512x512_80k_ade20k_20200615_021256-d89c7fa4.pth
- Name: deeplabv3_r50-d8_512x512_160k_ade20k
In Collection: deeplabv3
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.66
mIoU(ms+flip): 44.09
Config: configs/deeplabv3/deeplabv3_r50-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r50-d8_512x512_160k_ade20k/deeplabv3_r50-d8_512x512_160k_ade20k_20200615_123227-5d0ee427.pth
- Name: deeplabv3_r101-d8_512x512_160k_ade20k
In Collection: deeplabv3
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 45.0
mIoU(ms+flip): 46.66
Config: configs/deeplabv3/deeplabv3_r101-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d8_512x512_160k_ade20k/deeplabv3_r101-d8_512x512_160k_ade20k_20200615_105816-b1f72b3b.pth
- Name: deeplabv3_r50-d8_512x512_20k_voc12aug
In Collection: deeplabv3
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 72.05
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 6.1
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.17
mIoU(ms+flip): 77.42
Config: configs/deeplabv3/deeplabv3_r50-d8_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r50-d8_512x512_20k_voc12aug/deeplabv3_r50-d8_512x512_20k_voc12aug_20200617_010906-596905ef.pth
- Name: deeplabv3_r101-d8_512x512_20k_voc12aug
In Collection: deeplabv3
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 101.94
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 9.6
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 78.7
mIoU(ms+flip): 79.95
Config: configs/deeplabv3/deeplabv3_r101-d8_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d8_512x512_20k_voc12aug/deeplabv3_r101-d8_512x512_20k_voc12aug_20200617_010932-8d13832f.pth
- Name: deeplabv3_r50-d8_512x512_40k_voc12aug
In Collection: deeplabv3
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.68
mIoU(ms+flip): 78.78
Config: configs/deeplabv3/deeplabv3_r50-d8_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r50-d8_512x512_40k_voc12aug/deeplabv3_r50-d8_512x512_40k_voc12aug_20200613_161546-2ae96e7e.pth
- Name: deeplabv3_r101-d8_512x512_40k_voc12aug
In Collection: deeplabv3
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.92
mIoU(ms+flip): 79.18
Config: configs/deeplabv3/deeplabv3_r101-d8_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d8_512x512_40k_voc12aug/deeplabv3_r101-d8_512x512_40k_voc12aug_20200613_161432-0017d784.pth
- Name: deeplabv3_r101-d8_480x480_40k_pascal_context
In Collection: deeplabv3
Metadata:
backbone: R-101-D8
crop size: (480,480)
lr schd: 40000
inference time (ms/im):
- value: 141.04
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (480,480)
memory (GB): 9.2
Results:
Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 46.55
mIoU(ms+flip): 47.81
Config: configs/deeplabv3/deeplabv3_r101-d8_480x480_40k_pascal_context.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d8_480x480_40k_pascal_context/deeplabv3_r101-d8_480x480_40k_pascal_context_20200911_204118-1aa27336.pth
- Name: deeplabv3_r101-d8_480x480_80k_pascal_context
In Collection: deeplabv3
Metadata:
backbone: R-101-D8
crop size: (480,480)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 46.42
mIoU(ms+flip): 47.53
Config: configs/deeplabv3/deeplabv3_r101-d8_480x480_80k_pascal_context.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d8_480x480_80k_pascal_context/deeplabv3_r101-d8_480x480_80k_pascal_context_20200911_170155-2a21fff3.pth
- Name: deeplabv3_r101-d8_480x480_40k_pascal_context_59
In Collection: deeplabv3
Metadata:
backbone: R-101-D8
crop size: (480,480)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal Context 59
Metrics:
mIoU: 52.61
mIoU(ms+flip): 54.28
Config: configs/deeplabv3/deeplabv3_r101-d8_480x480_40k_pascal_context_59.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d8_480x480_40k_pascal_context_59/deeplabv3_r101-d8_480x480_40k_pascal_context_59_20210416_110332-cb08ea46.pth
- Name: deeplabv3_r101-d8_480x480_80k_pascal_context_59
In Collection: deeplabv3
Metadata:
backbone: R-101-D8
crop size: (480,480)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Pascal Context 59
Metrics:
mIoU: 52.46
mIoU(ms+flip): 54.09
Config: configs/deeplabv3/deeplabv3_r101-d8_480x480_80k_pascal_context_59.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d8_480x480_80k_pascal_context_59/deeplabv3_r101-d8_480x480_80k_pascal_context_59_20210416_113002-26303993.pth

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@ -1,578 +0,0 @@
Collections:
- Name: DeepLabV3
Metadata:
Training Data:
- Cityscapes
- Pascal Context
- Pascal VOC 2012 + Aug
- ADE20K
Models:
- Name: deeplabv3_r50-d8_512x1024_40k_cityscapes
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 389.11
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.09
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r50-d8_512x1024_40k_cityscapes/deeplabv3_r50-d8_512x1024_40k_cityscapes_20200605_022449-acadc2f8.pth
Config: configs/deeplabv3/deeplabv3_r50-d8_512x1024_40k_cityscapes.py
- Name: deeplabv3_r101-d8_512x1024_40k_cityscapes
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 520.83
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.12
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d8_512x1024_40k_cityscapes/deeplabv3_r101-d8_512x1024_40k_cityscapes_20200605_012241-7fd3f799.pth
Config: configs/deeplabv3/deeplabv3_r101-d8_512x1024_40k_cityscapes.py
- Name: deeplabv3_r50-d8_769x769_40k_cityscapes
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 900.9
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.58
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r50-d8_769x769_40k_cityscapes/deeplabv3_r50-d8_769x769_40k_cityscapes_20200606_113723-7eda553c.pth
Config: configs/deeplabv3/deeplabv3_r50-d8_769x769_40k_cityscapes.py
- Name: deeplabv3_r101-d8_769x769_40k_cityscapes
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 1204.82
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.27
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d8_769x769_40k_cityscapes/deeplabv3_r101-d8_769x769_40k_cityscapes_20200606_113809-c64f889f.pth
Config: configs/deeplabv3/deeplabv3_r101-d8_769x769_40k_cityscapes.py
- Name: deeplabv3_r18-d8_512x1024_80k_cityscapes
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 72.57
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.70
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r18-d8_512x1024_80k_cityscapes/deeplabv3_r18-d8_512x1024_80k_cityscapes_20201225_021506-23dffbe2.pth
Config: configs/deeplabv3/deeplabv3_r18-d8_512x1024_80k_cityscapes.py
- Name: deeplabv3_r50-d8_512x1024_80k_cityscapes
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 389.11
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.32
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r50-d8_512x1024_80k_cityscapes/deeplabv3_r50-d8_512x1024_80k_cityscapes_20200606_113404-b92cfdd4.pth
Config: configs/deeplabv3/deeplabv3_r50-d8_512x1024_80k_cityscapes.py
- Name: deeplabv3_r101-d8_512x1024_80k_cityscapes
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 520.83
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.20
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d8_512x1024_80k_cityscapes/deeplabv3_r101-d8_512x1024_80k_cityscapes_20200606_113503-9e428899.pth
Config: configs/deeplabv3/deeplabv3_r101-d8_512x1024_80k_cityscapes.py
- Name: deeplabv3_r18-d8_769x769_80k_cityscapes
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 180.18
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.60
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r18-d8_769x769_80k_cityscapes/deeplabv3_r18-d8_769x769_80k_cityscapes_20201225_021506-6452126a.pth
Config: configs/deeplabv3/deeplabv3_r18-d8_769x769_80k_cityscapes.py
- Name: deeplabv3_r50-d8_769x769_80k_cityscapes
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 900.9
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.89
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r50-d8_769x769_80k_cityscapes/deeplabv3_r50-d8_769x769_80k_cityscapes_20200606_221338-788d6228.pth
Config: configs/deeplabv3/deeplabv3_r50-d8_769x769_80k_cityscapes.py
- Name: deeplabv3_r101-d8_769x769_80k_cityscapes
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 1204.82
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.67
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d8_769x769_80k_cityscapes/deeplabv3_r101-d8_769x769_80k_cityscapes_20200607_013353-60e95418.pth
Config: configs/deeplabv3/deeplabv3_r101-d8_769x769_80k_cityscapes.py
- Name: deeplabv3_r101-d16-mg124_512x1024_40k_cityscapes
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 143.68
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.71
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d16-mg124_512x1024_40k_cityscapes/deeplabv3_r101-d16-mg124_512x1024_40k_cityscapes_20200908_005644-67b0c992.pth
Config: configs/deeplabv3/deeplabv3_r101-d16-mg124_512x1024_40k_cityscapes.py
- Name: deeplabv3_r101-d16-mg124_512x1024_80k_cityscapes
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 143.68
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.36
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d16-mg124_512x1024_80k_cityscapes/deeplabv3_r101-d16-mg124_512x1024_80k_cityscapes_20200908_005644-57bb8425.pth
Config: configs/deeplabv3/deeplabv3_r101-d16-mg124_512x1024_80k_cityscapes.py
- Name: deeplabv3_r18b-d8_512x1024_80k_cityscapes
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 71.79
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.26
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r18b-d8_512x1024_80k_cityscapes/deeplabv3_r18b-d8_512x1024_80k_cityscapes_20201225_094144-46040cef.pth
Config: configs/deeplabv3/deeplabv3_r18b-d8_512x1024_80k_cityscapes.py
- Name: deeplabv3_r50b-d8_512x1024_80k_cityscapes
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 364.96
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.63
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r50b-d8_512x1024_80k_cityscapes/deeplabv3_r50b-d8_512x1024_80k_cityscapes_20201225_155148-ec368954.pth
Config: configs/deeplabv3/deeplabv3_r50b-d8_512x1024_80k_cityscapes.py
- Name: deeplabv3_r101b-d8_512x1024_80k_cityscapes
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 552.49
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.01
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101b-d8_512x1024_80k_cityscapes/deeplabv3_r101b-d8_512x1024_80k_cityscapes_20201226_171821-8fd49503.pth
Config: configs/deeplabv3/deeplabv3_r101b-d8_512x1024_80k_cityscapes.py
- Name: deeplabv3_r18b-d8_769x769_80k_cityscapes
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 172.71
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.63
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r18b-d8_769x769_80k_cityscapes/deeplabv3_r18b-d8_769x769_80k_cityscapes_20201225_094144-fdc985d9.pth
Config: configs/deeplabv3/deeplabv3_r18b-d8_769x769_80k_cityscapes.py
- Name: deeplabv3_r50b-d8_769x769_80k_cityscapes
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 862.07
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.80
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r50b-d8_769x769_80k_cityscapes/deeplabv3_r50b-d8_769x769_80k_cityscapes_20201225_155404-87fb0cf4.pth
Config: configs/deeplabv3/deeplabv3_r50b-d8_769x769_80k_cityscapes.py
- Name: deeplabv3_r101b-d8_769x769_80k_cityscapes
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 1219.51
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.41
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101b-d8_769x769_80k_cityscapes/deeplabv3_r101b-d8_769x769_80k_cityscapes_20201226_190843-9142ee57.pth
Config: configs/deeplabv3/deeplabv3_r101b-d8_769x769_80k_cityscapes.py
- Name: deeplabv3_r50-d8_512x512_80k_ade20k
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 67.75
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.42
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r50-d8_512x512_80k_ade20k/deeplabv3_r50-d8_512x512_80k_ade20k_20200614_185028-0bb3f844.pth
Config: configs/deeplabv3/deeplabv3_r50-d8_512x512_80k_ade20k.py
- Name: deeplabv3_r101-d8_512x512_80k_ade20k
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 98.62
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 44.08
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d8_512x512_80k_ade20k/deeplabv3_r101-d8_512x512_80k_ade20k_20200615_021256-d89c7fa4.pth
Config: configs/deeplabv3/deeplabv3_r101-d8_512x512_80k_ade20k.py
- Name: deeplabv3_r50-d8_512x512_160k_ade20k
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 67.75
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.66
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r50-d8_512x512_160k_ade20k/deeplabv3_r50-d8_512x512_160k_ade20k_20200615_123227-5d0ee427.pth
Config: configs/deeplabv3/deeplabv3_r50-d8_512x512_160k_ade20k.py
- Name: deeplabv3_r101-d8_512x512_160k_ade20k
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 98.62
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 45.00
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d8_512x512_160k_ade20k/deeplabv3_r101-d8_512x512_160k_ade20k_20200615_105816-b1f72b3b.pth
Config: configs/deeplabv3/deeplabv3_r101-d8_512x512_160k_ade20k.py
- Name: deeplabv3_r50-d8_512x512_20k_voc12aug
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 72.05
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.17
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r50-d8_512x512_20k_voc12aug/deeplabv3_r50-d8_512x512_20k_voc12aug_20200617_010906-596905ef.pth
Config: configs/deeplabv3/deeplabv3_r50-d8_512x512_20k_voc12aug.py
- Name: deeplabv3_r101-d8_512x512_20k_voc12aug
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 101.94
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 78.70
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d8_512x512_20k_voc12aug/deeplabv3_r101-d8_512x512_20k_voc12aug_20200617_010932-8d13832f.pth
Config: configs/deeplabv3/deeplabv3_r101-d8_512x512_20k_voc12aug.py
- Name: deeplabv3_r50-d8_512x512_40k_voc12aug
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 72.05
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.68
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r50-d8_512x512_40k_voc12aug/deeplabv3_r50-d8_512x512_40k_voc12aug_20200613_161546-2ae96e7e.pth
Config: configs/deeplabv3/deeplabv3_r50-d8_512x512_40k_voc12aug.py
- Name: deeplabv3_r101-d8_512x512_40k_voc12aug
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 101.94
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.92
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d8_512x512_40k_voc12aug/deeplabv3_r101-d8_512x512_40k_voc12aug_20200613_161432-0017d784.pth
Config: configs/deeplabv3/deeplabv3_r101-d8_512x512_40k_voc12aug.py
- Name: deeplabv3_r101-d8_480x480_40k_pascal_context
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 141.04
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 46.55
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d8_480x480_40k_pascal_context/deeplabv3_r101-d8_480x480_40k_pascal_context_20200911_204118-1aa27336.pth
Config: configs/deeplabv3/deeplabv3_r101-d8_480x480_40k_pascal_context.py
- Name: deeplabv3_r101-d8_480x480_80k_pascal_context
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 141.04
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 46.42
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d8_480x480_80k_pascal_context/deeplabv3_r101-d8_480x480_80k_pascal_context_20200911_170155-2a21fff3.pth
Config: configs/deeplabv3/deeplabv3_r101-d8_480x480_80k_pascal_context.py
- Name: deeplabv3_r101-d8_480x480_40k_pascal_context
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: None
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 52.61
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d8_480x480_40k_pascal_context_59/deeplabv3_r101-d8_480x480_40k_pascal_context_59_20210416_110332-cb08ea46.pth
Config: configs/deeplabv3/deeplabv3_r101-d8_480x480_40k_pascal_context.py
- Name: deeplabv3_r101-d8_480x480_80k_pascal_context_59
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: None
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 52.46
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3/deeplabv3_r101-d8_480x480_80k_pascal_context_59/deeplabv3_r101-d8_480x480_80k_pascal_context_59_20210416_113002-26303993.pth
Config: configs/deeplabv3/deeplabv3_r101-d8_480x480_80k_pascal_context_59.py

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Collections:
- Name: deeplabv3plus
Metadata:
Training Data:
- Cityscapes
- ADE20K
- ' Pascal VOC 2012 + Aug'
- ' Pascal Context'
- ' Pascal Context 59'
Models:
- Name: deeplabv3plus_r50-d8_512x1024_40k_cityscapes
In Collection: deeplabv3plus
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 253.81
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 7.5
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.61
mIoU(ms+flip): 81.01
Config: configs/deeplabv3plus/deeplabv3plus_r50-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r50-d8_512x1024_40k_cityscapes/deeplabv3plus_r50-d8_512x1024_40k_cityscapes_20200605_094610-d222ffcd.pth
- Name: deeplabv3plus_r101-d8_512x1024_40k_cityscapes
In Collection: deeplabv3plus
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 384.62
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 11.0
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.21
mIoU(ms+flip): 81.82
Config: configs/deeplabv3plus/deeplabv3plus_r101-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d8_512x1024_40k_cityscapes/deeplabv3plus_r101-d8_512x1024_40k_cityscapes_20200605_094614-3769eecf.pth
- Name: deeplabv3plus_r50-d8_769x769_40k_cityscapes
In Collection: deeplabv3plus
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 581.4
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 8.5
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.97
mIoU(ms+flip): 80.46
Config: configs/deeplabv3plus/deeplabv3plus_r50-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r50-d8_769x769_40k_cityscapes/deeplabv3plus_r50-d8_769x769_40k_cityscapes_20200606_114143-1dcb0e3c.pth
- Name: deeplabv3plus_r101-d8_769x769_40k_cityscapes
In Collection: deeplabv3plus
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 869.57
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 12.5
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.46
mIoU(ms+flip): 80.5
Config: configs/deeplabv3plus/deeplabv3plus_r101-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d8_769x769_40k_cityscapes/deeplabv3plus_r101-d8_769x769_40k_cityscapes_20200606_114304-ff414b9e.pth
- Name: deeplabv3plus_r18-d8_512x1024_80k_cityscapes
In Collection: deeplabv3plus
Metadata:
backbone: R-18-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 70.08
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 2.2
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.89
mIoU(ms+flip): 78.76
Config: configs/deeplabv3plus/deeplabv3plus_r18-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r18-d8_512x1024_80k_cityscapes/deeplabv3plus_r18-d8_512x1024_80k_cityscapes_20201226_080942-cff257fe.pth
- Name: deeplabv3plus_r50-d8_512x1024_80k_cityscapes
In Collection: deeplabv3plus
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.09
mIoU(ms+flip): 81.13
Config: configs/deeplabv3plus/deeplabv3plus_r50-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r50-d8_512x1024_80k_cityscapes/deeplabv3plus_r50-d8_512x1024_80k_cityscapes_20200606_114049-f9fb496d.pth
- Name: deeplabv3plus_r101-d8_512x1024_80k_cityscapes
In Collection: deeplabv3plus
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.97
mIoU(ms+flip): 82.03
Config: configs/deeplabv3plus/deeplabv3plus_r101-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d8_512x1024_80k_cityscapes/deeplabv3plus_r101-d8_512x1024_80k_cityscapes_20200606_114143-068fcfe9.pth
- Name: deeplabv3plus_r18-d8_769x769_80k_cityscapes
In Collection: deeplabv3plus
Metadata:
backbone: R-18-D8
crop size: (769,769)
lr schd: 80000
inference time (ms/im):
- value: 174.22
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 2.5
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.26
mIoU(ms+flip): 77.91
Config: configs/deeplabv3plus/deeplabv3plus_r18-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r18-d8_769x769_80k_cityscapes/deeplabv3plus_r18-d8_769x769_80k_cityscapes_20201226_083346-f326e06a.pth
- Name: deeplabv3plus_r50-d8_769x769_80k_cityscapes
In Collection: deeplabv3plus
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.83
mIoU(ms+flip): 81.48
Config: configs/deeplabv3plus/deeplabv3plus_r50-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r50-d8_769x769_80k_cityscapes/deeplabv3plus_r50-d8_769x769_80k_cityscapes_20200606_210233-0e9dfdc4.pth
- Name: deeplabv3plus_r101-d8_769x769_80k_cityscapes
In Collection: deeplabv3plus
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.98
mIoU(ms+flip): 82.18
Config: configs/deeplabv3plus/deeplabv3plus_r101-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d8_769x769_80k_cityscapes/deeplabv3plus_r101-d8_769x769_80k_cityscapes_20200607_000405-a7573d20.pth
- Name: deeplabv3plus_r101-d16-mg124_512x1024_40k_cityscapes
In Collection: deeplabv3plus
Metadata:
backbone: R-101-D16-MG124
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 133.69
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 5.8
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.09
mIoU(ms+flip): 80.36
Config: configs/deeplabv3plus/deeplabv3plus_r101-d16-mg124_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d16-mg124_512x1024_40k_cityscapes/deeplabv3plus_r101-d16-mg124_512x1024_40k_cityscapes_20200908_005644-cf9ce186.pth
- Name: deeplabv3plus_r101-d16-mg124_512x1024_80k_cityscapes
In Collection: deeplabv3plus
Metadata:
backbone: R-101-D16-MG124
crop size: (512,1024)
lr schd: 80000
memory (GB): 9.9
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.9
mIoU(ms+flip): 81.33
Config: configs/deeplabv3plus/deeplabv3plus_r101-d16-mg124_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d16-mg124_512x1024_80k_cityscapes/deeplabv3plus_r101-d16-mg124_512x1024_80k_cityscapes_20200908_005644-ee6158e0.pth
- Name: deeplabv3plus_r18b-d8_512x1024_80k_cityscapes
In Collection: deeplabv3plus
Metadata:
backbone: R-18b-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 66.89
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 2.1
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 75.87
mIoU(ms+flip): 77.52
Config: configs/deeplabv3plus/deeplabv3plus_r18b-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r18b-d8_512x1024_80k_cityscapes/deeplabv3plus_r18b-d8_512x1024_80k_cityscapes_20201226_090828-e451abd9.pth
- Name: deeplabv3plus_r50b-d8_512x1024_80k_cityscapes
In Collection: deeplabv3plus
Metadata:
backbone: R-50b-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 253.81
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 7.4
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.28
mIoU(ms+flip): 81.44
Config: configs/deeplabv3plus/deeplabv3plus_r50b-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r50b-d8_512x1024_80k_cityscapes/deeplabv3plus_r50b-d8_512x1024_80k_cityscapes_20201225_213645-a97e4e43.pth
- Name: deeplabv3plus_r101b-d8_512x1024_80k_cityscapes
In Collection: deeplabv3plus
Metadata:
backbone: R-101b-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 384.62
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 10.9
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.16
mIoU(ms+flip): 81.41
Config: configs/deeplabv3plus/deeplabv3plus_r101b-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101b-d8_512x1024_80k_cityscapes/deeplabv3plus_r101b-d8_512x1024_80k_cityscapes_20201226_190843-9c3c93a4.pth
- Name: deeplabv3plus_r18b-d8_769x769_80k_cityscapes
In Collection: deeplabv3plus
Metadata:
backbone: R-18b-D8
crop size: (769,769)
lr schd: 80000
inference time (ms/im):
- value: 167.79
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 2.4
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.36
mIoU(ms+flip): 78.24
Config: configs/deeplabv3plus/deeplabv3plus_r18b-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r18b-d8_769x769_80k_cityscapes/deeplabv3plus_r18b-d8_769x769_80k_cityscapes_20201226_151312-2c868aff.pth
- Name: deeplabv3plus_r50b-d8_769x769_80k_cityscapes
In Collection: deeplabv3plus
Metadata:
backbone: R-50b-D8
crop size: (769,769)
lr schd: 80000
inference time (ms/im):
- value: 581.4
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 8.4
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.41
mIoU(ms+flip): 80.56
Config: configs/deeplabv3plus/deeplabv3plus_r50b-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r50b-d8_769x769_80k_cityscapes/deeplabv3plus_r50b-d8_769x769_80k_cityscapes_20201225_224655-8b596d1c.pth
- Name: deeplabv3plus_r101b-d8_769x769_80k_cityscapes
In Collection: deeplabv3plus
Metadata:
backbone: R-101b-D8
crop size: (769,769)
lr schd: 80000
inference time (ms/im):
- value: 909.09
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 12.3
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.88
mIoU(ms+flip): 81.46
Config: configs/deeplabv3plus/deeplabv3plus_r101b-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101b-d8_769x769_80k_cityscapes/deeplabv3plus_r101b-d8_769x769_80k_cityscapes_20201226_205041-227cdf7c.pth
- Name: deeplabv3plus_r50-d8_512x512_80k_ade20k
In Collection: deeplabv3plus
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 47.6
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 10.6
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.72
mIoU(ms+flip): 43.75
Config: configs/deeplabv3plus/deeplabv3plus_r50-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r50-d8_512x512_80k_ade20k/deeplabv3plus_r50-d8_512x512_80k_ade20k_20200614_185028-bf1400d8.pth
- Name: deeplabv3plus_r101-d8_512x512_80k_ade20k
In Collection: deeplabv3plus
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 70.62
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 14.1
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 44.6
mIoU(ms+flip): 46.06
Config: configs/deeplabv3plus/deeplabv3plus_r101-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d8_512x512_80k_ade20k/deeplabv3plus_r101-d8_512x512_80k_ade20k_20200615_014139-d5730af7.pth
- Name: deeplabv3plus_r50-d8_512x512_160k_ade20k
In Collection: deeplabv3plus
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.95
mIoU(ms+flip): 44.93
Config: configs/deeplabv3plus/deeplabv3plus_r50-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r50-d8_512x512_160k_ade20k/deeplabv3plus_r50-d8_512x512_160k_ade20k_20200615_124504-6135c7e0.pth
- Name: deeplabv3plus_r101-d8_512x512_160k_ade20k
In Collection: deeplabv3plus
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 45.47
mIoU(ms+flip): 46.35
Config: configs/deeplabv3plus/deeplabv3plus_r101-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d8_512x512_160k_ade20k/deeplabv3plus_r101-d8_512x512_160k_ade20k_20200615_123232-38ed86bb.pth
- Name: deeplabv3plus_r50-d8_512x512_20k_voc12aug
In Collection: deeplabv3plus
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 47.62
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 7.6
Results:
Task: Semantic Segmentation
Dataset: ' Pascal VOC 2012 + Aug'
Metrics:
mIoU: 75.93
mIoU(ms+flip): 77.5
Config: configs/deeplabv3plus/deeplabv3plus_r50-d8_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r50-d8_512x512_20k_voc12aug/deeplabv3plus_r50-d8_512x512_20k_voc12aug_20200617_102323-aad58ef1.pth
- Name: deeplabv3plus_r101-d8_512x512_20k_voc12aug
In Collection: deeplabv3plus
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 72.05
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 11.0
Results:
Task: Semantic Segmentation
Dataset: ' Pascal VOC 2012 + Aug'
Metrics:
mIoU: 77.22
mIoU(ms+flip): 78.59
Config: configs/deeplabv3plus/deeplabv3plus_r101-d8_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d8_512x512_20k_voc12aug/deeplabv3plus_r101-d8_512x512_20k_voc12aug_20200617_102345-c7ff3d56.pth
- Name: deeplabv3plus_r50-d8_512x512_40k_voc12aug
In Collection: deeplabv3plus
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: ' Pascal VOC 2012 + Aug'
Metrics:
mIoU: 76.81
mIoU(ms+flip): 77.57
Config: configs/deeplabv3plus/deeplabv3plus_r50-d8_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r50-d8_512x512_40k_voc12aug/deeplabv3plus_r50-d8_512x512_40k_voc12aug_20200613_161759-e1b43aa9.pth
- Name: deeplabv3plus_r101-d8_512x512_40k_voc12aug
In Collection: deeplabv3plus
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: ' Pascal VOC 2012 + Aug'
Metrics:
mIoU: 78.62
mIoU(ms+flip): 79.53
Config: configs/deeplabv3plus/deeplabv3plus_r101-d8_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d8_512x512_40k_voc12aug/deeplabv3plus_r101-d8_512x512_40k_voc12aug_20200613_205333-faf03387.pth
- Name: deeplabv3plus_r101-d8_480x480_40k_pascal_context
In Collection: deeplabv3plus
Metadata:
backbone: R-101-D8
crop size: (480,480)
lr schd: 40000
inference time (ms/im):
- value: 110.01
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (480,480)
Results:
Task: Semantic Segmentation
Dataset: ' Pascal Context'
Metrics:
mIoU: 47.3
mIoU(ms+flip): 48.47
Config: configs/deeplabv3plus/deeplabv3plus_r101-d8_480x480_40k_pascal_context.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d8_480x480_40k_pascal_context/deeplabv3plus_r101-d8_480x480_40k_pascal_context_20200911_165459-d3c8a29e.pth
- Name: deeplabv3plus_r101-d8_480x480_80k_pascal_context
In Collection: deeplabv3plus
Metadata:
backbone: R-101-D8
crop size: (480,480)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: ' Pascal Context'
Metrics:
mIoU: 47.23
mIoU(ms+flip): 48.26
Config: configs/deeplabv3plus/deeplabv3plus_r101-d8_480x480_80k_pascal_context.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d8_480x480_80k_pascal_context/deeplabv3plus_r101-d8_480x480_80k_pascal_context_20200911_155322-145d3ee8.pth
- Name: deeplabv3plus_r101-d8_480x480_40k_pascal_context_59
In Collection: deeplabv3plus
Metadata:
backbone: R-101-D8
crop size: (480,480)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: ' Pascal Context 59'
Metrics:
mIoU: 52.86
mIoU(ms+flip): 54.54
Config: configs/deeplabv3plus/deeplabv3plus_r101-d8_480x480_40k_pascal_context_59.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d8_480x480_40k_pascal_context_59/deeplabv3plus_r101-d8_480x480_40k_pascal_context_59_20210416_111233-ed937f15.pth
- Name: deeplabv3plus_r101-d8_480x480_80k_pascal_context_59
In Collection: deeplabv3plus
Metadata:
backbone: R-101-D8
crop size: (480,480)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: ' Pascal Context 59'
Metrics:
mIoU: 53.2
mIoU(ms+flip): 54.67
Config: configs/deeplabv3plus/deeplabv3plus_r101-d8_480x480_80k_pascal_context_59.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d8_480x480_80k_pascal_context_59/deeplabv3plus_r101-d8_480x480_80k_pascal_context_59_20210416_111127-7ca0331d.pth

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@ -1,578 +0,0 @@
Collections:
- Name: DeepLabV3+
Metadata:
Training Data:
- Cityscapes
- Pascal Context
- Pascal VOC 2012 + Aug
- ADE20K
Models:
- Name: deeplabv3plus_r50-d8_512x1024_40k_cityscapes
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 253.81
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.61
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r50-d8_512x1024_40k_cityscapes/deeplabv3plus_r50-d8_512x1024_40k_cityscapes_20200605_094610-d222ffcd.pth
Config: configs/deeplabv3+/deeplabv3plus_r50-d8_512x1024_40k_cityscapes.py
- Name: deeplabv3plus_r101-d8_512x1024_40k_cityscapes
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 384.62
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.21
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d8_512x1024_40k_cityscapes/deeplabv3plus_r101-d8_512x1024_40k_cityscapes_20200605_094614-3769eecf.pth
Config: configs/deeplabv3+/deeplabv3plus_r101-d8_512x1024_40k_cityscapes.py
- Name: deeplabv3plus_r50-d8_769x769_40k_cityscapes
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 581.4
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.97
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r50-d8_769x769_40k_cityscapes/deeplabv3plus_r50-d8_769x769_40k_cityscapes_20200606_114143-1dcb0e3c.pth
Config: configs/deeplabv3+/deeplabv3plus_r50-d8_769x769_40k_cityscapes.py
- Name: deeplabv3plus_r101-d8_769x769_40k_cityscapes
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 869.57
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.46
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d8_769x769_40k_cityscapes/deeplabv3plus_r101-d8_769x769_40k_cityscapes_20200606_114304-ff414b9e.pth
Config: configs/deeplabv3+/deeplabv3plus_r101-d8_769x769_40k_cityscapes.py
- Name: deeplabv3plus_r18-d8_512x1024_80k_cityscapes
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 70.08
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.89
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r18-d8_512x1024_80k_cityscapes/deeplabv3plus_r18-d8_512x1024_80k_cityscapes_20201226_080942-cff257fe.pth
Config: configs/deeplabv3+/deeplabv3plus_r18-d8_512x1024_80k_cityscapes.py
- Name: deeplabv3plus_r50-d8_512x1024_80k_cityscapes
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 253.81
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.09
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r50-d8_512x1024_80k_cityscapes/deeplabv3plus_r50-d8_512x1024_80k_cityscapes_20200606_114049-f9fb496d.pth
Config: configs/deeplabv3+/deeplabv3plus_r50-d8_512x1024_80k_cityscapes.py
- Name: deeplabv3plus_r101-d8_512x1024_80k_cityscapes
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 384.62
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.97
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d8_512x1024_80k_cityscapes/deeplabv3plus_r101-d8_512x1024_80k_cityscapes_20200606_114143-068fcfe9.pth
Config: configs/deeplabv3+/deeplabv3plus_r101-d8_512x1024_80k_cityscapes.py
- Name: deeplabv3plus_r18-d8_769x769_80k_cityscapes
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 174.22
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.26
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r18-d8_769x769_80k_cityscapes/deeplabv3plus_r18-d8_769x769_80k_cityscapes_20201226_083346-f326e06a.pth
Config: configs/deeplabv3+/deeplabv3plus_r18-d8_769x769_80k_cityscapes.py
- Name: deeplabv3plus_r50-d8_769x769_80k_cityscapes
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 581.4
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.83
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r50-d8_769x769_80k_cityscapes/deeplabv3plus_r50-d8_769x769_80k_cityscapes_20200606_210233-0e9dfdc4.pth
Config: configs/deeplabv3+/deeplabv3plus_r50-d8_769x769_80k_cityscapes.py
- Name: deeplabv3plus_r101-d8_769x769_80k_cityscapes
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 869.57
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.98
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d8_769x769_80k_cityscapes/deeplabv3plus_r101-d8_769x769_80k_cityscapes_20200607_000405-a7573d20.pth
Config: configs/deeplabv3+/deeplabv3plus_r101-d8_769x769_80k_cityscapes.py
- Name: deeplabv3plus_r101-d16-mg124_512x1024_40k_cityscapes
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 133.69
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.09
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d16-mg124_512x1024_40k_cityscapes/deeplabv3plus_r101-d16-mg124_512x1024_40k_cityscapes_20200908_005644-cf9ce186.pth
Config: configs/deeplabv3+/deeplabv3plus_r101-d16-mg124_512x1024_40k_cityscapes.py
- Name: deeplabv3plus_r101-d16-mg124_512x1024_80k_cityscapes
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 133.69
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.90
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d16-mg124_512x1024_80k_cityscapes/deeplabv3plus_r101-d16-mg124_512x1024_80k_cityscapes_20200908_005644-ee6158e0.pth
Config: configs/deeplabv3+/deeplabv3plus_r101-d16-mg124_512x1024_80k_cityscapes.py
- Name: deeplabv3plus_r18b-d8_512x1024_80k_cityscapes
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 66.89
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 75.87
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r18b-d8_512x1024_80k_cityscapes/deeplabv3plus_r18b-d8_512x1024_80k_cityscapes_20201226_090828-e451abd9.pth
Config: configs/deeplabv3+/deeplabv3plus_r18b-d8_512x1024_80k_cityscapes.py
- Name: deeplabv3plus_r50b-d8_512x1024_80k_cityscapes
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 253.81
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.28
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r50b-d8_512x1024_80k_cityscapes/deeplabv3plus_r50b-d8_512x1024_80k_cityscapes_20201225_213645-a97e4e43.pth
Config: configs/deeplabv3+/deeplabv3plus_r50b-d8_512x1024_80k_cityscapes.py
- Name: deeplabv3plus_r101b-d8_512x1024_80k_cityscapes
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 384.62
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.16
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101b-d8_512x1024_80k_cityscapes/deeplabv3plus_r101b-d8_512x1024_80k_cityscapes_20201226_190843-9c3c93a4.pth
Config: configs/deeplabv3+/deeplabv3plus_r101b-d8_512x1024_80k_cityscapes.py
- Name: deeplabv3plus_r18b-d8_769x769_80k_cityscapes
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 167.79
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.36
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r18b-d8_769x769_80k_cityscapes/deeplabv3plus_r18b-d8_769x769_80k_cityscapes_20201226_151312-2c868aff.pth
Config: configs/deeplabv3+/deeplabv3plus_r18b-d8_769x769_80k_cityscapes.py
- Name: deeplabv3plus_r50b-d8_769x769_80k_cityscapes
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 581.4
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.41
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r50b-d8_769x769_80k_cityscapes/deeplabv3plus_r50b-d8_769x769_80k_cityscapes_20201225_224655-8b596d1c.pth
Config: configs/deeplabv3+/deeplabv3plus_r50b-d8_769x769_80k_cityscapes.py
- Name: deeplabv3plus_r101b-d8_769x769_80k_cityscapes
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 909.09
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.88
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101b-d8_769x769_80k_cityscapes/deeplabv3plus_r101b-d8_769x769_80k_cityscapes_20201226_205041-227cdf7c.pth
Config: configs/deeplabv3+/deeplabv3plus_r101b-d8_769x769_80k_cityscapes.py
- Name: deeplabv3plus_r50-d8_512x512_80k_ade20k
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 47.6
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.72
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r50-d8_512x512_80k_ade20k/deeplabv3plus_r50-d8_512x512_80k_ade20k_20200614_185028-bf1400d8.pth
Config: configs/deeplabv3+/deeplabv3plus_r50-d8_512x512_80k_ade20k.py
- Name: deeplabv3plus_r101-d8_512x512_80k_ade20k
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 70.62
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 44.60
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d8_512x512_80k_ade20k/deeplabv3plus_r101-d8_512x512_80k_ade20k_20200615_014139-d5730af7.pth
Config: configs/deeplabv3+/deeplabv3plus_r101-d8_512x512_80k_ade20k.py
- Name: deeplabv3plus_r50-d8_512x512_160k_ade20k
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 47.6
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.95
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r50-d8_512x512_160k_ade20k/deeplabv3plus_r50-d8_512x512_160k_ade20k_20200615_124504-6135c7e0.pth
Config: configs/deeplabv3+/deeplabv3plus_r50-d8_512x512_160k_ade20k.py
- Name: deeplabv3plus_r101-d8_512x512_160k_ade20k
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 70.62
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 45.47
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d8_512x512_160k_ade20k/deeplabv3plus_r101-d8_512x512_160k_ade20k_20200615_123232-38ed86bb.pth
Config: configs/deeplabv3+/deeplabv3plus_r101-d8_512x512_160k_ade20k.py
- Name: deeplabv3plus_r50-d8_512x512_20k_voc12aug
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 47.62
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 75.93
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r50-d8_512x512_20k_voc12aug/deeplabv3plus_r50-d8_512x512_20k_voc12aug_20200617_102323-aad58ef1.pth
Config: configs/deeplabv3+/deeplabv3plus_r50-d8_512x512_20k_voc12aug.py
- Name: deeplabv3plus_r101-d8_512x512_20k_voc12aug
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 72.05
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.22
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d8_512x512_20k_voc12aug/deeplabv3plus_r101-d8_512x512_20k_voc12aug_20200617_102345-c7ff3d56.pth
Config: configs/deeplabv3+/deeplabv3plus_r101-d8_512x512_20k_voc12aug.py
- Name: deeplabv3plus_r50-d8_512x512_40k_voc12aug
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 47.62
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.81
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r50-d8_512x512_40k_voc12aug/deeplabv3plus_r50-d8_512x512_40k_voc12aug_20200613_161759-e1b43aa9.pth
Config: configs/deeplabv3+/deeplabv3plus_r50-d8_512x512_40k_voc12aug.py
- Name: deeplabv3plus_r101-d8_512x512_40k_voc12aug
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 72.05
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 78.62
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d8_512x512_40k_voc12aug/deeplabv3plus_r101-d8_512x512_40k_voc12aug_20200613_205333-faf03387.pth
Config: configs/deeplabv3+/deeplabv3plus_r101-d8_512x512_40k_voc12aug.py
- Name: deeplabv3plus_r101-d8_480x480_40k_pascal_context
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 110.01
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 47.30
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d8_480x480_40k_pascal_context/deeplabv3plus_r101-d8_480x480_40k_pascal_context_20200911_165459-d3c8a29e.pth
Config: configs/deeplabv3+/deeplabv3plus_r101-d8_480x480_40k_pascal_context.py
- Name: deeplabv3plus_r101-d8_480x480_80k_pascal_context
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 110.01
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 47.23
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d8_480x480_80k_pascal_context/deeplabv3plus_r101-d8_480x480_80k_pascal_context_20200911_155322-145d3ee8.pth
Config: configs/deeplabv3+/deeplabv3plus_r101-d8_480x480_80k_pascal_context.py
- Name: deeplabv3plus_r101-d8_480x480_40k_pascal_context
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: None
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 52.86
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d8_480x480_40k_pascal_context_59/deeplabv3plus_r101-d8_480x480_40k_pascal_context_59_20210416_111233-ed937f15.pth
Config: configs/deeplabv3+/deeplabv3plus_r101-d8_480x480_40k_pascal_context.py
- Name: deeplabv3plus_r101-d8_480x480_80k_pascal_context
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: None
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 53.2
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/deeplabv3plus/deeplabv3plus_r101-d8_480x480_80k_pascal_context_59/deeplabv3plus_r101-d8_480x480_80k_pascal_context_59_20210416_111127-7ca0331d.pth
Config: configs/deeplabv3+/deeplabv3plus_r101-d8_480x480_80k_pascal_context.py

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configs/dmnet/dmnet.yml Normal file
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Collections:
- Name: dmnet
Metadata:
Training Data:
- Cityscapes
- ADE20K
Models:
- Name: dmnet_r50-d8_512x1024_40k_cityscapes
In Collection: dmnet
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 273.22
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 7.0
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.78
mIoU(ms+flip): 79.14
Config: configs/dmnet/dmnet_r50-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dmnet/dmnet_r50-d8_512x1024_40k_cityscapes/dmnet_r50-d8_512x1024_40k_cityscapes_20201215_042326-615373cf.pth
- Name: dmnet_r101-d8_512x1024_40k_cityscapes
In Collection: dmnet
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 393.7
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 10.6
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.37
mIoU(ms+flip): 79.72
Config: configs/dmnet/dmnet_r101-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dmnet/dmnet_r101-d8_512x1024_40k_cityscapes/dmnet_r101-d8_512x1024_40k_cityscapes_20201215_043100-8291e976.pth
- Name: dmnet_r50-d8_769x769_40k_cityscapes
In Collection: dmnet
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 636.94
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 7.9
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.49
mIoU(ms+flip): 80.27
Config: configs/dmnet/dmnet_r50-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dmnet/dmnet_r50-d8_769x769_40k_cityscapes/dmnet_r50-d8_769x769_40k_cityscapes_20201215_093706-e7f0e23e.pth
- Name: dmnet_r101-d8_769x769_40k_cityscapes
In Collection: dmnet
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 990.1
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 12.0
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.62
mIoU(ms+flip): 78.94
Config: configs/dmnet/dmnet_r101-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dmnet/dmnet_r101-d8_769x769_40k_cityscapes/dmnet_r101-d8_769x769_40k_cityscapes_20201215_081348-a74261f6.pth
- Name: dmnet_r50-d8_512x1024_80k_cityscapes
In Collection: dmnet
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.07
mIoU(ms+flip): 80.22
Config: configs/dmnet/dmnet_r50-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dmnet/dmnet_r50-d8_512x1024_80k_cityscapes/dmnet_r50-d8_512x1024_80k_cityscapes_20201215_053728-3c8893b9.pth
- Name: dmnet_r101-d8_512x1024_80k_cityscapes
In Collection: dmnet
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.64
mIoU(ms+flip): 80.67
Config: configs/dmnet/dmnet_r101-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dmnet/dmnet_r101-d8_512x1024_80k_cityscapes/dmnet_r101-d8_512x1024_80k_cityscapes_20201215_031718-fa081cb8.pth
- Name: dmnet_r50-d8_769x769_80k_cityscapes
In Collection: dmnet
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.22
mIoU(ms+flip): 80.55
Config: configs/dmnet/dmnet_r50-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dmnet/dmnet_r50-d8_769x769_80k_cityscapes/dmnet_r50-d8_769x769_80k_cityscapes_20201215_034006-6060840e.pth
- Name: dmnet_r101-d8_769x769_80k_cityscapes
In Collection: dmnet
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.19
mIoU(ms+flip): 80.65
Config: configs/dmnet/dmnet_r101-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dmnet/dmnet_r101-d8_769x769_80k_cityscapes/dmnet_r101-d8_769x769_80k_cityscapes_20201215_082810-7f0de59a.pth
- Name: dmnet_r50-d8_512x512_80k_ade20k
In Collection: dmnet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 47.73
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 9.4
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.37
mIoU(ms+flip): 43.62
Config: configs/dmnet/dmnet_r50-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dmnet/dmnet_r50-d8_512x512_80k_ade20k/dmnet_r50-d8_512x512_80k_ade20k_20201215_144744-f89092a6.pth
- Name: dmnet_r101-d8_512x512_80k_ade20k
In Collection: dmnet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 72.05
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 13.0
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 45.34
mIoU(ms+flip): 46.13
Config: configs/dmnet/dmnet_r101-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dmnet/dmnet_r101-d8_512x512_80k_ade20k/dmnet_r101-d8_512x512_80k_ade20k_20201215_104812-bfa45311.pth
- Name: dmnet_r50-d8_512x512_160k_ade20k
In Collection: dmnet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.15
mIoU(ms+flip): 44.17
Config: configs/dmnet/dmnet_r50-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dmnet/dmnet_r50-d8_512x512_160k_ade20k/dmnet_r50-d8_512x512_160k_ade20k_20201215_115313-025ab3f9.pth
- Name: dmnet_r101-d8_512x512_160k_ade20k
In Collection: dmnet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 45.42
mIoU(ms+flip): 46.76
Config: configs/dmnet/dmnet_r101-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dmnet/dmnet_r101-d8_512x512_160k_ade20k/dmnet_r101-d8_512x512_160k_ade20k_20201215_111145-a0bc02ef.pth

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Collections:
- Name: DMNet
Metadata:
Training Data:
- Cityscapes
- ADE20K
Models:
- Name: dmnet_r50-d8_512x1024_40k_cityscapes
In Collection: DMNet
Metadata:
inference time (ms/im):
- value: 273.22
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.78
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dmnet/dmnet_r50-d8_512x1024_40k_cityscapes/dmnet_r50-d8_512x1024_40k_cityscapes_20201214_115717-5e88fa33.pth
Config: configs/dmnet/dmnet_r50-d8_512x1024_40k_cityscapes.py
- Name: dmnet_r101-d8_512x1024_40k_cityscapes
In Collection: DMNet
Metadata:
inference time (ms/im):
- value: 393.7
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.37
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dmnet/dmnet_r101-d8_512x1024_40k_cityscapes/dmnet_r101-d8_512x1024_40k_cityscapes_20201214_115716-abc9d111.pth
Config: configs/dmnet/dmnet_r101-d8_512x1024_40k_cityscapes.py
- Name: dmnet_r50-d8_769x769_40k_cityscapes
In Collection: DMNet
Metadata:
inference time (ms/im):
- value: 636.94
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.49
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dmnet/dmnet_r50-d8_769x769_40k_cityscapes/dmnet_r50-d8_769x769_40k_cityscapes_20201214_115717-2a2628d7.pth
Config: configs/dmnet/dmnet_r50-d8_769x769_40k_cityscapes.py
- Name: dmnet_r101-d8_769x769_40k_cityscapes
In Collection: DMNet
Metadata:
inference time (ms/im):
- value: 990.1
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.62
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dmnet/dmnet_r101-d8_769x769_40k_cityscapes/dmnet_r101-d8_769x769_40k_cityscapes_20201214_115718-b650de90.pth
Config: configs/dmnet/dmnet_r101-d8_769x769_40k_cityscapes.py
- Name: dmnet_r50-d8_512x1024_80k_cityscapes
In Collection: DMNet
Metadata:
inference time (ms/im):
- value: 273.22
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.07
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dmnet/dmnet_r50-d8_512x1024_80k_cityscapes/dmnet_r50-d8_512x1024_80k_cityscapes_20201214_115716-987f51e3.pth
Config: configs/dmnet/dmnet_r50-d8_512x1024_80k_cityscapes.py
- Name: dmnet_r101-d8_512x1024_80k_cityscapes
In Collection: DMNet
Metadata:
inference time (ms/im):
- value: 393.7
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.64
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dmnet/dmnet_r101-d8_512x1024_80k_cityscapes/dmnet_r101-d8_512x1024_80k_cityscapes_20201214_115705-b1ff208a.pth
Config: configs/dmnet/dmnet_r101-d8_512x1024_80k_cityscapes.py
- Name: dmnet_r50-d8_769x769_80k_cityscapes
In Collection: DMNet
Metadata:
inference time (ms/im):
- value: 636.94
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.22
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dmnet/dmnet_r50-d8_769x769_80k_cityscapes/dmnet_r50-d8_769x769_80k_cityscapes_20201214_115718-7ea9fa12.pth
Config: configs/dmnet/dmnet_r50-d8_769x769_80k_cityscapes.py
- Name: dmnet_r101-d8_769x769_80k_cityscapes
In Collection: DMNet
Metadata:
inference time (ms/im):
- value: 990.1
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.19
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dmnet/dmnet_r101-d8_769x769_80k_cityscapes/dmnet_r101-d8_769x769_80k_cityscapes_20201214_115716-a7fbc2ab.pth
Config: configs/dmnet/dmnet_r101-d8_769x769_80k_cityscapes.py
- Name: dmnet_r50-d8_512x512_80k_ade20k
In Collection: DMNet
Metadata:
inference time (ms/im):
- value: 47.73
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.37
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dmnet/dmnet_r50-d8_512x512_80k_ade20k/dmnet_r50-d8_512x512_80k_ade20k_20201214_115705-a8626293.pth
Config: configs/dmnet/dmnet_r50-d8_512x512_80k_ade20k.py
- Name: dmnet_r101-d8_512x512_80k_ade20k
In Collection: DMNet
Metadata:
inference time (ms/im):
- value: 72.05
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 45.34
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dmnet/dmnet_r101-d8_512x512_80k_ade20k/dmnet_r101-d8_512x512_80k_ade20k_20201214_115704-c656c3fb.pth
Config: configs/dmnet/dmnet_r101-d8_512x512_80k_ade20k.py
- Name: dmnet_r50-d8_512x512_160k_ade20k
In Collection: DMNet
Metadata:
inference time (ms/im):
- value: 47.73
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.15
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dmnet/dmnet_r50-d8_512x512_160k_ade20k/dmnet_r50-d8_512x512_160k_ade20k_20201214_115706-25fb92c2.pth
Config: configs/dmnet/dmnet_r50-d8_512x512_160k_ade20k.py
- Name: dmnet_r101-d8_512x512_160k_ade20k
In Collection: DMNet
Metadata:
inference time (ms/im):
- value: 72.05
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 45.42
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dmnet/dmnet_r101-d8_512x512_160k_ade20k/dmnet_r101-d8_512x512_160k_ade20k_20201214_115705-73f9a8d7.pth
Config: configs/dmnet/dmnet_r101-d8_512x512_160k_ade20k.py

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configs/dnlnet/dnlnet.yml Normal file
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Collections:
- Name: dnlnet
Metadata:
Training Data:
- Cityscapes
- ADE20K
Models:
- Name: dnl_r50-d8_512x1024_40k_cityscapes
In Collection: dnlnet
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 390.62
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 7.3
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.61
Config: configs/dnlnet/dnl_r50-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dnlnet/dnl_r50-d8_512x1024_40k_cityscapes/dnl_r50-d8_512x1024_40k_cityscapes_20200904_233629-53d4ea93.pth
- Name: dnl_r101-d8_512x1024_40k_cityscapes
In Collection: dnlnet
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 510.2
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 10.9
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.31
Config: configs/dnlnet/dnl_r101-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dnlnet/dnl_r101-d8_512x1024_40k_cityscapes/dnl_r101-d8_512x1024_40k_cityscapes_20200904_233629-9928ffef.pth
- Name: dnl_r50-d8_769x769_40k_cityscapes
In Collection: dnlnet
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 666.67
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 9.2
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.44
mIoU(ms+flip): 80.27
Config: configs/dnlnet/dnl_r50-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dnlnet/dnl_r50-d8_769x769_40k_cityscapes/dnl_r50-d8_769x769_40k_cityscapes_20200820_232206-0f283785.pth
- Name: dnl_r101-d8_769x769_40k_cityscapes
In Collection: dnlnet
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 980.39
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 12.6
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.39
mIoU(ms+flip): 77.77
Config: configs/dnlnet/dnl_r101-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dnlnet/dnl_r101-d8_769x769_40k_cityscapes/dnl_r101-d8_769x769_40k_cityscapes_20200820_171256-76c596df.pth
- Name: dnl_r50-d8_512x1024_80k_cityscapes
In Collection: dnlnet
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.33
Config: configs/dnlnet/dnl_r50-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dnlnet/dnl_r50-d8_512x1024_80k_cityscapes/dnl_r50-d8_512x1024_80k_cityscapes_20200904_233629-58b2f778.pth
- Name: dnl_r101-d8_512x1024_80k_cityscapes
In Collection: dnlnet
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.41
Config: configs/dnlnet/dnl_r101-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dnlnet/dnl_r101-d8_512x1024_80k_cityscapes/dnl_r101-d8_512x1024_80k_cityscapes_20200904_233629-758e2dd4.pth
- Name: dnl_r50-d8_769x769_80k_cityscapes
In Collection: dnlnet
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.36
mIoU(ms+flip): 80.7
Config: configs/dnlnet/dnl_r50-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dnlnet/dnl_r50-d8_769x769_80k_cityscapes/dnl_r50-d8_769x769_80k_cityscapes_20200820_011925-366bc4c7.pth
- Name: dnl_r101-d8_769x769_80k_cityscapes
In Collection: dnlnet
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.41
mIoU(ms+flip): 80.68
Config: configs/dnlnet/dnl_r101-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dnlnet/dnl_r101-d8_769x769_80k_cityscapes/dnl_r101-d8_769x769_80k_cityscapes_20200821_051111-95ff84ab.pth
- Name: dnl_r50-d8_512x512_80k_ade20k
In Collection: dnlnet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 48.4
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 8.8
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 41.76
mIoU(ms+flip): 42.99
Config: configs/dnlnet/dnl_r50-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dnlnet/dnl_r50-d8_512x512_80k_ade20k/dnl_r50-d8_512x512_80k_ade20k_20200826_183354-1cf6e0c1.pth
- Name: dnl_r101-d8_512x512_80k_ade20k
In Collection: dnlnet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 79.74
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 12.8
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.76
mIoU(ms+flip): 44.91
Config: configs/dnlnet/dnl_r101-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dnlnet/dnl_r101-d8_512x512_80k_ade20k/dnl_r101-d8_512x512_80k_ade20k_20200826_183354-d820d6ea.pth
- Name: dnl_r50-d8_512x512_160k_ade20k
In Collection: dnlnet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 41.87
mIoU(ms+flip): 43.01
Config: configs/dnlnet/dnl_r50-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dnlnet/dnl_r50-d8_512x512_160k_ade20k/dnl_r50-d8_512x512_160k_ade20k_20200826_183350-37837798.pth
- Name: dnl_r101-d8_512x512_160k_ade20k
In Collection: dnlnet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 44.25
mIoU(ms+flip): 45.78
Config: configs/dnlnet/dnl_r101-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dnlnet/dnl_r101-d8_512x512_160k_ade20k/dnl_r101-d8_512x512_160k_ade20k_20200826_183350-ed522c61.pth

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Collections:
- Name: dnl
Metadata:
Training Data:
- Cityscapes
- ADE20K
Models:
- Name: dnl_r50-d8_512x1024_40k_cityscapes
In Collection: dnl
Metadata:
inference time (ms/im):
- value: 390.62
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.61
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dnlnet/dnl_r50-d8_512x1024_40k_cityscapes/dnl_r50-d8_512x1024_40k_cityscapes_20200904_233629-53d4ea93.pth
Config: configs/dnl/dnl_r50-d8_512x1024_40k_cityscapes.py
- Name: dnl_r101-d8_512x1024_40k_cityscapes
In Collection: dnl
Metadata:
inference time (ms/im):
- value: 510.2
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.31
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dnlnet/dnl_r101-d8_512x1024_40k_cityscapes/dnl_r101-d8_512x1024_40k_cityscapes_20200904_233629-9928ffef.pth
Config: configs/dnl/dnl_r101-d8_512x1024_40k_cityscapes.py
- Name: dnl_r50-d8_769x769_40k_cityscapes
In Collection: dnl
Metadata:
inference time (ms/im):
- value: 666.67
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.44
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dnlnet/dnl_r50-d8_769x769_40k_cityscapes/dnl_r50-d8_769x769_40k_cityscapes_20200820_232206-0f283785.pth
Config: configs/dnl/dnl_r50-d8_769x769_40k_cityscapes.py
- Name: dnl_r101-d8_769x769_40k_cityscapes
In Collection: dnl
Metadata:
inference time (ms/im):
- value: 980.39
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.39
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dnlnet/dnl_r101-d8_769x769_40k_cityscapes/dnl_r101-d8_769x769_40k_cityscapes_20200820_171256-76c596df.pth
Config: configs/dnl/dnl_r101-d8_769x769_40k_cityscapes.py
- Name: dnl_r50-d8_512x1024_80k_cityscapes
In Collection: dnl
Metadata:
inference time (ms/im):
- value: 390.62
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.33
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dnlnet/dnl_r50-d8_512x1024_80k_cityscapes/dnl_r50-d8_512x1024_80k_cityscapes_20200904_233629-58b2f778.pth
Config: configs/dnl/dnl_r50-d8_512x1024_80k_cityscapes.py
- Name: dnl_r101-d8_512x1024_80k_cityscapes
In Collection: dnl
Metadata:
inference time (ms/im):
- value: 510.2
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.41
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dnlnet/dnl_r101-d8_512x1024_80k_cityscapes/dnl_r101-d8_512x1024_80k_cityscapes_20200904_233629-758e2dd4.pth
Config: configs/dnl/dnl_r101-d8_512x1024_80k_cityscapes.py
- Name: dnl_r50-d8_769x769_80k_cityscapes
In Collection: dnl
Metadata:
inference time (ms/im):
- value: 666.67
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.36
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dnlnet/dnl_r50-d8_769x769_80k_cityscapes/dnl_r50-d8_769x769_80k_cityscapes_20200820_011925-366bc4c7.pth
Config: configs/dnl/dnl_r50-d8_769x769_80k_cityscapes.py
- Name: dnl_r101-d8_769x769_80k_cityscapes
In Collection: dnl
Metadata:
inference time (ms/im):
- value: 980.39
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.41
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dnlnet/dnl_r101-d8_769x769_80k_cityscapes/dnl_r101-d8_769x769_80k_cityscapes_20200821_051111-95ff84ab.pth
Config: configs/dnl/dnl_r101-d8_769x769_80k_cityscapes.py
- Name: dnl_r50-d8_512x512_80k_ade20k
In Collection: dnl
Metadata:
inference time (ms/im):
- value: 48.4
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 41.76
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dnlnet/dnl_r50-d8_512x512_80k_ade20k/dnl_r50-d8_512x512_80k_ade20k_20200826_183354-1cf6e0c1.pth
Config: configs/dnl/dnl_r50-d8_512x512_80k_ade20k.py
- Name: dnl_r101-d8_512x512_80k_ade20k
In Collection: dnl
Metadata:
inference time (ms/im):
- value: 79.74
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.76
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dnlnet/dnl_r101-d8_512x512_80k_ade20k/dnl_r101-d8_512x512_80k_ade20k_20200826_183354-d820d6ea.pth
Config: configs/dnl/dnl_r101-d8_512x512_80k_ade20k.py
- Name: dnl_r50-d8_512x512_160k_ade20k
In Collection: dnl
Metadata:
inference time (ms/im):
- value: 48.4
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 41.87
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dnlnet/dnl_r50-d8_512x512_160k_ade20k/dnl_r50-d8_512x512_160k_ade20k_20200826_183350-37837798.pth
Config: configs/dnl/dnl_r50-d8_512x512_160k_ade20k.py
- Name: dnl_r101-d8_512x512_160k_ade20k
In Collection: dnl
Metadata:
inference time (ms/im):
- value: 79.74
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 44.25
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/dnlnet/dnl_r101-d8_512x512_160k_ade20k/dnl_r101-d8_512x512_160k_ade20k_20200826_183350-ed522c61.pth
Config: configs/dnl/dnl_r101-d8_512x512_160k_ade20k.py

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configs/emanet/emanet.yml Normal file
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Collections:
- Name: emanet
Metadata:
Training Data:
- Cityscapes
Models:
- Name: emanet_r50-d8_512x1024_80k_cityscapes
In Collection: emanet
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 218.34
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 5.4
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.59
mIoU(ms+flip): 79.44
Config: configs/emanet/emanet_r50-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/emanet/emanet_r50-d8_512x1024_80k_cityscapes/emanet_r50-d8_512x1024_80k_cityscapes_20200901_100301-c43fcef1.pth
- Name: emanet_r101-d8_512x1024_80k_cityscapes
In Collection: emanet
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 348.43
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 6.2
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.1
mIoU(ms+flip): 81.21
Config: configs/emanet/emanet_r101-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/emanet/emanet_r101-d8_512x1024_80k_cityscapes/emanet_r101-d8_512x1024_80k_cityscapes_20200901_100301-2d970745.pth
- Name: emanet_r50-d8_769x769_80k_cityscapes
In Collection: emanet
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 80000
inference time (ms/im):
- value: 507.61
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 8.9
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.33
mIoU(ms+flip): 80.49
Config: configs/emanet/emanet_r50-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/emanet/emanet_r50-d8_769x769_80k_cityscapes/emanet_r50-d8_769x769_80k_cityscapes_20200901_100301-16f8de52.pth
- Name: emanet_r101-d8_769x769_80k_cityscapes
In Collection: emanet
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 80000
inference time (ms/im):
- value: 819.67
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 10.1
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.62
mIoU(ms+flip): 81.0
Config: configs/emanet/emanet_r101-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/emanet/emanet_r101-d8_769x769_80k_cityscapes/emanet_r101-d8_769x769_80k_cityscapes_20200901_100301-47a324ce.pth

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Collections:
- Name: EMANet
Metadata:
Training Data:
- Cityscapes
Models:
- Name: emanet_r50-d8_512x1024_80k_cityscapes
In Collection: EMANet
Metadata:
inference time (ms/im):
- value: 218.34
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.59
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/emanet/emanet_r50-d8_512x1024_80k_cityscapes/emanet_r50-d8_512x1024_80k_cityscapes_20200901_100301-c43fcef1.pth
Config: configs/emanet/emanet_r50-d8_512x1024_80k_cityscapes.py
- Name: emanet_r101-d8_512x1024_80k_cityscapes
In Collection: EMANet
Metadata:
inference time (ms/im):
- value: 348.43
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.10
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/emanet/emanet_r101-d8_512x1024_80k_cityscapes/emanet_r101-d8_512x1024_80k_cityscapes_20200901_100301-2d970745.pth
Config: configs/emanet/emanet_r101-d8_512x1024_80k_cityscapes.py
- Name: emanet_r50-d8_769x769_80k_cityscapes
In Collection: EMANet
Metadata:
inference time (ms/im):
- value: 507.61
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.33
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/emanet/emanet_r50-d8_769x769_80k_cityscapes/emanet_r50-d8_769x769_80k_cityscapes_20200901_100301-16f8de52.pth
Config: configs/emanet/emanet_r50-d8_769x769_80k_cityscapes.py
- Name: emanet_r101-d8_769x769_80k_cityscapes
In Collection: EMANet
Metadata:
inference time (ms/im):
- value: 819.67
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.62
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/emanet/emanet_r101-d8_769x769_80k_cityscapes/emanet_r101-d8_769x769_80k_cityscapes_20200901_100301-47a324ce.pth
Config: configs/emanet/emanet_r101-d8_769x769_80k_cityscapes.py

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configs/encnet/encnet.yml Normal file
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Collections:
- Name: encnet
Metadata:
Training Data:
- Cityscapes
- ADE20K
Models:
- Name: encnet_r50-d8_512x1024_40k_cityscapes
In Collection: encnet
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 218.34
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 8.6
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 75.67
mIoU(ms+flip): 77.08
Config: configs/encnet/encnet_r50-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/encnet/encnet_r50-d8_512x1024_40k_cityscapes/encnet_r50-d8_512x1024_40k_cityscapes_20200621_220958-68638a47.pth
- Name: encnet_r101-d8_512x1024_40k_cityscapes
In Collection: encnet
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 375.94
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 12.1
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 75.81
mIoU(ms+flip): 77.21
Config: configs/encnet/encnet_r101-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/encnet/encnet_r101-d8_512x1024_40k_cityscapes/encnet_r101-d8_512x1024_40k_cityscapes_20200621_220933-35e0a3e8.pth
- Name: encnet_r50-d8_769x769_40k_cityscapes
In Collection: encnet
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 549.45
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 9.8
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.24
mIoU(ms+flip): 77.85
Config: configs/encnet/encnet_r50-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/encnet/encnet_r50-d8_769x769_40k_cityscapes/encnet_r50-d8_769x769_40k_cityscapes_20200621_220958-3bcd2884.pth
- Name: encnet_r101-d8_769x769_40k_cityscapes
In Collection: encnet
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 793.65
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 13.7
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 74.25
mIoU(ms+flip): 76.25
Config: configs/encnet/encnet_r101-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/encnet/encnet_r101-d8_769x769_40k_cityscapes/encnet_r101-d8_769x769_40k_cityscapes_20200621_220933-2fafed55.pth
- Name: encnet_r50-d8_512x1024_80k_cityscapes
In Collection: encnet
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.94
mIoU(ms+flip): 79.13
Config: configs/encnet/encnet_r50-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/encnet/encnet_r50-d8_512x1024_80k_cityscapes/encnet_r50-d8_512x1024_80k_cityscapes_20200622_003554-fc5c5624.pth
- Name: encnet_r101-d8_512x1024_80k_cityscapes
In Collection: encnet
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.55
mIoU(ms+flip): 79.47
Config: configs/encnet/encnet_r101-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/encnet/encnet_r101-d8_512x1024_80k_cityscapes/encnet_r101-d8_512x1024_80k_cityscapes_20200622_003555-1de64bec.pth
- Name: encnet_r50-d8_769x769_80k_cityscapes
In Collection: encnet
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.44
mIoU(ms+flip): 78.72
Config: configs/encnet/encnet_r50-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/encnet/encnet_r50-d8_769x769_80k_cityscapes/encnet_r50-d8_769x769_80k_cityscapes_20200622_003554-55096dcb.pth
- Name: encnet_r101-d8_769x769_80k_cityscapes
In Collection: encnet
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.1
mIoU(ms+flip): 76.97
Config: configs/encnet/encnet_r101-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/encnet/encnet_r101-d8_769x769_80k_cityscapes/encnet_r101-d8_769x769_80k_cityscapes_20200622_003555-470ef79d.pth
- Name: encnet_r50-d8_512x512_80k_ade20k
In Collection: encnet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 43.84
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 10.1
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 39.53
mIoU(ms+flip): 41.17
Config: configs/encnet/encnet_r50-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/encnet/encnet_r50-d8_512x512_80k_ade20k/encnet_r50-d8_512x512_80k_ade20k_20200622_042412-44b46b04.pth
- Name: encnet_r101-d8_512x512_80k_ade20k
In Collection: encnet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 67.25
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 13.6
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.11
mIoU(ms+flip): 43.61
Config: configs/encnet/encnet_r101-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/encnet/encnet_r101-d8_512x512_80k_ade20k/encnet_r101-d8_512x512_80k_ade20k_20200622_101128-dd35e237.pth
- Name: encnet_r50-d8_512x512_160k_ade20k
In Collection: encnet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 40.1
mIoU(ms+flip): 41.71
Config: configs/encnet/encnet_r50-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/encnet/encnet_r50-d8_512x512_160k_ade20k/encnet_r50-d8_512x512_160k_ade20k_20200622_101059-b2db95e0.pth
- Name: encnet_r101-d8_512x512_160k_ade20k
In Collection: encnet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.61
mIoU(ms+flip): 44.01
Config: configs/encnet/encnet_r101-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/encnet/encnet_r101-d8_512x512_160k_ade20k/encnet_r101-d8_512x512_160k_ade20k_20200622_073348-7989641f.pth

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@ -1,235 +0,0 @@
Collections:
- Name: encnet
Metadata:
Training Data:
- Cityscapes
- Pascal VOC 2012 + Aug
- ADE20K
Models:
- Name: encnet_r50-d8_512x1024_40k_cityscapes
In Collection: encnet
Metadata:
inference time (ms/im):
- value: 218.34
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 75.67
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/encnet/encnet_r50-d8_512x1024_40k_cityscapes/encnet_r50-d8_512x1024_40k_cityscapes_20200621_220958-68638a47.pth
Config: configs/encnet/encnet_r50-d8_512x1024_40k_cityscapes.py
- Name: encnet_r101-d8_512x1024_40k_cityscapes
In Collection: encnet
Metadata:
inference time (ms/im):
- value: 375.94
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 75.81
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/encnet/encnet_r101-d8_512x1024_40k_cityscapes/encnet_r101-d8_512x1024_40k_cityscapes_20200621_220933-35e0a3e8.pth
Config: configs/encnet/encnet_r101-d8_512x1024_40k_cityscapes.py
- Name: encnet_r50-d8_769x769_40k_cityscapes
In Collection: encnet
Metadata:
inference time (ms/im):
- value: 549.45
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.24
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/encnet/encnet_r50-d8_769x769_40k_cityscapes/encnet_r50-d8_769x769_40k_cityscapes_20200621_220958-3bcd2884.pth
Config: configs/encnet/encnet_r50-d8_769x769_40k_cityscapes.py
- Name: encnet_r101-d8_769x769_40k_cityscapes
In Collection: encnet
Metadata:
inference time (ms/im):
- value: 793.65
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 74.25
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/encnet/encnet_r101-d8_769x769_40k_cityscapes/encnet_r101-d8_769x769_40k_cityscapes_20200621_220933-2fafed55.pth
Config: configs/encnet/encnet_r101-d8_769x769_40k_cityscapes.py
- Name: encnet_r50-d8_512x1024_80k_cityscapes
In Collection: encnet
Metadata:
inference time (ms/im):
- value: 218.34
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.94
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/encnet/encnet_r50-d8_512x1024_80k_cityscapes/encnet_r50-d8_512x1024_80k_cityscapes_20200622_003554-fc5c5624.pth
Config: configs/encnet/encnet_r50-d8_512x1024_80k_cityscapes.py
- Name: encnet_r101-d8_512x1024_80k_cityscapes
In Collection: encnet
Metadata:
inference time (ms/im):
- value: 375.94
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.55
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/encnet/encnet_r101-d8_512x1024_80k_cityscapes/encnet_r101-d8_512x1024_80k_cityscapes_20200622_003555-1de64bec.pth
Config: configs/encnet/encnet_r101-d8_512x1024_80k_cityscapes.py
- Name: encnet_r50-d8_769x769_80k_cityscapes
In Collection: encnet
Metadata:
inference time (ms/im):
- value: 549.45
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.44
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/encnet/encnet_r50-d8_769x769_80k_cityscapes/encnet_r50-d8_769x769_80k_cityscapes_20200622_003554-55096dcb.pth
Config: configs/encnet/encnet_r50-d8_769x769_80k_cityscapes.py
- Name: encnet_r101-d8_769x769_80k_cityscapes
In Collection: encnet
Metadata:
inference time (ms/im):
- value: 793.65
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.10
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/encnet/encnet_r101-d8_769x769_80k_cityscapes/encnet_r101-d8_769x769_80k_cityscapes_20200622_003555-470ef79d.pth
Config: configs/encnet/encnet_r101-d8_769x769_80k_cityscapes.py
- Name: encnet_r50-d8_512x512_80k_ade20k
In Collection: encnet
Metadata:
inference time (ms/im):
- value: 43.84
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 39.53
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/encnet/encnet_r50-d8_512x512_80k_ade20k/encnet_r50-d8_512x512_80k_ade20k_20200622_042412-44b46b04.pth
Config: configs/encnet/encnet_r50-d8_512x512_80k_ade20k.py
- Name: encnet_r101-d8_512x512_80k_ade20k
In Collection: encnet
Metadata:
inference time (ms/im):
- value: 67.25
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.11
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/encnet/encnet_r101-d8_512x512_80k_ade20k/encnet_r101-d8_512x512_80k_ade20k_20200622_101128-dd35e237.pth
Config: configs/encnet/encnet_r101-d8_512x512_80k_ade20k.py
- Name: encnet_r50-d8_512x512_160k_ade20k
In Collection: encnet
Metadata:
inference time (ms/im):
- value: 43.84
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 40.10
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/encnet/encnet_r50-d8_512x512_160k_ade20k/encnet_r50-d8_512x512_160k_ade20k_20200622_101059-b2db95e0.pth
Config: configs/encnet/encnet_r50-d8_512x512_160k_ade20k.py
- Name: encnet_r101-d8_512x512_160k_ade20k
In Collection: encnet
Metadata:
inference time (ms/im):
- value: 67.25
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.61
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/encnet/encnet_r101-d8_512x512_160k_ade20k/encnet_r101-d8_512x512_160k_ade20k_20200622_073348-7989641f.pth
Config: configs/encnet/encnet_r101-d8_512x512_160k_ade20k.py

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@ -0,0 +1,28 @@
Collections:
- Name: fastscnn
Metadata:
Training Data:
- Cityscapes
Models:
- Name: ''
In Collection: fastscnn
Metadata:
backbone: Fast-SCNN
crop size: (512,1024)
lr schd: 160000
inference time (ms/im):
- value: 17.71
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 3.3
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 70.96
mIoU(ms+flip): 72.65
Config: ''
Weights: ''

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@ -1,24 +0,0 @@
Collections:
- Name: Fast-SCNN
Metadata:
Training Data:
- Cityscapes
Models:
- Name: fast_scnn_4x8_80k_lr0.12_cityscapes
In Collection: Fast-SCNN
Metadata:
inference time (ms/im):
- value: 15.72
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 69.06
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fast_scnn/fast_scnn_4x8_80k_lr0.12_cityscapes-f5096c79.pth
Config: configs/fast-scnn/fast_scnn_4x8_80k_lr0.12_cityscapes.py

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@ -47,10 +47,10 @@
| FCN-D6 | R-101-D16 | 512x1024 | 80000 | - | 8.26 | 78.46 | 80.42 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/fcn/fcn_d6_r101-d16_512x1024_80k_cityscapes.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r101-d16_512x1024_80k_cityscapes/fcn_d6_r101-d16_512x1024_80k_cityscapes-cb336445.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r101-d16_512x1024_80k_cityscapes/fcn_d6_r101-d16_512x1024_80k_cityscapes-20210308_102747.log.json) |
| FCN-D6 | R-101-D16 | 769x769 | 40000 | 5.0 | 3.12 | 77.28 | 78.95 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/fcn/fcn_d6_r101-d16_769x769_40k_cityscapes.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r101-d16_769x769_40k_cityscapes/fcn_d6_r101-d16_769x769_40k_cityscapes-60b114e9.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r101-d16_769x769_40k_cityscapes/fcn_d6_r101-d16_769x769_40k_cityscapes-20210308_102453.log.json) |
| FCN-D6 | R-101-D16 | 769x769 | 80000 | - | 3.21 | 78.06 | 79.58 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/fcn/fcn_d6_r101-d16_769x769_80k_cityscapes.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r101-d16_769x769_80k_cityscapes/fcn_d6_r101-d16_769x769_80k_cityscapes-e33adc4f.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r101-d16_769x769_80k_cityscapes/fcn_d6_r101-d16_769x769_80k_cityscapes-20210306_120016.log.json) |
| FCN-D6 | R-50b-D16 | 512x1024 | 80000 | 3.2 | 10.16 | 76.99 | 79.03 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/fcn/fcn_d6_r50b_d16_512x1024_80k_cityscapes.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r50b_d16_512x1024_80k_cityscapes/fcn_d6_r50b_d16_512x1024_80k_cityscapes-6a0b62e9.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r50b_d16_512x1024_80k_cityscapes/fcn_d6_r50b_d16_512x1024_80k_cityscapes-20210311_125550.log.json) |
| FCN-D6 | R-50b-D16 | 769x769 | 80000 | 3.6 | 4.17 | 76.86 | 78.52 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/fcn/fcn_d6_r50b_d16_769x769_80k_cityscapes.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r50b_d16_769x769_80k_cityscapes/fcn_d6_r50b_d16_769x769_80k_cityscapes-d665f231.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r50b_d16_769x769_80k_cityscapes/fcn_d6_r50b_d16_769x769_80k_cityscapes-20210311_131012.log.json) |
| FCN-D6 | R-101b-D16 | 512x1024 | 80000 | 4.3 | 8.46 | 77.72 | 79.53 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/fcn/fcn_d6_r101b_d16_512x1024_80k_cityscapes.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r101b_d16_512x1024_80k_cityscapes/fcn_d6_r101b_d16_512x1024_80k_cityscapes-3f2eb5b4.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r101b_d16_512x1024_80k_cityscapes/fcn_d6_r101b_d16_512x1024_80k_cityscapes-20210311_144305.log.json) |
| FCN-D6 | R-101b-D16 | 769x769 | 80000 | 4.8 | 3.32 | 77.34 | 78.91 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/fcn/fcn_d6_r101b_d16_769x769_80k_cityscapes.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r101b_d16_769x769_80k_cityscapes/fcn_d6_r101b_d16_769x769_80k_cityscapes-c4d8bfbc.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r101b_d16_769x769_80k_cityscapes/fcn_d6_r101b_d16_769x769_80k_cityscapes-20210311_154527.log.json) |
| FCN-D6 | R-50b-D16 | 512x1024 | 80000 | 3.2 | 10.16 | 76.99 | 79.03 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/fcn/fcn_d6_r50b-d16_512x1024_80k_cityscapes.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r50b_d16_512x1024_80k_cityscapes/fcn_d6_r50b_d16_512x1024_80k_cityscapes-6a0b62e9.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r50b_d16_512x1024_80k_cityscapes/fcn_d6_r50b_d16_512x1024_80k_cityscapes-20210311_125550.log.json) |
| FCN-D6 | R-50b-D16 | 769x769 | 80000 | 3.6 | 4.17 | 76.86 | 78.52 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/fcn/fcn_d6_r50b-d16_769x769_80k_cityscapes.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r50b_d16_769x769_80k_cityscapes/fcn_d6_r50b_d16_769x769_80k_cityscapes-d665f231.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r50b_d16_769x769_80k_cityscapes/fcn_d6_r50b_d16_769x769_80k_cityscapes-20210311_131012.log.json) |
| FCN-D6 | R-101b-D16 | 512x1024 | 80000 | 4.3 | 8.46 | 77.72 | 79.53 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/fcn/fcn_d6_r101b-d16_512x1024_80k_cityscapes.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r101b_d16_512x1024_80k_cityscapes/fcn_d6_r101b_d16_512x1024_80k_cityscapes-3f2eb5b4.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r101b_d16_512x1024_80k_cityscapes/fcn_d6_r101b_d16_512x1024_80k_cityscapes-20210311_144305.log.json) |
| FCN-D6 | R-101b-D16 | 769x769 | 80000 | 4.8 | 3.32 | 77.34 | 78.91 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/fcn/fcn_d6_r101b-d16_769x769_80k_cityscapes.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r101b_d16_769x769_80k_cityscapes/fcn_d6_r101b_d16_769x769_80k_cityscapes-c4d8bfbc.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r101b_d16_769x769_80k_cityscapes/fcn_d6_r101b_d16_769x769_80k_cityscapes-20210311_154527.log.json) |
### ADE20K

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Collections:
- Name: fcn
Metadata:
Training Data:
- Cityscapes
- ADE20K
- Pascal VOC 2012 + Aug
- Pascal Context
- Pascal Context 59
Models:
- Name: fcn_r50-d8_512x1024_40k_cityscapes
In Collection: fcn
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 239.81
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 5.7
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 72.25
mIoU(ms+flip): 73.36
Config: configs/fcn/fcn_r50-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r50-d8_512x1024_40k_cityscapes/fcn_r50-d8_512x1024_40k_cityscapes_20200604_192608-efe53f0d.pth
- Name: fcn_r101-d8_512x1024_40k_cityscapes
In Collection: fcn
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 375.94
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 9.2
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 75.45
mIoU(ms+flip): 76.58
Config: configs/fcn/fcn_r101-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101-d8_512x1024_40k_cityscapes/fcn_r101-d8_512x1024_40k_cityscapes_20200604_181852-a883d3a1.pth
- Name: fcn_r50-d8_769x769_40k_cityscapes
In Collection: fcn
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 555.56
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 6.5
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 71.47
mIoU(ms+flip): 72.54
Config: configs/fcn/fcn_r50-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r50-d8_769x769_40k_cityscapes/fcn_r50-d8_769x769_40k_cityscapes_20200606_113104-977b5d02.pth
- Name: fcn_r101-d8_769x769_40k_cityscapes
In Collection: fcn
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 840.34
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 10.4
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 73.93
mIoU(ms+flip): 75.14
Config: configs/fcn/fcn_r101-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101-d8_769x769_40k_cityscapes/fcn_r101-d8_769x769_40k_cityscapes_20200606_113208-7d4ab69c.pth
- Name: fcn_r18-d8_512x1024_80k_cityscapes
In Collection: fcn
Metadata:
backbone: R-18-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 68.26
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 1.7
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 71.11
mIoU(ms+flip): 72.91
Config: configs/fcn/fcn_r18-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r18-d8_512x1024_80k_cityscapes/fcn_r18-d8_512x1024_80k_cityscapes_20201225_021327-6c50f8b4.pth
- Name: fcn_r50-d8_512x1024_80k_cityscapes
In Collection: fcn
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 73.61
mIoU(ms+flip): 74.24
Config: configs/fcn/fcn_r50-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r50-d8_512x1024_80k_cityscapes/fcn_r50-d8_512x1024_80k_cityscapes_20200606_113019-03aa804d.pth
- Name: fcn_r101-d8_512x1024_80k_cityscapes
In Collection: fcn
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 75.13
mIoU(ms+flip): 75.94
Config: configs/fcn/fcn_r101-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101-d8_512x1024_80k_cityscapes/fcn_r101-d8_512x1024_80k_cityscapes_20200606_113038-3fb937eb.pth
- Name: fcn_r18-d8_769x769_80k_cityscapes
In Collection: fcn
Metadata:
backbone: R-18-D8
crop size: (769,769)
lr schd: 80000
inference time (ms/im):
- value: 156.25
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 1.9
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 70.8
mIoU(ms+flip): 73.16
Config: configs/fcn/fcn_r18-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r18-d8_769x769_80k_cityscapes/fcn_r18-d8_769x769_80k_cityscapes_20201225_021451-9739d1b8.pth
- Name: fcn_r50-d8_769x769_80k_cityscapes
In Collection: fcn
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 72.64
mIoU(ms+flip): 73.32
Config: configs/fcn/fcn_r50-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r50-d8_769x769_80k_cityscapes/fcn_r50-d8_769x769_80k_cityscapes_20200606_195749-f5caeabc.pth
- Name: fcn_r101-d8_769x769_80k_cityscapes
In Collection: fcn
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 75.52
mIoU(ms+flip): 76.61
Config: configs/fcn/fcn_r101-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101-d8_769x769_80k_cityscapes/fcn_r101-d8_769x769_80k_cityscapes_20200606_214354-45cbac68.pth
- Name: fcn_r18b-d8_512x1024_80k_cityscapes
In Collection: fcn
Metadata:
backbone: R-18b-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 59.74
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 1.6
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 70.24
mIoU(ms+flip): 72.77
Config: configs/fcn/fcn_r18b-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r18b-d8_512x1024_80k_cityscapes/fcn_r18b-d8_512x1024_80k_cityscapes_20201225_230143-92c0f445.pth
- Name: fcn_r50b-d8_512x1024_80k_cityscapes
In Collection: fcn
Metadata:
backbone: R-50b-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 238.1
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 5.6
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 75.65
mIoU(ms+flip): 77.59
Config: configs/fcn/fcn_r50b-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r50b-d8_512x1024_80k_cityscapes/fcn_r50b-d8_512x1024_80k_cityscapes_20201225_094221-82957416.pth
- Name: fcn_r101b-d8_512x1024_80k_cityscapes
In Collection: fcn
Metadata:
backbone: R-101b-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 366.3
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 9.1
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.37
mIoU(ms+flip): 78.77
Config: configs/fcn/fcn_r101b-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101b-d8_512x1024_80k_cityscapes/fcn_r101b-d8_512x1024_80k_cityscapes_20201226_160213-4543858f.pth
- Name: fcn_r18b-d8_769x769_80k_cityscapes
In Collection: fcn
Metadata:
backbone: R-18b-D8
crop size: (769,769)
lr schd: 80000
inference time (ms/im):
- value: 149.25
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 1.7
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 69.66
mIoU(ms+flip): 72.07
Config: configs/fcn/fcn_r18b-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r18b-d8_769x769_80k_cityscapes/fcn_r18b-d8_769x769_80k_cityscapes_20201226_004430-32d504e5.pth
- Name: fcn_r50b-d8_769x769_80k_cityscapes
In Collection: fcn
Metadata:
backbone: R-50b-D8
crop size: (769,769)
lr schd: 80000
inference time (ms/im):
- value: 549.45
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 6.3
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 73.83
mIoU(ms+flip): 76.6
Config: configs/fcn/fcn_r50b-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r50b-d8_769x769_80k_cityscapes/fcn_r50b-d8_769x769_80k_cityscapes_20201225_094223-94552d38.pth
- Name: fcn_r101b-d8_769x769_80k_cityscapes
In Collection: fcn
Metadata:
backbone: R-101b-D8
crop size: (769,769)
lr schd: 80000
inference time (ms/im):
- value: 869.57
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 10.3
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.02
mIoU(ms+flip): 78.67
Config: configs/fcn/fcn_r101b-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101b-d8_769x769_80k_cityscapes/fcn_r101b-d8_769x769_80k_cityscapes_20201226_170012-82be37e2.pth
- Name: fcn_d6_r50-d16_512x1024_40k_cityscapes
In Collection: fcn
Metadata:
backbone: R-50-D16
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 97.85
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 3.4
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.06
mIoU(ms+flip): 78.85
Config: configs/fcn/fcn_d6_r50-d16_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r50-d16_512x1024_40k_cityscapes/fcn_d6_r50-d16_512x1024_40k_cityscapes-98d5d1bc.pth
- Name: fcn_d6_r50-d16_512x1024_80k_cityscapes
In Collection: fcn
Metadata:
backbone: R-50-D16
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 96.62
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.27
mIoU(ms+flip): 78.88
Config: configs/fcn/fcn_d6_r50-d16_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r50-d16_512x1024_80k_cityscapes/fcn_d6_r50-d16_512x1024_40k_cityscapes-98d5d1bc.pth
- Name: fcn_d6_r50-d16_769x769_40k_cityscapes
In Collection: fcn
Metadata:
backbone: R-50-D16
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 239.81
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 3.7
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.82
mIoU(ms+flip): 78.22
Config: configs/fcn/fcn_d6_r50-d16_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r50-d16_769x769_40k_cityscapes/fcn_d6_r50-d16_769x769_40k_cityscapes-1aab18ed.pth
- Name: fcn_d6_r50-d16_769x769_80k_cityscapes
In Collection: fcn
Metadata:
backbone: R-50-D16
crop size: (769,769)
lr schd: 80000
inference time (ms/im):
- value: 240.96
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.04
mIoU(ms+flip): 78.4
Config: configs/fcn/fcn_d6_r50-d16_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r50-d16_769x769_80k_cityscapes/fcn_d6_r50-d16_769x769_80k_cityscapes-109d88eb.pth
- Name: fcn_d6_r101-d16_512x1024_40k_cityscapes
In Collection: fcn
Metadata:
backbone: R-101-D16
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 124.38
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 4.5
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.36
mIoU(ms+flip): 79.18
Config: configs/fcn/fcn_d6_r101-d16_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r101-d16_512x1024_40k_cityscapes/fcn_d6_r101-d16_512x1024_40k_cityscapes-9cf2b450.pth
- Name: fcn_d6_r101-d16_512x1024_80k_cityscapes
In Collection: fcn
Metadata:
backbone: R-101-D16
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 121.07
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.46
mIoU(ms+flip): 80.42
Config: configs/fcn/fcn_d6_r101-d16_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r101-d16_512x1024_80k_cityscapes/fcn_d6_r101-d16_512x1024_80k_cityscapes-cb336445.pth
- Name: fcn_d6_r101-d16_769x769_40k_cityscapes
In Collection: fcn
Metadata:
backbone: R-101-D16
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 320.51
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 5.0
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.28
mIoU(ms+flip): 78.95
Config: configs/fcn/fcn_d6_r101-d16_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r101-d16_769x769_40k_cityscapes/fcn_d6_r101-d16_769x769_40k_cityscapes-60b114e9.pth
- Name: fcn_d6_r101-d16_769x769_80k_cityscapes
In Collection: fcn
Metadata:
backbone: R-101-D16
crop size: (769,769)
lr schd: 80000
inference time (ms/im):
- value: 311.53
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.06
mIoU(ms+flip): 79.58
Config: configs/fcn/fcn_d6_r101-d16_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r101-d16_769x769_80k_cityscapes/fcn_d6_r101-d16_769x769_80k_cityscapes-e33adc4f.pth
- Name: fcn_d6_r50b-d16_512x1024_80k_cityscapes
In Collection: fcn
Metadata:
backbone: R-50b-D16
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 98.43
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 3.2
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.99
mIoU(ms+flip): 79.03
Config: configs/fcn/fcn_d6_r50b-d16_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r50b_d16_512x1024_80k_cityscapes/fcn_d6_r50b_d16_512x1024_80k_cityscapes-6a0b62e9.pth
- Name: fcn_d6_r50b-d16_769x769_80k_cityscapes
In Collection: fcn
Metadata:
backbone: R-50b-D16
crop size: (769,769)
lr schd: 80000
inference time (ms/im):
- value: 239.81
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 3.6
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.86
mIoU(ms+flip): 78.52
Config: configs/fcn/fcn_d6_r50b-d16_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r50b_d16_769x769_80k_cityscapes/fcn_d6_r50b_d16_769x769_80k_cityscapes-d665f231.pth
- Name: fcn_d6_r101b-d16_512x1024_80k_cityscapes
In Collection: fcn
Metadata:
backbone: R-101b-D16
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 118.2
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 4.3
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.72
mIoU(ms+flip): 79.53
Config: configs/fcn/fcn_d6_r101b-d16_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r101b_d16_512x1024_80k_cityscapes/fcn_d6_r101b_d16_512x1024_80k_cityscapes-3f2eb5b4.pth
- Name: fcn_d6_r101b-d16_769x769_80k_cityscapes
In Collection: fcn
Metadata:
backbone: R-101b-D16
crop size: (769,769)
lr schd: 80000
inference time (ms/im):
- value: 301.2
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 4.8
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.34
mIoU(ms+flip): 78.91
Config: configs/fcn/fcn_d6_r101b-d16_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r101b_d16_769x769_80k_cityscapes/fcn_d6_r101b_d16_769x769_80k_cityscapes-c4d8bfbc.pth
- Name: fcn_r50-d8_512x512_80k_ade20k
In Collection: fcn
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 42.57
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 8.5
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 35.94
mIoU(ms+flip): 37.94
Config: configs/fcn/fcn_r50-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r50-d8_512x512_80k_ade20k/fcn_r50-d8_512x512_80k_ade20k_20200614_144016-f8ac5082.pth
- Name: fcn_r101-d8_512x512_80k_ade20k
In Collection: fcn
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 67.66
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 12.0
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 39.61
mIoU(ms+flip): 40.83
Config: configs/fcn/fcn_r101-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101-d8_512x512_80k_ade20k/fcn_r101-d8_512x512_80k_ade20k_20200615_014143-bc1809f7.pth
- Name: fcn_r50-d8_512x512_160k_ade20k
In Collection: fcn
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 36.1
mIoU(ms+flip): 38.08
Config: configs/fcn/fcn_r50-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r50-d8_512x512_160k_ade20k/fcn_r50-d8_512x512_160k_ade20k_20200615_100713-4edbc3b4.pth
- Name: fcn_r101-d8_512x512_160k_ade20k
In Collection: fcn
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 39.91
mIoU(ms+flip): 41.4
Config: configs/fcn/fcn_r101-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101-d8_512x512_160k_ade20k/fcn_r101-d8_512x512_160k_ade20k_20200615_105816-fd192bd5.pth
- Name: fcn_r50-d8_512x512_20k_voc12aug
In Collection: fcn
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 42.96
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 5.7
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 67.08
mIoU(ms+flip): 69.94
Config: configs/fcn/fcn_r50-d8_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r50-d8_512x512_20k_voc12aug/fcn_r50-d8_512x512_20k_voc12aug_20200617_010715-52dc5306.pth
- Name: fcn_r101-d8_512x512_20k_voc12aug
In Collection: fcn
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 67.52
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 9.2
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 71.16
mIoU(ms+flip): 73.57
Config: configs/fcn/fcn_r101-d8_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101-d8_512x512_20k_voc12aug/fcn_r101-d8_512x512_20k_voc12aug_20200617_010842-0bb4e798.pth
- Name: fcn_r50-d8_512x512_40k_voc12aug
In Collection: fcn
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 66.97
mIoU(ms+flip): 69.04
Config: configs/fcn/fcn_r50-d8_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r50-d8_512x512_40k_voc12aug/fcn_r50-d8_512x512_40k_voc12aug_20200613_161222-5e2dbf40.pth
- Name: fcn_r101-d8_512x512_40k_voc12aug
In Collection: fcn
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 69.91
mIoU(ms+flip): 72.38
Config: configs/fcn/fcn_r101-d8_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101-d8_512x512_40k_voc12aug/fcn_r101-d8_512x512_40k_voc12aug_20200613_161240-4c8bcefd.pth
- Name: fcn_r101-d8_480x480_40k_pascal_context
In Collection: fcn
Metadata:
backbone: R-101-D8
crop size: (480,480)
lr schd: 40000
inference time (ms/im):
- value: 100.7
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (480,480)
Results:
Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 44.43
mIoU(ms+flip): 45.63
Config: configs/fcn/fcn_r101-d8_480x480_40k_pascal_context.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101-d8_480x480_40k_pascal_context/fcn_r101-d8_480x480_40k_pascal_context-20210421_154757-b5e97937.pth
- Name: fcn_r101-d8_480x480_80k_pascal_context
In Collection: fcn
Metadata:
backbone: R-101-D8
crop size: (480,480)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 44.13
mIoU(ms+flip): 45.26
Config: configs/fcn/fcn_r101-d8_480x480_80k_pascal_context.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101-d8_480x480_80k_pascal_context/fcn_r101-d8_480x480_80k_pascal_context-20210421_163310-4711813f.pth
- Name: fcn_r101-d8_480x480_40k_pascal_context_59
In Collection: fcn
Metadata:
backbone: R-101-D8
crop size: (480,480)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal Context 59
Metrics:
mIoU: 48.42
mIoU(ms+flip): 50.4
Config: configs/fcn/fcn_r101-d8_480x480_40k_pascal_context_59.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101-d8_480x480_40k_pascal_context_59/fcn_r101-d8_480x480_40k_pascal_context_59_20210415_230724-8cf83682.pth
- Name: fcn_r101-d8_480x480_80k_pascal_context_59
In Collection: fcn
Metadata:
backbone: R-101-D8
crop size: (480,480)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Pascal Context 59
Metrics:
mIoU: 49.35
mIoU(ms+flip): 51.38
Config: configs/fcn/fcn_r101-d8_480x480_80k_pascal_context_59.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101-d8_480x480_80k_pascal_context_59/fcn_r101-d8_480x480_80k_pascal_context_59_20210416_110804-9a6f2c94.pth

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@ -1,699 +0,0 @@
Collections:
- Name: FCN
Metadata:
Training Data:
- Cityscapes
- Pascal Context
- Pascal VOC 2012 + Aug
- ADE20K
- Name: FCN-D6
Metadata:
Training Data:
- Cityscapes
- Pascal Context
- Pascal VOC 2012 + Aug
- ADE20K
Models:
- Name: fcn_r50-d8_512x1024_40k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 239.81
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 72.25
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r50-d8_512x1024_40k_cityscapes/fcn_r50-d8_512x1024_40k_cityscapes_20200604_192608-efe53f0d.pth
Config: configs/fcn/fcn_r50-d8_512x1024_40k_cityscapes.py
- Name: fcn_r101-d8_512x1024_40k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 375.94
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 75.45
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101-d8_512x1024_40k_cityscapes/fcn_r101-d8_512x1024_40k_cityscapes_20200604_181852-a883d3a1.pth
Config: configs/fcn/fcn_r101-d8_512x1024_40k_cityscapes.py
- Name: fcn_r50-d8_769x769_40k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 555.56
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 71.47
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r50-d8_769x769_40k_cityscapes/fcn_r50-d8_769x769_40k_cityscapes_20200606_113104-977b5d02.pth
Config: configs/fcn/fcn_r50-d8_769x769_40k_cityscapes.py
- Name: fcn_r101-d8_769x769_40k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 840.34
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 73.93
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101-d8_769x769_40k_cityscapes/fcn_r101-d8_769x769_40k_cityscapes_20200606_113208-7d4ab69c.pth
Config: configs/fcn/fcn_r101-d8_769x769_40k_cityscapes.py
- Name: fcn_r18-d8_512x1024_80k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 68.26
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 71.11
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r18-d8_512x1024_80k_cityscapes/fcn_r18-d8_512x1024_80k_cityscapes_20201225_021327-6c50f8b4.pth
Config: configs/fcn/fcn_r18-d8_512x1024_80k_cityscapes.py
- Name: fcn_r50-d8_512x1024_80k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 239.81
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 73.61
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r50-d8_512x1024_80k_cityscapes/fcn_r50-d8_512x1024_80k_cityscapes_20200606_113019-03aa804d.pth
Config: configs/fcn/fcn_r50-d8_512x1024_80k_cityscapes.py
- Name: fcn_r101-d8_512x1024_80k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 375.94
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 75.13
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101-d8_512x1024_80k_cityscapes/fcn_r101-d8_512x1024_80k_cityscapes_20200606_113038-3fb937eb.pth
Config: configs/fcn/fcn_r101-d8_512x1024_80k_cityscapes.py
- Name: fcn_r18-d8_769x769_80k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 156.25
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 70.80
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r18-d8_769x769_80k_cityscapes/fcn_r18-d8_769x769_80k_cityscapes_20201225_021451-9739d1b8.pth
Config: configs/fcn/fcn_r18-d8_769x769_80k_cityscapes.py
- Name: fcn_r50-d8_769x769_80k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 555.56
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 72.64
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r50-d8_769x769_80k_cityscapes/fcn_r50-d8_769x769_80k_cityscapes_20200606_195749-f5caeabc.pth
Config: configs/fcn/fcn_r50-d8_769x769_80k_cityscapes.py
- Name: fcn_r101-d8_769x769_80k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 840.34
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 75.52
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101-d8_769x769_80k_cityscapes/fcn_r101-d8_769x769_80k_cityscapes_20200606_214354-45cbac68.pth
Config: configs/fcn/fcn_r101-d8_769x769_80k_cityscapes.py
- Name: fcn_r18b-d8_512x1024_80k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 59.74
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 70.24
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r18b-d8_512x1024_80k_cityscapes/fcn_r18b-d8_512x1024_80k_cityscapes_20201225_230143-92c0f445.pth
Config: configs/fcn/fcn_r18b-d8_512x1024_80k_cityscapes.py
- Name: fcn_r50b-d8_512x1024_80k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 238.1
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 75.65
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r50b-d8_512x1024_80k_cityscapes/fcn_r50b-d8_512x1024_80k_cityscapes_20201225_094221-82957416.pth
Config: configs/fcn/fcn_r50b-d8_512x1024_80k_cityscapes.py
- Name: fcn_r101b-d8_512x1024_80k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 366.3
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.37
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101b-d8_512x1024_80k_cityscapes/fcn_r101b-d8_512x1024_80k_cityscapes_20201226_160213-4543858f.pth
Config: configs/fcn/fcn_r101b-d8_512x1024_80k_cityscapes.py
- Name: fcn_r18b-d8_769x769_80k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 149.25
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 69.66
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r18b-d8_769x769_80k_cityscapes/fcn_r18b-d8_769x769_80k_cityscapes_20201226_004430-32d504e5.pth
Config: configs/fcn/fcn_r18b-d8_769x769_80k_cityscapes.py
- Name: fcn_r50b-d8_769x769_80k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 549.45
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 73.83
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r50b-d8_769x769_80k_cityscapes/fcn_r50b-d8_769x769_80k_cityscapes_20201225_094223-94552d38.pth
Config: configs/fcn/fcn_r50b-d8_769x769_80k_cityscapes.py
- Name: fcn_r101b-d8_769x769_80k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 869.57
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.02
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101b-d8_769x769_80k_cityscapes/fcn_r101b-d8_769x769_80k_cityscapes_20201226_170012-82be37e2.pth
Config: configs/fcn/fcn_r101b-d8_769x769_80k_cityscapes.py
- Name: fcn_d6_r50-d16_512x1024_40k_cityscapes
In Collection: FCN-D6
Metadata:
inference time (ms/im):
- value: 97.85
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.06
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r50-d16_512x1024_40k_cityscapes/fcn_d6_r50-d16_512x1024_40k_cityscapes-98d5d1bc.pth
Config: configs/fcn-d6/fcn_d6_r50-d16_512x1024_40k_cityscapes.py
- Name: fcn_d6_r50-d16_512x1024_80k_cityscapes
In Collection: FCN-D6
Metadata:
inference time (ms/im):
- value: 96.62
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.27
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r50-d16_512x1024_80k_cityscapes/fcn_d6_r50-d16_512x1024_40k_cityscapes-98d5d1bc.pth
Config: configs/fcn-d6/fcn_d6_r50-d16_512x1024_80k_cityscapes.py
- Name: fcn_d6_r50-d16_769x769_40k_cityscapes
In Collection: FCN-D6
Metadata:
inference time (ms/im):
- value: 239.81
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.82
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r50-d16_769x769_40k_cityscapes/fcn_d6_r50-d16_769x769_40k_cityscapes-1aab18ed.pth
Config: configs/fcn-d6/fcn_d6_r50-d16_769x769_40k_cityscapes.py
- Name: fcn_d6_r50-d16_769x769_80k_cityscapes
In Collection: FCN-D6
Metadata:
inference time (ms/im):
- value: 240.96
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.04
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r50-d16_769x769_80k_cityscapes/fcn_d6_r50-d16_769x769_80k_cityscapes-109d88eb.pth
Config: configs/fcn-d6/fcn_d6_r50-d16_769x769_80k_cityscapes.py
- Name: fcn_d6_r101-d16_512x1024_40k_cityscapes
In Collection: FCN-D6
Metadata:
inference time (ms/im):
- value: 124.38
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.36
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r101-d16_512x1024_40k_cityscapes/fcn_d6_r101-d16_512x1024_40k_cityscapes-9cf2b450.pth
Config: configs/fcn-d6/fcn_d6_r101-d16_512x1024_40k_cityscapes.py
- Name: fcn_d6_r101-d16_512x1024_80k_cityscapes
In Collection: FCN-D6
Metadata:
inference time (ms/im):
- value: 121.07
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.46
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r101-d16_512x1024_80k_cityscapes/fcn_d6_r101-d16_512x1024_80k_cityscapes-cb336445.pth
Config: configs/fcn-d6/fcn_d6_r101-d16_512x1024_80k_cityscapes.py
- Name: fcn_d6_r101-d16_769x769_40k_cityscapes
In Collection: FCN-D6
Metadata:
inference time (ms/im):
- value: 320.51
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.28
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r101-d16_769x769_40k_cityscapes/fcn_d6_r101-d16_769x769_40k_cityscapes-60b114e9.pth
Config: configs/fcn-d6/fcn_d6_r101-d16_769x769_40k_cityscapes.py
- Name: fcn_d6_r101-d16_769x769_80k_cityscapes
In Collection: FCN-D6
Metadata:
inference time (ms/im):
- value: 311.53
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.06
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_d6_r101-d16_769x769_80k_cityscapes/fcn_d6_r101-d16_769x769_80k_cityscapes-e33adc4f.pth
Config: configs/fcn-d6/fcn_d6_r101-d16_769x769_80k_cityscapes.py
- Name: fcn_r50-d8_512x512_80k_ade20k
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 42.57
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 35.94
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r50-d8_512x512_80k_ade20k/fcn_r50-d8_512x512_80k_ade20k_20200614_144016-f8ac5082.pth
Config: configs/fcn/fcn_r50-d8_512x512_80k_ade20k.py
- Name: fcn_r101-d8_512x512_80k_ade20k
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 67.66
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 39.61
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101-d8_512x512_80k_ade20k/fcn_r101-d8_512x512_80k_ade20k_20200615_014143-bc1809f7.pth
Config: configs/fcn/fcn_r101-d8_512x512_80k_ade20k.py
- Name: fcn_r50-d8_512x512_160k_ade20k
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 42.57
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 36.10
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r50-d8_512x512_160k_ade20k/fcn_r50-d8_512x512_160k_ade20k_20200615_100713-4edbc3b4.pth
Config: configs/fcn/fcn_r50-d8_512x512_160k_ade20k.py
- Name: fcn_r101-d8_512x512_160k_ade20k
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 67.66
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 39.91
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101-d8_512x512_160k_ade20k/fcn_r101-d8_512x512_160k_ade20k_20200615_105816-fd192bd5.pth
Config: configs/fcn/fcn_r101-d8_512x512_160k_ade20k.py
- Name: fcn_r50-d8_512x512_20k_voc12aug
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 42.96
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 67.08
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r50-d8_512x512_20k_voc12aug/fcn_r50-d8_512x512_20k_voc12aug_20200617_010715-52dc5306.pth
Config: configs/fcn/fcn_r50-d8_512x512_20k_voc12aug.py
- Name: fcn_r101-d8_512x512_20k_voc12aug
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 67.52
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 71.16
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101-d8_512x512_20k_voc12aug/fcn_r101-d8_512x512_20k_voc12aug_20200617_010842-0bb4e798.pth
Config: configs/fcn/fcn_r101-d8_512x512_20k_voc12aug.py
- Name: fcn_r50-d8_512x512_40k_voc12aug
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 42.96
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 66.97
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r50-d8_512x512_40k_voc12aug/fcn_r50-d8_512x512_40k_voc12aug_20200613_161222-5e2dbf40.pth
Config: configs/fcn/fcn_r50-d8_512x512_40k_voc12aug.py
- Name: fcn_r101-d8_512x512_40k_voc12aug
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 67.52
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 69.91
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101-d8_512x512_40k_voc12aug/fcn_r101-d8_512x512_40k_voc12aug_20200613_161240-4c8bcefd.pth
Config: configs/fcn/fcn_r101-d8_512x512_40k_voc12aug.py
- Name: fcn_r101-d8_480x480_40k_pascal_context
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 100.7
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 44.43
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101-d8_480x480_40k_pascal_context/fcn_r101-d8_480x480_40k_pascal_context-20210421_154757-b5e97937.pth
Config: configs/fcn/fcn_r101-d8_480x480_40k_pascal_context.py
- Name: fcn_r101-d8_480x480_80k_pascal_context
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 100.7
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 44.13
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101-d8_480x480_80k_pascal_context/fcn_r101-d8_480x480_80k_pascal_context-20210421_163310-4711813f.pth
Config: configs/fcn/fcn_r101-d8_480x480_80k_pascal_context.py
- Name: fcn_r101-d8_480x480_40k_pascal_context_59
In Collection: FCN
Metadata:
inference time (ms/im):
- value: None
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 48.42
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101-d8_480x480_40k_pascal_context_59/fcn_r101-d8_480x480_40k_pascal_context_59_20210415_230724-8cf83682.pth
Config: configs/fcn/fcn_r101-d8_480x480_40k_pascal_context_59.py
- Name: fcn_r101-d8_480x480_80k_pascal_context_59
In Collection: FCN
Metadata:
inference time (ms/im):
- value: None
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 49.35
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fcn/fcn_r101-d8_480x480_80k_pascal_context_59/fcn_r101-d8_480x480_80k_pascal_context_59_20210416_110804-9a6f2c94.pth
Config: configs/fcn/fcn_r101-d8_480x480_80k_pascal_context_59.py

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Collections:
- Name: fp16
Metadata:
Training Data:
- Cityscapes
Models:
- Name: fcn_r101-d8_512x1024_80k_fp16_cityscapes
In Collection: fp16
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 115.74
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 5.37
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.8
Config: configs/fp16/fcn_r101-d8_512x1024_80k_fp16_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fp16/fcn_r101-d8_512x1024_80k_fp16_cityscapes/fcn_r101-d8_512x1024_80k_fp16_cityscapes-50245227.pth
- Name: pspnet_r101-d8_512x1024_80k_fp16_cityscapes
In Collection: fp16
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 114.03
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 5.34
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.46
Config: configs/fp16/pspnet_r101-d8_512x1024_80k_fp16_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fp16/pspnet_r101-d8_512x1024_80k_fp16_cityscapes/pspnet_r101-d8_512x1024_80k_fp16_cityscapes-ade37931.pth
- Name: deeplabv3_r101-d8_512x1024_80k_fp16_cityscapes
In Collection: fp16
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 259.07
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 5.75
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.48
Config: configs/fp16/deeplabv3_r101-d8_512x1024_80k_fp16_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fp16/deeplabv3_r101-d8_512x1024_80k_fp16_cityscapes/deeplabv3_r101-d8_512x1024_80k_fp16_cityscapes-bc86dc84.pth
- Name: deeplabv3plus_r101-d8_512x1024_80k_fp16_cityscapes
In Collection: fp16
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 127.06
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 6.35
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.46
Config: configs/fp16/deeplabv3plus_r101-d8_512x1024_80k_fp16_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fp16/deeplabv3plus_r101-d8_512x1024_80k_fp16_cityscapes/deeplabv3plus_r101-d8_512x1024_80k_fp16_cityscapes-cc58bc8d.pth

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Models:
- Name: fcn_r101-d8_512x1024_80k_fp16_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 115.74
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.80
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fp16/fcn_r101-d8_512x1024_80k_fp16_cityscapes/fcn_r101-d8_512x1024_80k_fp16_cityscapes-50245227.pth
Config: configs/fcn/fcn_r101-d8_512x1024_80k_fp16_cityscapes.py
- Name: pspnet_r101-d8_512x1024_80k_fp16_cityscapes
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 114.03
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.46
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fp16/pspnet_r101-d8_512x1024_80k_fp16_cityscapes/pspnet_r101-d8_512x1024_80k_fp16_cityscapes-ade37931.pth
Config: configs/pspnet/pspnet_r101-d8_512x1024_80k_fp16_cityscapes.py
- Name: deeplabv3_r101-d8_512x1024_80k_fp16_cityscapes
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 259.07
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.48
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fp16/deeplabv3_r101-d8_512x1024_80k_fp16_cityscapes/deeplabv3_r101-d8_512x1024_80k_fp16_cityscapes-bc86dc84.pth
Config: configs/deeplabv3/deeplabv3_r101-d8_512x1024_80k_fp16_cityscapes.py
- Name: deeplabv3plus_r101-d8_512x1024_80k_fp16_cityscapes
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 127.06
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.46
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/fp16/deeplabv3plus_r101-d8_512x1024_80k_fp16_cityscapes/deeplabv3plus_r101-d8_512x1024_80k_fp16_cityscapes-cc58bc8d.pth
Config: configs/deeplabv3+/deeplabv3plus_r101-d8_512x1024_80k_fp16_cityscapes.py

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Collections:
- Name: gcnet
Metadata:
Training Data:
- Cityscapes
- ADE20K
- Pascal VOC 2012 + Aug
Models:
- Name: gcnet_r50-d8_512x1024_40k_cityscapes
In Collection: gcnet
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 254.45
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 5.8
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.69
mIoU(ms+flip): 78.56
Config: configs/gcnet/gcnet_r50-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r50-d8_512x1024_40k_cityscapes/gcnet_r50-d8_512x1024_40k_cityscapes_20200618_074436-4b0fd17b.pth
- Name: gcnet_r101-d8_512x1024_40k_cityscapes
In Collection: gcnet
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 383.14
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 9.2
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.28
mIoU(ms+flip): 79.34
Config: configs/gcnet/gcnet_r101-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r101-d8_512x1024_40k_cityscapes/gcnet_r101-d8_512x1024_40k_cityscapes_20200618_074436-5e62567f.pth
- Name: gcnet_r50-d8_769x769_40k_cityscapes
In Collection: gcnet
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 598.8
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 6.5
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.12
mIoU(ms+flip): 80.09
Config: configs/gcnet/gcnet_r50-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r50-d8_769x769_40k_cityscapes/gcnet_r50-d8_769x769_40k_cityscapes_20200618_182814-a26f4471.pth
- Name: gcnet_r101-d8_769x769_40k_cityscapes
In Collection: gcnet
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 884.96
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 10.5
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.95
mIoU(ms+flip): 80.71
Config: configs/gcnet/gcnet_r101-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r101-d8_769x769_40k_cityscapes/gcnet_r101-d8_769x769_40k_cityscapes_20200619_092550-ca4f0a84.pth
- Name: gcnet_r50-d8_512x1024_80k_cityscapes
In Collection: gcnet
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.48
mIoU(ms+flip): 80.01
Config: configs/gcnet/gcnet_r50-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r50-d8_512x1024_80k_cityscapes/gcnet_r50-d8_512x1024_80k_cityscapes_20200618_074450-ef8f069b.pth
- Name: gcnet_r101-d8_512x1024_80k_cityscapes
In Collection: gcnet
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.03
mIoU(ms+flip): 79.84
Config: configs/gcnet/gcnet_r101-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r101-d8_512x1024_80k_cityscapes/gcnet_r101-d8_512x1024_80k_cityscapes_20200618_074450-778ebf69.pth
- Name: gcnet_r50-d8_769x769_80k_cityscapes
In Collection: gcnet
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.68
mIoU(ms+flip): 80.66
Config: configs/gcnet/gcnet_r50-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r50-d8_769x769_80k_cityscapes/gcnet_r50-d8_769x769_80k_cityscapes_20200619_092516-4839565b.pth
- Name: gcnet_r101-d8_769x769_80k_cityscapes
In Collection: gcnet
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.18
mIoU(ms+flip): 80.71
Config: configs/gcnet/gcnet_r101-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r101-d8_769x769_80k_cityscapes/gcnet_r101-d8_769x769_80k_cityscapes_20200619_092628-8e043423.pth
- Name: gcnet_r50-d8_512x512_80k_ade20k
In Collection: gcnet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 42.77
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 8.5
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 41.47
mIoU(ms+flip): 42.85
Config: configs/gcnet/gcnet_r50-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r50-d8_512x512_80k_ade20k/gcnet_r50-d8_512x512_80k_ade20k_20200614_185146-91a6da41.pth
- Name: gcnet_r101-d8_512x512_80k_ade20k
In Collection: gcnet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 65.79
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 12.0
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.82
mIoU(ms+flip): 44.54
Config: configs/gcnet/gcnet_r101-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r101-d8_512x512_80k_ade20k/gcnet_r101-d8_512x512_80k_ade20k_20200615_020811-c3fcb6dd.pth
- Name: gcnet_r50-d8_512x512_160k_ade20k
In Collection: gcnet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.37
mIoU(ms+flip): 43.52
Config: configs/gcnet/gcnet_r50-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r50-d8_512x512_160k_ade20k/gcnet_r50-d8_512x512_160k_ade20k_20200615_224122-d95f3e1f.pth
- Name: gcnet_r101-d8_512x512_160k_ade20k
In Collection: gcnet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.69
mIoU(ms+flip): 45.21
Config: configs/gcnet/gcnet_r101-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r101-d8_512x512_160k_ade20k/gcnet_r101-d8_512x512_160k_ade20k_20200615_225406-615528d7.pth
- Name: gcnet_r50-d8_512x512_20k_voc12aug
In Collection: gcnet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 42.83
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 5.8
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.42
mIoU(ms+flip): 77.51
Config: configs/gcnet/gcnet_r50-d8_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r50-d8_512x512_20k_voc12aug/gcnet_r50-d8_512x512_20k_voc12aug_20200617_165701-3cbfdab1.pth
- Name: gcnet_r101-d8_512x512_20k_voc12aug
In Collection: gcnet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 67.57
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 9.2
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.41
mIoU(ms+flip): 78.56
Config: configs/gcnet/gcnet_r101-d8_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r101-d8_512x512_20k_voc12aug/gcnet_r101-d8_512x512_20k_voc12aug_20200617_165713-6c720aa9.pth
- Name: gcnet_r50-d8_512x512_40k_voc12aug
In Collection: gcnet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.24
mIoU(ms+flip): 77.63
Config: configs/gcnet/gcnet_r50-d8_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r50-d8_512x512_40k_voc12aug/gcnet_r50-d8_512x512_40k_voc12aug_20200613_195105-9797336d.pth
- Name: gcnet_r101-d8_512x512_40k_voc12aug
In Collection: gcnet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.84
mIoU(ms+flip): 78.59
Config: configs/gcnet/gcnet_r101-d8_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r101-d8_512x512_40k_voc12aug/gcnet_r101-d8_512x512_40k_voc12aug_20200613_185806-1e38208d.pth

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@ -1,311 +0,0 @@
Collections:
- Name: GCNet
Metadata:
Training Data:
- Cityscapes
- Pascal VOC 2012 + Aug
- ADE20K
Models:
- Name: gcnet_r50-d8_512x1024_40k_cityscapes
In Collection: GCNet
Metadata:
inference time (ms/im):
- value: 254.45
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.69
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r50-d8_512x1024_40k_cityscapes/gcnet_r50-d8_512x1024_40k_cityscapes_20200618_074436-4b0fd17b.pth
Config: configs/gcnet/gcnet_r50-d8_512x1024_40k_cityscapes.py
- Name: gcnet_r101-d8_512x1024_40k_cityscapes
In Collection: GCNet
Metadata:
inference time (ms/im):
- value: 383.14
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.28
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r101-d8_512x1024_40k_cityscapes/gcnet_r101-d8_512x1024_40k_cityscapes_20200618_074436-5e62567f.pth
Config: configs/gcnet/gcnet_r101-d8_512x1024_40k_cityscapes.py
- Name: gcnet_r50-d8_769x769_40k_cityscapes
In Collection: GCNet
Metadata:
inference time (ms/im):
- value: 598.8
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.12
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r50-d8_769x769_40k_cityscapes/gcnet_r50-d8_769x769_40k_cityscapes_20200618_182814-a26f4471.pth
Config: configs/gcnet/gcnet_r50-d8_769x769_40k_cityscapes.py
- Name: gcnet_r101-d8_769x769_40k_cityscapes
In Collection: GCNet
Metadata:
inference time (ms/im):
- value: 884.96
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.95
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r101-d8_769x769_40k_cityscapes/gcnet_r101-d8_769x769_40k_cityscapes_20200619_092550-ca4f0a84.pth
Config: configs/gcnet/gcnet_r101-d8_769x769_40k_cityscapes.py
- Name: gcnet_r50-d8_512x1024_80k_cityscapes
In Collection: GCNet
Metadata:
inference time (ms/im):
- value: 254.45
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.48
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r50-d8_512x1024_80k_cityscapes/gcnet_r50-d8_512x1024_80k_cityscapes_20200618_074450-ef8f069b.pth
Config: configs/gcnet/gcnet_r50-d8_512x1024_80k_cityscapes.py
- Name: gcnet_r101-d8_512x1024_80k_cityscapes
In Collection: GCNet
Metadata:
inference time (ms/im):
- value: 383.14
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.03
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r101-d8_512x1024_80k_cityscapes/gcnet_r101-d8_512x1024_80k_cityscapes_20200618_074450-778ebf69.pth
Config: configs/gcnet/gcnet_r101-d8_512x1024_80k_cityscapes.py
- Name: gcnet_r50-d8_769x769_80k_cityscapes
In Collection: GCNet
Metadata:
inference time (ms/im):
- value: 598.8
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.68
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r50-d8_769x769_80k_cityscapes/gcnet_r50-d8_769x769_80k_cityscapes_20200619_092516-4839565b.pth
Config: configs/gcnet/gcnet_r50-d8_769x769_80k_cityscapes.py
- Name: gcnet_r101-d8_769x769_80k_cityscapes
In Collection: GCNet
Metadata:
inference time (ms/im):
- value: 884.96
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.18
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r101-d8_769x769_80k_cityscapes/gcnet_r101-d8_769x769_80k_cityscapes_20200619_092628-8e043423.pth
Config: configs/gcnet/gcnet_r101-d8_769x769_80k_cityscapes.py
- Name: gcnet_r50-d8_512x512_80k_ade20k
In Collection: GCNet
Metadata:
inference time (ms/im):
- value: 42.77
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 41.47
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r50-d8_512x512_80k_ade20k/gcnet_r50-d8_512x512_80k_ade20k_20200614_185146-91a6da41.pth
Config: configs/gcnet/gcnet_r50-d8_512x512_80k_ade20k.py
- Name: gcnet_r101-d8_512x512_80k_ade20k
In Collection: GCNet
Metadata:
inference time (ms/im):
- value: 65.79
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.82
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r101-d8_512x512_80k_ade20k/gcnet_r101-d8_512x512_80k_ade20k_20200615_020811-c3fcb6dd.pth
Config: configs/gcnet/gcnet_r101-d8_512x512_80k_ade20k.py
- Name: gcnet_r50-d8_512x512_160k_ade20k
In Collection: GCNet
Metadata:
inference time (ms/im):
- value: 42.77
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.37
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r50-d8_512x512_160k_ade20k/gcnet_r50-d8_512x512_160k_ade20k_20200615_224122-d95f3e1f.pth
Config: configs/gcnet/gcnet_r50-d8_512x512_160k_ade20k.py
- Name: gcnet_r101-d8_512x512_160k_ade20k
In Collection: GCNet
Metadata:
inference time (ms/im):
- value: 65.79
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.69
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r101-d8_512x512_160k_ade20k/gcnet_r101-d8_512x512_160k_ade20k_20200615_225406-615528d7.pth
Config: configs/gcnet/gcnet_r101-d8_512x512_160k_ade20k.py
- Name: gcnet_r50-d8_512x512_20k_voc12aug
In Collection: GCNet
Metadata:
inference time (ms/im):
- value: 42.83
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.42
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r50-d8_512x512_20k_voc12aug/gcnet_r50-d8_512x512_20k_voc12aug_20200617_165701-3cbfdab1.pth
Config: configs/gcnet/gcnet_r50-d8_512x512_20k_voc12aug.py
- Name: gcnet_r101-d8_512x512_20k_voc12aug
In Collection: GCNet
Metadata:
inference time (ms/im):
- value: 67.57
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.41
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r101-d8_512x512_20k_voc12aug/gcnet_r101-d8_512x512_20k_voc12aug_20200617_165713-6c720aa9.pth
Config: configs/gcnet/gcnet_r101-d8_512x512_20k_voc12aug.py
- Name: gcnet_r50-d8_512x512_40k_voc12aug
In Collection: GCNet
Metadata:
inference time (ms/im):
- value: 42.83
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.24
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r50-d8_512x512_40k_voc12aug/gcnet_r50-d8_512x512_40k_voc12aug_20200613_195105-9797336d.pth
Config: configs/gcnet/gcnet_r50-d8_512x512_40k_voc12aug.py
- Name: gcnet_r101-d8_512x512_40k_voc12aug
In Collection: GCNet
Metadata:
inference time (ms/im):
- value: 67.57
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.84
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/gcnet/gcnet_r101-d8_512x512_40k_voc12aug/gcnet_r101-d8_512x512_40k_voc12aug_20200613_185806-1e38208d.pth
Config: configs/gcnet/gcnet_r101-d8_512x512_40k_voc12aug.py

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configs/hrnet/hrnet.yml Normal file
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Collections:
- Name: hrnet
Metadata:
Training Data:
- Cityscapes
- ADE20K
- Pascal VOC 2012 + Aug
- Pascal Context
- Pascal Context 59
Models:
- Name: fcn_hr18s_512x1024_40k_cityscapes
In Collection: hrnet
Metadata:
backbone: HRNetV2p-W18-Small
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 42.12
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 1.7
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 73.86
mIoU(ms+flip): 75.91
Config: configs/hrnet/fcn_hr18s_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18s_512x1024_40k_cityscapes/fcn_hr18s_512x1024_40k_cityscapes_20200601_014216-93db27d0.pth
- Name: fcn_hr18_512x1024_40k_cityscapes
In Collection: hrnet
Metadata:
backbone: HRNetV2p-W18
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 77.1
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 2.9
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.19
mIoU(ms+flip): 78.92
Config: configs/hrnet/fcn_hr18_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18_512x1024_40k_cityscapes/fcn_hr18_512x1024_40k_cityscapes_20200601_014216-f196fb4e.pth
- Name: fcn_hr48_512x1024_40k_cityscapes
In Collection: hrnet
Metadata:
backbone: HRNetV2p-W48
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 155.76
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 6.2
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.48
mIoU(ms+flip): 79.69
Config: configs/hrnet/fcn_hr48_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr48_512x1024_40k_cityscapes/fcn_hr48_512x1024_40k_cityscapes_20200601_014240-a989b146.pth
- Name: fcn_hr18s_512x1024_80k_cityscapes
In Collection: hrnet
Metadata:
backbone: HRNetV2p-W18-Small
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 75.31
mIoU(ms+flip): 77.48
Config: configs/hrnet/fcn_hr18s_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18s_512x1024_80k_cityscapes/fcn_hr18s_512x1024_80k_cityscapes_20200601_202700-1462b75d.pth
- Name: fcn_hr18_512x1024_80k_cityscapes
In Collection: hrnet
Metadata:
backbone: HRNetV2p-W18
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.65
mIoU(ms+flip): 80.35
Config: configs/hrnet/fcn_hr18_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18_512x1024_80k_cityscapes/fcn_hr18_512x1024_80k_cityscapes_20200601_223255-4e7b345e.pth
- Name: fcn_hr48_512x1024_80k_cityscapes
In Collection: hrnet
Metadata:
backbone: HRNetV2p-W48
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.93
mIoU(ms+flip): 80.72
Config: configs/hrnet/fcn_hr48_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr48_512x1024_80k_cityscapes/fcn_hr48_512x1024_80k_cityscapes_20200601_202606-58ea95d6.pth
- Name: fcn_hr18s_512x1024_160k_cityscapes
In Collection: hrnet
Metadata:
backbone: HRNetV2p-W18-Small
crop size: (512,1024)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.31
mIoU(ms+flip): 78.31
Config: configs/hrnet/fcn_hr18s_512x1024_160k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18s_512x1024_160k_cityscapes/fcn_hr18s_512x1024_160k_cityscapes_20200602_190901-4a0797ea.pth
- Name: fcn_hr18_512x1024_160k_cityscapes
In Collection: hrnet
Metadata:
backbone: HRNetV2p-W18
crop size: (512,1024)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.8
mIoU(ms+flip): 80.74
Config: configs/hrnet/fcn_hr18_512x1024_160k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18_512x1024_160k_cityscapes/fcn_hr18_512x1024_160k_cityscapes_20200602_190822-221e4a4f.pth
- Name: fcn_hr48_512x1024_160k_cityscapes
In Collection: hrnet
Metadata:
backbone: HRNetV2p-W48
crop size: (512,1024)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.65
mIoU(ms+flip): 81.92
Config: configs/hrnet/fcn_hr48_512x1024_160k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr48_512x1024_160k_cityscapes/fcn_hr48_512x1024_160k_cityscapes_20200602_190946-59b7973e.pth
- Name: fcn_hr18s_512x512_80k_ade20k
In Collection: hrnet
Metadata:
backbone: HRNetV2p-W18-Small
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 25.87
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 3.8
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 31.38
mIoU(ms+flip): 32.45
Config: configs/hrnet/fcn_hr18s_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18s_512x512_80k_ade20k/fcn_hr18s_512x512_80k_ade20k_20200614_144345-77fc814a.pth
- Name: fcn_hr18_512x512_80k_ade20k
In Collection: hrnet
Metadata:
backbone: HRNetV2p-W18
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 44.31
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 4.9
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 35.51
mIoU(ms+flip): 36.8
Config: configs/hrnet/fcn_hr18_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18_512x512_80k_ade20k/fcn_hr18_512x512_80k_ade20k_20200614_185145-66f20cb7.pth
- Name: fcn_hr48_512x512_80k_ade20k
In Collection: hrnet
Metadata:
backbone: HRNetV2p-W48
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 47.1
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 8.2
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 41.9
mIoU(ms+flip): 43.27
Config: configs/hrnet/fcn_hr48_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr48_512x512_80k_ade20k/fcn_hr48_512x512_80k_ade20k_20200614_193946-7ba5258d.pth
- Name: fcn_hr18s_512x512_160k_ade20k
In Collection: hrnet
Metadata:
backbone: HRNetV2p-W18-Small
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 33.0
mIoU(ms+flip): 34.55
Config: configs/hrnet/fcn_hr18s_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18s_512x512_160k_ade20k/fcn_hr18s_512x512_160k_ade20k_20200614_214413-870f65ac.pth
- Name: fcn_hr18_512x512_160k_ade20k
In Collection: hrnet
Metadata:
backbone: HRNetV2p-W18
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 36.79
mIoU(ms+flip): 38.58
Config: configs/hrnet/fcn_hr18_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18_512x512_160k_ade20k/fcn_hr18_512x512_160k_ade20k_20200614_214426-ca961836.pth
- Name: fcn_hr48_512x512_160k_ade20k
In Collection: hrnet
Metadata:
backbone: HRNetV2p-W48
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.02
mIoU(ms+flip): 43.86
Config: configs/hrnet/fcn_hr48_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr48_512x512_160k_ade20k/fcn_hr48_512x512_160k_ade20k_20200614_214407-a52fc02c.pth
- Name: fcn_hr18s_512x512_20k_voc12aug
In Collection: hrnet
Metadata:
backbone: HRNetV2p-W18-Small
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 23.06
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 1.8
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 65.2
mIoU(ms+flip): 68.55
Config: configs/hrnet/fcn_hr18s_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18s_512x512_20k_voc12aug/fcn_hr18s_512x512_20k_voc12aug_20200617_224503-56e36088.pth
- Name: fcn_hr18_512x512_20k_voc12aug
In Collection: hrnet
Metadata:
backbone: HRNetV2p-W18
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 42.59
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 2.9
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 72.3
mIoU(ms+flip): 74.71
Config: configs/hrnet/fcn_hr18_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18_512x512_20k_voc12aug/fcn_hr18_512x512_20k_voc12aug_20200617_224503-488d45f7.pth
- Name: fcn_hr48_512x512_20k_voc12aug
In Collection: hrnet
Metadata:
backbone: HRNetV2p-W48
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 45.35
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 6.2
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 75.87
mIoU(ms+flip): 78.58
Config: configs/hrnet/fcn_hr48_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr48_512x512_20k_voc12aug/fcn_hr48_512x512_20k_voc12aug_20200617_224419-89de05cd.pth
- Name: fcn_hr18s_512x512_40k_voc12aug
In Collection: hrnet
Metadata:
backbone: HRNetV2p-W18-Small
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 66.61
mIoU(ms+flip): 70.0
Config: configs/hrnet/fcn_hr18s_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18s_512x512_40k_voc12aug/fcn_hr18s_512x512_40k_voc12aug_20200614_000648-4f8d6e7f.pth
- Name: fcn_hr18_512x512_40k_voc12aug
In Collection: hrnet
Metadata:
backbone: HRNetV2p-W18
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 72.9
mIoU(ms+flip): 75.59
Config: configs/hrnet/fcn_hr18_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18_512x512_40k_voc12aug/fcn_hr18_512x512_40k_voc12aug_20200613_224401-1b4b76cd.pth
- Name: fcn_hr48_512x512_40k_voc12aug
In Collection: hrnet
Metadata:
backbone: HRNetV2p-W48
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.24
mIoU(ms+flip): 78.49
Config: configs/hrnet/fcn_hr48_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr48_512x512_40k_voc12aug/fcn_hr48_512x512_40k_voc12aug_20200613_222111-1b0f18bc.pth
- Name: fcn_hr48_480x480_40k_pascal_context
In Collection: hrnet
Metadata:
backbone: HRNetV2p-W48
crop size: (480,480)
lr schd: 40000
inference time (ms/im):
- value: 112.87
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (480,480)
memory (GB): 6.1
Results:
Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 45.14
mIoU(ms+flip): 47.42
Config: configs/hrnet/fcn_hr48_480x480_40k_pascal_context.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr48_480x480_40k_pascal_context/fcn_hr48_480x480_40k_pascal_context_20200911_164852-667d00b0.pth
- Name: fcn_hr48_480x480_80k_pascal_context
In Collection: hrnet
Metadata:
backbone: HRNetV2p-W48
crop size: (480,480)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 45.84
mIoU(ms+flip): 47.84
Config: configs/hrnet/fcn_hr48_480x480_80k_pascal_context.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr48_480x480_80k_pascal_context/fcn_hr48_480x480_80k_pascal_context_20200911_155322-847a6711.pth
- Name: fcn_hr48_480x480_40k_pascal_context_59
In Collection: hrnet
Metadata:
backbone: HRNetV2p-W48
crop size: (480,480)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal Context 59
Metrics:
mIoU: 50.33
mIoU(ms+flip): 52.83
Config: configs/hrnet/fcn_hr48_480x480_40k_pascal_context_59.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr48_480x480_40k_pascal_context_59/fcn_hr48_480x480_40k_pascal_context_59_20210410_122738-b808b8b2.pth
- Name: fcn_hr48_480x480_80k_pascal_context_59
In Collection: hrnet
Metadata:
backbone: HRNetV2p-W48
crop size: (480,480)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Pascal Context 59
Metrics:
mIoU: 51.12
mIoU(ms+flip): 53.56
Config: configs/hrnet/fcn_hr48_480x480_80k_pascal_context_59.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr48_480x480_80k_pascal_context_59/fcn_hr48_480x480_80k_pascal_context_59_20210411_003240-3ae7081e.pth

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@ -1,473 +0,0 @@
Models:
- Name: fcn_hr18s_512x1024_40k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 42.12
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 73.86
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18s_512x1024_40k_cityscapes/fcn_hr18s_512x1024_40k_cityscapes_20200601_014216-93db27d0.pth
Config: configs/fcn/fcn_hr18s_512x1024_40k_cityscapes.py
- Name: fcn_hr18_512x1024_40k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 77.1
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.19
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18_512x1024_40k_cityscapes/fcn_hr18_512x1024_40k_cityscapes_20200601_014216-f196fb4e.pth
Config: configs/fcn/fcn_hr18_512x1024_40k_cityscapes.py
- Name: fcn_hr48_512x1024_40k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 155.76
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.48
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr48_512x1024_40k_cityscapes/fcn_hr48_512x1024_40k_cityscapes_20200601_014240-a989b146.pth
Config: configs/fcn/fcn_hr48_512x1024_40k_cityscapes.py
- Name: fcn_hr18s_512x1024_80k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 42.12
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 75.31
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18s_512x1024_80k_cityscapes/fcn_hr18s_512x1024_80k_cityscapes_20200601_202700-1462b75d.pth
Config: configs/fcn/fcn_hr18s_512x1024_80k_cityscapes.py
- Name: fcn_hr18_512x1024_80k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 77.1
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.65
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18_512x1024_80k_cityscapes/fcn_hr18_512x1024_80k_cityscapes_20200601_223255-4e7b345e.pth
Config: configs/fcn/fcn_hr18_512x1024_80k_cityscapes.py
- Name: fcn_hr48_512x1024_80k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 155.76
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.93
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr48_512x1024_80k_cityscapes/fcn_hr48_512x1024_80k_cityscapes_20200601_202606-58ea95d6.pth
Config: configs/fcn/fcn_hr48_512x1024_80k_cityscapes.py
- Name: fcn_hr18s_512x1024_160k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 42.12
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.31
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18s_512x1024_160k_cityscapes/fcn_hr18s_512x1024_160k_cityscapes_20200602_190901-4a0797ea.pth
Config: configs/fcn/fcn_hr18s_512x1024_160k_cityscapes.py
- Name: fcn_hr18_512x1024_160k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 77.1
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.80
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18_512x1024_160k_cityscapes/fcn_hr18_512x1024_160k_cityscapes_20200602_190822-221e4a4f.pth
Config: configs/fcn/fcn_hr18_512x1024_160k_cityscapes.py
- Name: fcn_hr48_512x1024_160k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 155.76
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.65
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr48_512x1024_160k_cityscapes/fcn_hr48_512x1024_160k_cityscapes_20200602_190946-59b7973e.pth
Config: configs/fcn/fcn_hr48_512x1024_160k_cityscapes.py
- Name: fcn_hr18s_512x512_80k_ade20k
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 25.87
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 31.38
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18s_512x512_80k_ade20k/fcn_hr18s_512x512_80k_ade20k_20200614_144345-77fc814a.pth
Config: configs/fcn/fcn_hr18s_512x512_80k_ade20k.py
- Name: fcn_hr18_512x512_80k_ade20k
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 44.31
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 35.51
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18_512x512_80k_ade20k/fcn_hr18_512x512_80k_ade20k_20200614_185145-66f20cb7.pth
Config: configs/fcn/fcn_hr18_512x512_80k_ade20k.py
- Name: fcn_hr48_512x512_80k_ade20k
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 47.1
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 41.90
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr48_512x512_80k_ade20k/fcn_hr48_512x512_80k_ade20k_20200614_193946-7ba5258d.pth
Config: configs/fcn/fcn_hr48_512x512_80k_ade20k.py
- Name: fcn_hr18s_512x512_160k_ade20k
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 25.87
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 33.00
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18s_512x512_160k_ade20k/fcn_hr18s_512x512_160k_ade20k_20200614_214413-870f65ac.pth
Config: configs/fcn/fcn_hr18s_512x512_160k_ade20k.py
- Name: fcn_hr18_512x512_160k_ade20k
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 44.31
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 36.79
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18_512x512_160k_ade20k/fcn_hr18_512x512_160k_ade20k_20200614_214426-ca961836.pth
Config: configs/fcn/fcn_hr18_512x512_160k_ade20k.py
- Name: fcn_hr48_512x512_160k_ade20k
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 47.1
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.02
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr48_512x512_160k_ade20k/fcn_hr48_512x512_160k_ade20k_20200614_214407-a52fc02c.pth
Config: configs/fcn/fcn_hr48_512x512_160k_ade20k.py
- Name: fcn_hr18s_512x512_20k_voc12aug
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 23.06
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 65.20
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18s_512x512_20k_voc12aug/fcn_hr18s_512x512_20k_voc12aug_20200617_224503-56e36088.pth
Config: configs/fcn/fcn_hr18s_512x512_20k_voc12aug.py
- Name: fcn_hr18_512x512_20k_voc12aug
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 42.59
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 72.30
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18_512x512_20k_voc12aug/fcn_hr18_512x512_20k_voc12aug_20200617_224503-488d45f7.pth
Config: configs/fcn/fcn_hr18_512x512_20k_voc12aug.py
- Name: fcn_hr48_512x512_20k_voc12aug
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 45.35
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 75.87
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr48_512x512_20k_voc12aug/fcn_hr48_512x512_20k_voc12aug_20200617_224419-89de05cd.pth
Config: configs/fcn/fcn_hr48_512x512_20k_voc12aug.py
- Name: fcn_hr18s_512x512_40k_voc12aug
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 23.06
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 66.61
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18s_512x512_40k_voc12aug/fcn_hr18s_512x512_40k_voc12aug_20200614_000648-4f8d6e7f.pth
Config: configs/fcn/fcn_hr18s_512x512_40k_voc12aug.py
- Name: fcn_hr18_512x512_40k_voc12aug
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 42.59
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 72.90
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr18_512x512_40k_voc12aug/fcn_hr18_512x512_40k_voc12aug_20200613_224401-1b4b76cd.pth
Config: configs/fcn/fcn_hr18_512x512_40k_voc12aug.py
- Name: fcn_hr48_512x512_40k_voc12aug
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 45.35
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.24
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr48_512x512_40k_voc12aug/fcn_hr48_512x512_40k_voc12aug_20200613_222111-1b0f18bc.pth
Config: configs/fcn/fcn_hr48_512x512_40k_voc12aug.py
- Name: fcn_hr48_480x480_40k_pascal_context
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 112.87
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 45.14
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr48_480x480_40k_pascal_context/fcn_hr48_480x480_40k_pascal_context_20200911_164852-667d00b0.pth
Config: configs/fcn/fcn_hr48_480x480_40k_pascal_context.py
- Name: fcn_hr48_480x480_80k_pascal_context
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 112.87
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 45.84
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr48_480x480_80k_pascal_context/fcn_hr48_480x480_80k_pascal_context_20200911_155322-847a6711.pth
Config: configs/fcn/fcn_hr48_480x480_80k_pascal_context.py
- Name: fcn_hr48_480x480_40k_pascal_context_59
In Collection: FCN
Metadata:
inference time (ms/im):
- value: None
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 50.33
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr48_480x480_40k_pascal_context_59/fcn_hr48_480x480_40k_pascal_context_59_20210410_122738-b808b8b2.pth
Config: configs/fcn/fcn_hr48_480x480_40k_pascal_context_59.py
- Name: fcn_hr48_480x480_80k_pascal_context
In Collection: FCN
Metadata:
inference time (ms/im):
- value: None
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 51.12
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/hrnet/fcn_hr48_480x480_80k_pascal_context_59/fcn_hr48_480x480_80k_pascal_context_59_20210411_003240-3ae7081e.pth
Config: configs/fcn/fcn_hr48_480x480_80k_pascal_context.py

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@ -1,152 +0,0 @@
Models:
- Name: fcn_m-v2-d8_512x1024_80k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 70.42
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 61.54
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/mobilenet_v2/fcn_m-v2-d8_512x1024_80k_cityscapes/fcn_m-v2-d8_512x1024_80k_cityscapes_20200825_124817-d24c28c1.pth
Config: configs/fcn/fcn_m-v2-d8_512x1024_80k_cityscapes.py
- Name: pspnet_m-v2-d8_512x1024_80k_cityscapes
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 89.29
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 70.23
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/mobilenet_v2/pspnet_m-v2-d8_512x1024_80k_cityscapes/pspnet_m-v2-d8_512x1024_80k_cityscapes_20200825_124817-19e81d51.pth
Config: configs/pspnet/pspnet_m-v2-d8_512x1024_80k_cityscapes.py
- Name: deeplabv3_m-v2-d8_512x1024_80k_cityscapes
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 119.05
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 73.84
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/mobilenet_v2/deeplabv3_m-v2-d8_512x1024_80k_cityscapes/deeplabv3_m-v2-d8_512x1024_80k_cityscapes_20200825_124836-bef03590.pth
Config: configs/deeplabv3/deeplabv3_m-v2-d8_512x1024_80k_cityscapes.py
- Name: deeplabv3plus_m-v2-d8_512x1024_80k_cityscapes
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 119.05
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 75.20
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/mobilenet_v2/deeplabv3plus_m-v2-d8_512x1024_80k_cityscapes/deeplabv3plus_m-v2-d8_512x1024_80k_cityscapes_20200825_124836-d256dd4b.pth
Config: configs/deeplabv3+/deeplabv3plus_m-v2-d8_512x1024_80k_cityscapes.py
- Name: fcn_m-v2-d8_512x512_160k_ade20k
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 15.53
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 19.71
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/mobilenet_v2/fcn_m-v2-d8_512x512_160k_ade20k/fcn_m-v2-d8_512x512_160k_ade20k_20200825_214953-c40e1095.pth
Config: configs/fcn/fcn_m-v2-d8_512x512_160k_ade20k.py
- Name: pspnet_m-v2-d8_512x512_160k_ade20k
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 17.33
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 29.68
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/mobilenet_v2/pspnet_m-v2-d8_512x512_160k_ade20k/pspnet_m-v2-d8_512x512_160k_ade20k_20200825_214953-f5942f7a.pth
Config: configs/pspnet/pspnet_m-v2-d8_512x512_160k_ade20k.py
- Name: deeplabv3_m-v2-d8_512x512_160k_ade20k
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 25.06
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 34.08
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/mobilenet_v2/deeplabv3_m-v2-d8_512x512_160k_ade20k/deeplabv3_m-v2-d8_512x512_160k_ade20k_20200825_223255-63986343.pth
Config: configs/deeplabv3/deeplabv3_m-v2-d8_512x512_160k_ade20k.py
- Name: deeplabv3plus_m-v2-d8_512x512_160k_ade20k
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 23.2
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 34.02
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/mobilenet_v2/deeplabv3plus_m-v2-d8_512x512_160k_ade20k/deeplabv3plus_m-v2-d8_512x512_160k_ade20k_20200825_223255-465a01d4.pth
Config: configs/deeplabv3+/deeplabv3plus_m-v2-d8_512x512_160k_ade20k.py

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Collections:
- Name: mobilenet_v2
Metadata:
Training Data:
- Cityscapes
- ADE20k
Models:
- Name: fcn_m-v2-d8_512x1024_80k_cityscapes
In Collection: mobilenet_v2
Metadata:
backbone: M-V2-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 70.42
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 3.4
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 61.54
Config: configs/mobilenet_v2/fcn_m-v2-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/mobilenet_v2/fcn_m-v2-d8_512x1024_80k_cityscapes/fcn_m-v2-d8_512x1024_80k_cityscapes_20200825_124817-d24c28c1.pth
- Name: pspnet_m-v2-d8_512x1024_80k_cityscapes
In Collection: mobilenet_v2
Metadata:
backbone: M-V2-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 89.29
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 3.6
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 70.23
Config: configs/mobilenet_v2/pspnet_m-v2-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/mobilenet_v2/pspnet_m-v2-d8_512x1024_80k_cityscapes/pspnet_m-v2-d8_512x1024_80k_cityscapes_20200825_124817-19e81d51.pth
- Name: deeplabv3_m-v2-d8_512x1024_80k_cityscapes
In Collection: mobilenet_v2
Metadata:
backbone: M-V2-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 119.05
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 3.9
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 73.84
Config: configs/mobilenet_v2/deeplabv3_m-v2-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/mobilenet_v2/deeplabv3_m-v2-d8_512x1024_80k_cityscapes/deeplabv3_m-v2-d8_512x1024_80k_cityscapes_20200825_124836-bef03590.pth
- Name: deeplabv3plus_m-v2-d8_512x1024_80k_cityscapes
In Collection: mobilenet_v2
Metadata:
backbone: M-V2-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 119.05
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 5.1
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 75.2
Config: configs/mobilenet_v2/deeplabv3plus_m-v2-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/mobilenet_v2/deeplabv3plus_m-v2-d8_512x1024_80k_cityscapes/deeplabv3plus_m-v2-d8_512x1024_80k_cityscapes_20200825_124836-d256dd4b.pth
- Name: fcn_m-v2-d8_512x512_160k_ade20k
In Collection: mobilenet_v2
Metadata:
backbone: M-V2-D8
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 15.53
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 6.5
Results:
Task: Semantic Segmentation
Dataset: ADE20k
Metrics:
mIoU: 19.71
Config: configs/mobilenet_v2/fcn_m-v2-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/mobilenet_v2/fcn_m-v2-d8_512x512_160k_ade20k/fcn_m-v2-d8_512x512_160k_ade20k_20200825_214953-c40e1095.pth
- Name: pspnet_m-v2-d8_512x512_160k_ade20k
In Collection: mobilenet_v2
Metadata:
backbone: M-V2-D8
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 17.33
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 6.5
Results:
Task: Semantic Segmentation
Dataset: ADE20k
Metrics:
mIoU: 29.68
Config: configs/mobilenet_v2/pspnet_m-v2-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/mobilenet_v2/pspnet_m-v2-d8_512x512_160k_ade20k/pspnet_m-v2-d8_512x512_160k_ade20k_20200825_214953-f5942f7a.pth
- Name: deeplabv3_m-v2-d8_512x512_160k_ade20k
In Collection: mobilenet_v2
Metadata:
backbone: M-V2-D8
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 25.06
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 6.8
Results:
Task: Semantic Segmentation
Dataset: ADE20k
Metrics:
mIoU: 34.08
Config: configs/mobilenet_v2/deeplabv3_m-v2-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/mobilenet_v2/deeplabv3_m-v2-d8_512x512_160k_ade20k/deeplabv3_m-v2-d8_512x512_160k_ade20k_20200825_223255-63986343.pth
- Name: deeplabv3plus_m-v2-d8_512x512_160k_ade20k
In Collection: mobilenet_v2
Metadata:
backbone: M-V2-D8
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 23.2
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 8.2
Results:
Task: Semantic Segmentation
Dataset: ADE20k
Metrics:
mIoU: 34.02
Config: configs/mobilenet_v2/deeplabv3plus_m-v2-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/mobilenet_v2/deeplabv3plus_m-v2-d8_512x512_160k_ade20k/deeplabv3plus_m-v2-d8_512x512_160k_ade20k_20200825_223255-465a01d4.pth

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@ -1,81 +0,0 @@
Collections:
- Name: LRASPP
Metadata:
Training Data:
- Cityscapes
Models:
- Name: lraspp_m-v3-d8_512x1024_320k_cityscapes
In Collection: LRASPP
Metadata:
inference time (ms/im):
- value: 65.7
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 69.54
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/mobilenet_v3/lraspp_m-v3-d8_512x1024_320k_cityscapes/lraspp_m-v3-d8_512x1024_320k_cityscapes_20201224_220337-cfe8fb07.pth
Config: configs/lraspp/lraspp_m-v3-d8_512x1024_320k_cityscapes.py
- Name: lraspp_m-v3-d8_scratch_512x1024_320k_cityscapes
In Collection: LRASPP
Metadata:
inference time (ms/im):
- value: 67.7
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 67.87
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/mobilenet_v3/lraspp_m-v3-d8_scratch_512x1024_320k_cityscapes/lraspp_m-v3-d8_scratch_512x1024_320k_cityscapes_20201224_220337-9f29cd72.pth
Config: configs/lraspp/lraspp_m-v3-d8_scratch_512x1024_320k_cityscapes.py
- Name: lraspp_m-v3s-d8_512x1024_320k_cityscapes
In Collection: LRASPP
Metadata:
inference time (ms/im):
- value: 42.3
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 64.11
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/mobilenet_v3/lraspp_m-v3s-d8_512x1024_320k_cityscapes/lraspp_m-v3s-d8_512x1024_320k_cityscapes_20201224_223935-61565b34.pth
Config: configs/lraspp/lraspp_m-v3s-d8_512x1024_320k_cityscapes.py
- Name: lraspp_m-v3s-d8_scratch_512x1024_320k_cityscapes
In Collection: LRASPP
Metadata:
inference time (ms/im):
- value: 40.82
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 62.74
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/mobilenet_v3/lraspp_m-v3s-d8_scratch_512x1024_320k_cityscapes/lraspp_m-v3s-d8_scratch_512x1024_320k_cityscapes_20201224_223935-03daeabb.pth
Config: configs/lraspp/lraspp_m-v3s-d8_scratch_512x1024_320k_cityscapes.py

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Collections:
- Name: mobilenet_v3
Metadata:
Training Data:
- Cityscapes
Models:
- Name: lraspp_m-v3-d8_512x1024_320k_cityscapes
In Collection: mobilenet_v3
Metadata:
backbone: M-V3-D8
crop size: (512,1024)
lr schd: 320000
inference time (ms/im):
- value: 65.7
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 8.9
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 69.54
mIoU(ms+flip): 70.89
Config: configs/mobilenet_v3/lraspp_m-v3-d8_512x1024_320k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/mobilenet_v3/lraspp_m-v3-d8_512x1024_320k_cityscapes/lraspp_m-v3-d8_512x1024_320k_cityscapes_20201224_220337-cfe8fb07.pth
- Name: lraspp_m-v3-d8_scratch_512x1024_320k_cityscapes
In Collection: mobilenet_v3
Metadata:
backbone: M-V3-D8 (scratch)
crop size: (512,1024)
lr schd: 320000
inference time (ms/im):
- value: 67.7
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 8.9
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 67.87
mIoU(ms+flip): 69.78
Config: configs/mobilenet_v3/lraspp_m-v3-d8_scratch_512x1024_320k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/mobilenet_v3/lraspp_m-v3-d8_scratch_512x1024_320k_cityscapes/lraspp_m-v3-d8_scratch_512x1024_320k_cityscapes_20201224_220337-9f29cd72.pth
- Name: lraspp_m-v3s-d8_512x1024_320k_cityscapes
In Collection: mobilenet_v3
Metadata:
backbone: M-V3s-D8
crop size: (512,1024)
lr schd: 320000
inference time (ms/im):
- value: 42.3
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 5.3
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 64.11
mIoU(ms+flip): 66.42
Config: configs/mobilenet_v3/lraspp_m-v3s-d8_512x1024_320k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/mobilenet_v3/lraspp_m-v3s-d8_512x1024_320k_cityscapes/lraspp_m-v3s-d8_512x1024_320k_cityscapes_20201224_223935-61565b34.pth
- Name: lraspp_m-v3s-d8_scratch_512x1024_320k_cityscapes
In Collection: mobilenet_v3
Metadata:
backbone: M-V3s-D8 (scratch)
crop size: (512,1024)
lr schd: 320000
inference time (ms/im):
- value: 40.82
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 5.3
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 62.74
mIoU(ms+flip): 65.01
Config: configs/mobilenet_v3/lraspp_m-v3s-d8_scratch_512x1024_320k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/mobilenet_v3/lraspp_m-v3s-d8_scratch_512x1024_320k_cityscapes/lraspp_m-v3s-d8_scratch_512x1024_320k_cityscapes_20201224_223935-03daeabb.pth

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@ -1,311 +0,0 @@
Collections:
- Name: NonLocal
Metadata:
Training Data:
- Cityscapes
- Pascal VOC 2012 + Aug
- ADE20K
Models:
- Name: nonlocal_r50-d8_512x1024_40k_cityscapes
In Collection: NonLocal
Metadata:
inference time (ms/im):
- value: 367.65
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.24
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r50-d8_512x1024_40k_cityscapes/nonlocal_r50-d8_512x1024_40k_cityscapes_20200605_210748-c75e81e3.pth
Config: configs/nonlocal/nonlocal_r50-d8_512x1024_40k_cityscapes.py
- Name: nonlocal_r101-d8_512x1024_40k_cityscapes
In Collection: NonLocal
Metadata:
inference time (ms/im):
- value: 512.82
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.66
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r101-d8_512x1024_40k_cityscapes/nonlocal_r101-d8_512x1024_40k_cityscapes_20200605_210748-d63729fa.pth
Config: configs/nonlocal/nonlocal_r101-d8_512x1024_40k_cityscapes.py
- Name: nonlocal_r50-d8_769x769_40k_cityscapes
In Collection: NonLocal
Metadata:
inference time (ms/im):
- value: 657.89
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.33
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r50-d8_769x769_40k_cityscapes/nonlocal_r50-d8_769x769_40k_cityscapes_20200530_045243-82ef6749.pth
Config: configs/nonlocal/nonlocal_r50-d8_769x769_40k_cityscapes.py
- Name: nonlocal_r101-d8_769x769_40k_cityscapes
In Collection: NonLocal
Metadata:
inference time (ms/im):
- value: 952.38
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.57
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r101-d8_769x769_40k_cityscapes/nonlocal_r101-d8_769x769_40k_cityscapes_20200530_045348-8fe9a9dc.pth
Config: configs/nonlocal/nonlocal_r101-d8_769x769_40k_cityscapes.py
- Name: nonlocal_r50-d8_512x1024_80k_cityscapes
In Collection: NonLocal
Metadata:
inference time (ms/im):
- value: 367.65
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.01
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r50-d8_512x1024_80k_cityscapes/nonlocal_r50-d8_512x1024_80k_cityscapes_20200607_193518-d6839fae.pth
Config: configs/nonlocal/nonlocal_r50-d8_512x1024_80k_cityscapes.py
- Name: nonlocal_r101-d8_512x1024_80k_cityscapes
In Collection: NonLocal
Metadata:
inference time (ms/im):
- value: 512.82
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.93
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r101-d8_512x1024_80k_cityscapes/nonlocal_r101-d8_512x1024_80k_cityscapes_20200607_183411-32700183.pth
Config: configs/nonlocal/nonlocal_r101-d8_512x1024_80k_cityscapes.py
- Name: nonlocal_r50-d8_769x769_80k_cityscapes
In Collection: NonLocal
Metadata:
inference time (ms/im):
- value: 657.89
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.05
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r50-d8_769x769_80k_cityscapes/nonlocal_r50-d8_769x769_80k_cityscapes_20200607_193506-1f9792f6.pth
Config: configs/nonlocal/nonlocal_r50-d8_769x769_80k_cityscapes.py
- Name: nonlocal_r101-d8_769x769_80k_cityscapes
In Collection: NonLocal
Metadata:
inference time (ms/im):
- value: 952.38
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.40
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r101-d8_769x769_80k_cityscapes/nonlocal_r101-d8_769x769_80k_cityscapes_20200607_183428-0e1fa4f9.pth
Config: configs/nonlocal/nonlocal_r101-d8_769x769_80k_cityscapes.py
- Name: nonlocal_r50-d8_512x512_80k_ade20k
In Collection: NonLocal
Metadata:
inference time (ms/im):
- value: 46.79
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 40.75
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r50-d8_512x512_80k_ade20k/nonlocal_r50-d8_512x512_80k_ade20k_20200615_015801-5ae0aa33.pth
Config: configs/nonlocal/nonlocal_r50-d8_512x512_80k_ade20k.py
- Name: nonlocal_r101-d8_512x512_80k_ade20k
In Collection: NonLocal
Metadata:
inference time (ms/im):
- value: 71.58
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.90
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r101-d8_512x512_80k_ade20k/nonlocal_r101-d8_512x512_80k_ade20k_20200615_015758-24105919.pth
Config: configs/nonlocal/nonlocal_r101-d8_512x512_80k_ade20k.py
- Name: nonlocal_r50-d8_512x512_160k_ade20k
In Collection: NonLocal
Metadata:
inference time (ms/im):
- value: 46.79
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.03
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r50-d8_512x512_160k_ade20k/nonlocal_r50-d8_512x512_160k_ade20k_20200616_005410-baef45e3.pth
Config: configs/nonlocal/nonlocal_r50-d8_512x512_160k_ade20k.py
- Name: nonlocal_r101-d8_512x512_160k_ade20k
In Collection: NonLocal
Metadata:
inference time (ms/im):
- value: 71.58
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.36
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r101-d8_512x512_160k_ade20k/nonlocal_r101-d8_512x512_160k_ade20k_20200616_003422-affd0f8d.pth
Config: configs/nonlocal/nonlocal_r101-d8_512x512_160k_ade20k.py
- Name: nonlocal_r50-d8_512x512_20k_voc12aug
In Collection: NonLocal
Metadata:
inference time (ms/im):
- value: 47.15
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.20
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r50-d8_512x512_20k_voc12aug/nonlocal_r50-d8_512x512_20k_voc12aug_20200617_222613-07f2a57c.pth
Config: configs/nonlocal/nonlocal_r50-d8_512x512_20k_voc12aug.py
- Name: nonlocal_r101-d8_512x512_20k_voc12aug
In Collection: NonLocal
Metadata:
inference time (ms/im):
- value: 71.38
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 78.15
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r101-d8_512x512_20k_voc12aug/nonlocal_r101-d8_512x512_20k_voc12aug_20200617_222615-948c68ab.pth
Config: configs/nonlocal/nonlocal_r101-d8_512x512_20k_voc12aug.py
- Name: nonlocal_r50-d8_512x512_40k_voc12aug
In Collection: NonLocal
Metadata:
inference time (ms/im):
- value: 47.15
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.65
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r50-d8_512x512_40k_voc12aug/nonlocal_r50-d8_512x512_40k_voc12aug_20200614_000028-0139d4a9.pth
Config: configs/nonlocal/nonlocal_r50-d8_512x512_40k_voc12aug.py
- Name: nonlocal_r101-d8_512x512_40k_voc12aug
In Collection: NonLocal
Metadata:
inference time (ms/im):
- value: 71.38
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 78.27
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r101-d8_512x512_40k_voc12aug/nonlocal_r101-d8_512x512_40k_voc12aug_20200614_000028-7e5ff470.pth
Config: configs/nonlocal/nonlocal_r101-d8_512x512_40k_voc12aug.py

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Collections:
- Name: nonlocal_net
Metadata:
Training Data:
- Cityscapes
- ADE20K
- Pascal VOC 2012 + Aug
Models:
- Name: nonlocal_r50-d8_512x1024_40k_cityscapes
In Collection: nonlocal_net
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 367.65
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 7.4
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.24
Config: configs/nonlocal_net/nonlocal_r50-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r50-d8_512x1024_40k_cityscapes/nonlocal_r50-d8_512x1024_40k_cityscapes_20200605_210748-c75e81e3.pth
- Name: nonlocal_r101-d8_512x1024_40k_cityscapes
In Collection: nonlocal_net
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 512.82
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 10.9
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.66
Config: configs/nonlocal_net/nonlocal_r101-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r101-d8_512x1024_40k_cityscapes/nonlocal_r101-d8_512x1024_40k_cityscapes_20200605_210748-d63729fa.pth
- Name: nonlocal_r50-d8_769x769_40k_cityscapes
In Collection: nonlocal_net
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 657.89
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 8.9
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.33
mIoU(ms+flip): 79.92
Config: configs/nonlocal_net/nonlocal_r50-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r50-d8_769x769_40k_cityscapes/nonlocal_r50-d8_769x769_40k_cityscapes_20200530_045243-82ef6749.pth
- Name: nonlocal_r101-d8_769x769_40k_cityscapes
In Collection: nonlocal_net
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 952.38
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 12.8
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.57
mIoU(ms+flip): 80.29
Config: configs/nonlocal_net/nonlocal_r101-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r101-d8_769x769_40k_cityscapes/nonlocal_r101-d8_769x769_40k_cityscapes_20200530_045348-8fe9a9dc.pth
- Name: nonlocal_r50-d8_512x1024_80k_cityscapes
In Collection: nonlocal_net
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.01
Config: configs/nonlocal_net/nonlocal_r50-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r50-d8_512x1024_80k_cityscapes/nonlocal_r50-d8_512x1024_80k_cityscapes_20200607_193518-d6839fae.pth
- Name: nonlocal_r101-d8_512x1024_80k_cityscapes
In Collection: nonlocal_net
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.93
Config: configs/nonlocal_net/nonlocal_r101-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r101-d8_512x1024_80k_cityscapes/nonlocal_r101-d8_512x1024_80k_cityscapes_20200607_183411-32700183.pth
- Name: nonlocal_r50-d8_769x769_80k_cityscapes
In Collection: nonlocal_net
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.05
mIoU(ms+flip): 80.68
Config: configs/nonlocal_net/nonlocal_r50-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r50-d8_769x769_80k_cityscapes/nonlocal_r50-d8_769x769_80k_cityscapes_20200607_193506-1f9792f6.pth
- Name: nonlocal_r101-d8_769x769_80k_cityscapes
In Collection: nonlocal_net
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.4
mIoU(ms+flip): 80.85
Config: configs/nonlocal_net/nonlocal_r101-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r101-d8_769x769_80k_cityscapes/nonlocal_r101-d8_769x769_80k_cityscapes_20200607_183428-0e1fa4f9.pth
- Name: nonlocal_r50-d8_512x512_80k_ade20k
In Collection: nonlocal_net
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 46.79
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 9.1
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 40.75
mIoU(ms+flip): 42.05
Config: configs/nonlocal_net/nonlocal_r50-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r50-d8_512x512_80k_ade20k/nonlocal_r50-d8_512x512_80k_ade20k_20200615_015801-5ae0aa33.pth
- Name: nonlocal_r101-d8_512x512_80k_ade20k
In Collection: nonlocal_net
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 71.58
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 12.6
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.9
mIoU(ms+flip): 44.27
Config: configs/nonlocal_net/nonlocal_r101-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r101-d8_512x512_80k_ade20k/nonlocal_r101-d8_512x512_80k_ade20k_20200615_015758-24105919.pth
- Name: nonlocal_r50-d8_512x512_160k_ade20k
In Collection: nonlocal_net
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.03
mIoU(ms+flip): 43.04
Config: configs/nonlocal_net/nonlocal_r50-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r50-d8_512x512_160k_ade20k/nonlocal_r50-d8_512x512_160k_ade20k_20200616_005410-baef45e3.pth
- Name: nonlocal_r101-d8_512x512_160k_ade20k
In Collection: nonlocal_net
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.36
mIoU(ms+flip): 44.83
Config: configs/nonlocal_net/nonlocal_r101-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r101-d8_512x512_160k_ade20k/nonlocal_r101-d8_512x512_160k_ade20k_20200616_003422-affd0f8d.pth
- Name: nonlocal_r50-d8_512x512_20k_voc12aug
In Collection: nonlocal_net
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 47.15
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 6.4
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.2
mIoU(ms+flip): 77.12
Config: configs/nonlocal_net/nonlocal_r50-d8_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r50-d8_512x512_20k_voc12aug/nonlocal_r50-d8_512x512_20k_voc12aug_20200617_222613-07f2a57c.pth
- Name: nonlocal_r101-d8_512x512_20k_voc12aug
In Collection: nonlocal_net
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 71.38
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 9.8
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 78.15
mIoU(ms+flip): 78.86
Config: configs/nonlocal_net/nonlocal_r101-d8_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r101-d8_512x512_20k_voc12aug/nonlocal_r101-d8_512x512_20k_voc12aug_20200617_222615-948c68ab.pth
- Name: nonlocal_r50-d8_512x512_40k_voc12aug
In Collection: nonlocal_net
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.65
mIoU(ms+flip): 77.47
Config: configs/nonlocal_net/nonlocal_r50-d8_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r50-d8_512x512_40k_voc12aug/nonlocal_r50-d8_512x512_40k_voc12aug_20200614_000028-0139d4a9.pth
- Name: nonlocal_r101-d8_512x512_40k_voc12aug
In Collection: nonlocal_net
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 78.27
mIoU(ms+flip): 79.12
Config: configs/nonlocal_net/nonlocal_r101-d8_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/nonlocal_net/nonlocal_r101-d8_512x512_40k_voc12aug/nonlocal_r101-d8_512x512_40k_voc12aug_20200614_000028-7e5ff470.pth

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@ -1,463 +0,0 @@
Collections:
- Name: OCRNet
Metadata:
Training Data:
- Cityscapes
- Pascal VOC 2012 + Aug
- ADE20K
Models:
- Name: ocrnet_hr18s_512x1024_40k_cityscapes
In Collection: OCRNet
Metadata:
inference time (ms/im):
- value: 95.69
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 74.30
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18s_512x1024_40k_cityscapes/ocrnet_hr18s_512x1024_40k_cityscapes_20200601_033304-fa2436c2.pth
Config: configs/ocrnet/ocrnet_hr18s_512x1024_40k_cityscapes.py
- Name: ocrnet_hr18_512x1024_40k_cityscapes
In Collection: OCRNet
Metadata:
inference time (ms/im):
- value: 133.33
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.72
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18_512x1024_40k_cityscapes/ocrnet_hr18_512x1024_40k_cityscapes_20200601_033320-401c5bdd.pth
Config: configs/ocrnet/ocrnet_hr18_512x1024_40k_cityscapes.py
- Name: ocrnet_hr48_512x1024_40k_cityscapes
In Collection: OCRNet
Metadata:
inference time (ms/im):
- value: 236.97
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.58
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr48_512x1024_40k_cityscapes/ocrnet_hr48_512x1024_40k_cityscapes_20200601_033336-55b32491.pth
Config: configs/ocrnet/ocrnet_hr48_512x1024_40k_cityscapes.py
- Name: ocrnet_hr18s_512x1024_80k_cityscapes
In Collection: OCRNet
Metadata:
inference time (ms/im):
- value: 95.69
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.16
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18s_512x1024_80k_cityscapes/ocrnet_hr18s_512x1024_80k_cityscapes_20200601_222735-55979e63.pth
Config: configs/ocrnet/ocrnet_hr18s_512x1024_80k_cityscapes.py
- Name: ocrnet_hr18_512x1024_80k_cityscapes
In Collection: OCRNet
Metadata:
inference time (ms/im):
- value: 133.33
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.57
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18_512x1024_80k_cityscapes/ocrnet_hr18_512x1024_80k_cityscapes_20200614_230521-c2e1dd4a.pth
Config: configs/ocrnet/ocrnet_hr18_512x1024_80k_cityscapes.py
- Name: ocrnet_hr48_512x1024_80k_cityscapes
In Collection: OCRNet
Metadata:
inference time (ms/im):
- value: 236.97
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.70
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr48_512x1024_80k_cityscapes/ocrnet_hr48_512x1024_80k_cityscapes_20200601_222752-9076bcdf.pth
Config: configs/ocrnet/ocrnet_hr48_512x1024_80k_cityscapes.py
- Name: ocrnet_hr18s_512x1024_160k_cityscapes
In Collection: OCRNet
Metadata:
inference time (ms/im):
- value: 95.69
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.45
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18s_512x1024_160k_cityscapes/ocrnet_hr18s_512x1024_160k_cityscapes_20200602_191005-f4a7af28.pth
Config: configs/ocrnet/ocrnet_hr18s_512x1024_160k_cityscapes.py
- Name: ocrnet_hr18_512x1024_160k_cityscapes
In Collection: OCRNet
Metadata:
inference time (ms/im):
- value: 133.33
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.47
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18_512x1024_160k_cityscapes/ocrnet_hr18_512x1024_160k_cityscapes_20200602_191001-b9172d0c.pth
Config: configs/ocrnet/ocrnet_hr18_512x1024_160k_cityscapes.py
- Name: ocrnet_hr48_512x1024_160k_cityscapes
In Collection: OCRNet
Metadata:
inference time (ms/im):
- value: 236.97
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 81.35
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr48_512x1024_160k_cityscapes/ocrnet_hr48_512x1024_160k_cityscapes_20200602_191037-dfbf1b0c.pth
Config: configs/ocrnet/ocrnet_hr48_512x1024_160k_cityscapes.py
- Name: ocrnet_r101-d8_512x1024_40k_b8_cityscapes
In Collection: OCRNet
Metadata:
inference time (ms/im):
- value: None
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU:
Weights: https://github.com/open-mmlab/mmsegmentation/blob/master/configs/ocrnet/ocrnet_r101-d8_512x1024_40k_b8_cityscapes.py
Config: configs/ocrnet/ocrnet_r101-d8_512x1024_40k_b8_cityscapes.py
- Name: ocrnet_r101-d8_512x1024_40k_b16_cityscapes
In Collection: OCRNet
Metadata:
inference time (ms/im):
- value: 113.64
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 3.02
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_r101-d8_512x1024_40k_b8_cityscapes/ocrnet_r101-d8_512x1024_40k_b8_cityscapes-02ac0f13.pth
Config: configs/ocrnet/ocrnet_r101-d8_512x1024_40k_b16_cityscapes.py
- Name: ocrnet_r101-d8_512x1024_80k_b16_cityscapes
In Collection: OCRNet
Metadata:
inference time (ms/im):
- value: 113.64
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 3.02
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_r101-d8_512x1024_40k_b16_cityscapes/ocrnet_r101-d8_512x1024_40k_b16_cityscapes-db500f80.pth
Config: configs/ocrnet/ocrnet_r101-d8_512x1024_80k_b16_cityscapes.py
- Name: ocrnet_hr18s_512x512_80k_ade20k
In Collection: OCRNet
Metadata:
inference time (ms/im):
- value: 34.51
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 35.06
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18s_512x512_80k_ade20k/ocrnet_hr18s_512x512_80k_ade20k_20200615_055600-e80b62af.pth
Config: configs/ocrnet/ocrnet_hr18s_512x512_80k_ade20k.py
- Name: ocrnet_hr18_512x512_80k_ade20k
In Collection: OCRNet
Metadata:
inference time (ms/im):
- value: 52.83
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 37.79
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18_512x512_80k_ade20k/ocrnet_hr18_512x512_80k_ade20k_20200615_053157-d173d83b.pth
Config: configs/ocrnet/ocrnet_hr18_512x512_80k_ade20k.py
- Name: ocrnet_hr48_512x512_80k_ade20k
In Collection: OCRNet
Metadata:
inference time (ms/im):
- value: 58.86
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.00
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr48_512x512_80k_ade20k/ocrnet_hr48_512x512_80k_ade20k_20200615_021518-d168c2d1.pth
Config: configs/ocrnet/ocrnet_hr48_512x512_80k_ade20k.py
- Name: ocrnet_hr18s_512x512_160k_ade20k
In Collection: OCRNet
Metadata:
inference time (ms/im):
- value: 34.51
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 37.19
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18s_512x512_160k_ade20k/ocrnet_hr18s_512x512_160k_ade20k_20200615_184505-8e913058.pth
Config: configs/ocrnet/ocrnet_hr18s_512x512_160k_ade20k.py
- Name: ocrnet_hr18_512x512_160k_ade20k
In Collection: OCRNet
Metadata:
inference time (ms/im):
- value: 52.83
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 39.32
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18_512x512_160k_ade20k/ocrnet_hr18_512x512_160k_ade20k_20200615_200940-d8fcd9d1.pth
Config: configs/ocrnet/ocrnet_hr18_512x512_160k_ade20k.py
- Name: ocrnet_hr48_512x512_160k_ade20k
In Collection: OCRNet
Metadata:
inference time (ms/im):
- value: 58.86
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.25
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr48_512x512_160k_ade20k/ocrnet_hr48_512x512_160k_ade20k_20200615_184705-a073726d.pth
Config: configs/ocrnet/ocrnet_hr48_512x512_160k_ade20k.py
- Name: ocrnet_hr18s_512x512_20k_voc12aug
In Collection: OCRNet
Metadata:
inference time (ms/im):
- value: 31.7
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 71.70
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18s_512x512_20k_voc12aug/ocrnet_hr18s_512x512_20k_voc12aug_20200617_233913-02b04fcb.pth
Config: configs/ocrnet/ocrnet_hr18s_512x512_20k_voc12aug.py
- Name: ocrnet_hr18_512x512_20k_voc12aug
In Collection: OCRNet
Metadata:
inference time (ms/im):
- value: 50.23
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 74.75
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18_512x512_20k_voc12aug/ocrnet_hr18_512x512_20k_voc12aug_20200617_233932-8954cbb7.pth
Config: configs/ocrnet/ocrnet_hr18_512x512_20k_voc12aug.py
- Name: ocrnet_hr48_512x512_20k_voc12aug
In Collection: OCRNet
Metadata:
inference time (ms/im):
- value: 56.09
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.72
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr48_512x512_20k_voc12aug/ocrnet_hr48_512x512_20k_voc12aug_20200617_233932-9e82080a.pth
Config: configs/ocrnet/ocrnet_hr48_512x512_20k_voc12aug.py
- Name: ocrnet_hr18s_512x512_40k_voc12aug
In Collection: OCRNet
Metadata:
inference time (ms/im):
- value: 31.7
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 72.76
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18s_512x512_40k_voc12aug/ocrnet_hr18s_512x512_40k_voc12aug_20200614_002025-42b587ac.pth
Config: configs/ocrnet/ocrnet_hr18s_512x512_40k_voc12aug.py
- Name: ocrnet_hr18_512x512_40k_voc12aug
In Collection: OCRNet
Metadata:
inference time (ms/im):
- value: 50.23
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 74.98
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18_512x512_40k_voc12aug/ocrnet_hr18_512x512_40k_voc12aug_20200614_015958-714302be.pth
Config: configs/ocrnet/ocrnet_hr18_512x512_40k_voc12aug.py
- Name: ocrnet_hr48_512x512_40k_voc12aug
In Collection: OCRNet
Metadata:
inference time (ms/im):
- value: 56.09
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.14
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr48_512x512_40k_voc12aug/ocrnet_hr48_512x512_40k_voc12aug_20200614_015958-255bc5ce.pth
Config: configs/ocrnet/ocrnet_hr48_512x512_40k_voc12aug.py

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configs/ocrnet/ocrnet.yml Normal file
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Collections:
- Name: ocrnet
Metadata:
Training Data:
- Cityscapes
- ' HRNet backbone'
- ' ResNet backbone'
- ADE20K
- Pascal VOC 2012 + Aug
Models:
- Name: ocrnet_hr18s_512x1024_40k_cityscapes
In Collection: ocrnet
Metadata:
backbone: HRNetV2p-W18-Small
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 95.69
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 3.5
Results:
Task: Semantic Segmentation
Dataset: ' HRNet backbone'
Metrics:
mIoU: 74.3
mIoU(ms+flip): 75.95
Config: configs/ocrnet/ocrnet_hr18s_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18s_512x1024_40k_cityscapes/ocrnet_hr18s_512x1024_40k_cityscapes_20200601_033304-fa2436c2.pth
- Name: ocrnet_hr18_512x1024_40k_cityscapes
In Collection: ocrnet
Metadata:
backbone: HRNetV2p-W18
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 133.33
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 4.7
Results:
Task: Semantic Segmentation
Dataset: ' HRNet backbone'
Metrics:
mIoU: 77.72
mIoU(ms+flip): 79.49
Config: configs/ocrnet/ocrnet_hr18_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18_512x1024_40k_cityscapes/ocrnet_hr18_512x1024_40k_cityscapes_20200601_033320-401c5bdd.pth
- Name: ocrnet_hr48_512x1024_40k_cityscapes
In Collection: ocrnet
Metadata:
backbone: HRNetV2p-W48
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 236.97
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 8.0
Results:
Task: Semantic Segmentation
Dataset: ' HRNet backbone'
Metrics:
mIoU: 80.58
mIoU(ms+flip): 81.79
Config: configs/ocrnet/ocrnet_hr48_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr48_512x1024_40k_cityscapes/ocrnet_hr48_512x1024_40k_cityscapes_20200601_033336-55b32491.pth
- Name: ocrnet_hr18s_512x1024_80k_cityscapes
In Collection: ocrnet
Metadata:
backbone: HRNetV2p-W18-Small
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: ' HRNet backbone'
Metrics:
mIoU: 77.16
mIoU(ms+flip): 78.66
Config: configs/ocrnet/ocrnet_hr18s_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18s_512x1024_80k_cityscapes/ocrnet_hr18s_512x1024_80k_cityscapes_20200601_222735-55979e63.pth
- Name: ocrnet_hr18_512x1024_80k_cityscapes
In Collection: ocrnet
Metadata:
backbone: HRNetV2p-W18
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: ' HRNet backbone'
Metrics:
mIoU: 78.57
mIoU(ms+flip): 80.46
Config: configs/ocrnet/ocrnet_hr18_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18_512x1024_80k_cityscapes/ocrnet_hr18_512x1024_80k_cityscapes_20200614_230521-c2e1dd4a.pth
- Name: ocrnet_hr48_512x1024_80k_cityscapes
In Collection: ocrnet
Metadata:
backbone: HRNetV2p-W48
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: ' HRNet backbone'
Metrics:
mIoU: 80.7
mIoU(ms+flip): 81.87
Config: configs/ocrnet/ocrnet_hr48_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr48_512x1024_80k_cityscapes/ocrnet_hr48_512x1024_80k_cityscapes_20200601_222752-9076bcdf.pth
- Name: ocrnet_hr18s_512x1024_160k_cityscapes
In Collection: ocrnet
Metadata:
backbone: HRNetV2p-W18-Small
crop size: (512,1024)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ' HRNet backbone'
Metrics:
mIoU: 78.45
mIoU(ms+flip): 79.97
Config: configs/ocrnet/ocrnet_hr18s_512x1024_160k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18s_512x1024_160k_cityscapes/ocrnet_hr18s_512x1024_160k_cityscapes_20200602_191005-f4a7af28.pth
- Name: ocrnet_hr18_512x1024_160k_cityscapes
In Collection: ocrnet
Metadata:
backbone: HRNetV2p-W18
crop size: (512,1024)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ' HRNet backbone'
Metrics:
mIoU: 79.47
mIoU(ms+flip): 80.91
Config: configs/ocrnet/ocrnet_hr18_512x1024_160k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18_512x1024_160k_cityscapes/ocrnet_hr18_512x1024_160k_cityscapes_20200602_191001-b9172d0c.pth
- Name: ocrnet_hr48_512x1024_160k_cityscapes
In Collection: ocrnet
Metadata:
backbone: HRNetV2p-W48
crop size: (512,1024)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ' HRNet backbone'
Metrics:
mIoU: 81.35
mIoU(ms+flip): 82.7
Config: configs/ocrnet/ocrnet_hr48_512x1024_160k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr48_512x1024_160k_cityscapes/ocrnet_hr48_512x1024_160k_cityscapes_20200602_191037-dfbf1b0c.pth
- Name: ocrnet_r101-d8_512x1024_40k_b8_cityscapes
In Collection: ocrnet
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: ' ResNet backbone'
Metrics:
mIoU: 80.09
Config: configs/ocrnet/ocrnet_r101-d8_512x1024_40k_b8_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_r101-d8_512x1024_40k_b8_cityscapes/ocrnet_r101-d8_512x1024_40k_b8_cityscapes-02ac0f13.pth
- Name: ocrnet_r101-d8_512x1024_40k_b16_cityscapes
In Collection: ocrnet
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 331.13
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 8.8
Results:
Task: Semantic Segmentation
Dataset: ' ResNet backbone'
Metrics:
mIoU: 80.3
Config: configs/ocrnet/ocrnet_r101-d8_512x1024_40k_b16_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_r101-d8_512x1024_40k_b16_cityscapes/ocrnet_r101-d8_512x1024_40k_b16_cityscapes-db500f80.pth
- Name: ocrnet_r101-d8_512x1024_80k_b16_cityscapes
In Collection: ocrnet
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 331.13
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 8.8
Results:
Task: Semantic Segmentation
Dataset: ' ResNet backbone'
Metrics:
mIoU: 80.81
Config: configs/ocrnet/ocrnet_r101-d8_512x1024_80k_b16_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_r101-d8_512x1024_80k_b16_cityscapes/ocrnet_r101-d8_512x1024_80k_b16_cityscapes-78688424.pth
- Name: ocrnet_hr18s_512x512_80k_ade20k
In Collection: ocrnet
Metadata:
backbone: HRNetV2p-W18-Small
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 34.51
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 6.7
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 35.06
mIoU(ms+flip): 35.8
Config: configs/ocrnet/ocrnet_hr18s_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18s_512x512_80k_ade20k/ocrnet_hr18s_512x512_80k_ade20k_20200615_055600-e80b62af.pth
- Name: ocrnet_hr18_512x512_80k_ade20k
In Collection: ocrnet
Metadata:
backbone: HRNetV2p-W18
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 52.83
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 7.9
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 37.79
mIoU(ms+flip): 39.16
Config: configs/ocrnet/ocrnet_hr18_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18_512x512_80k_ade20k/ocrnet_hr18_512x512_80k_ade20k_20200615_053157-d173d83b.pth
- Name: ocrnet_hr48_512x512_80k_ade20k
In Collection: ocrnet
Metadata:
backbone: HRNetV2p-W48
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 58.86
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 11.2
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.0
mIoU(ms+flip): 44.3
Config: configs/ocrnet/ocrnet_hr48_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr48_512x512_80k_ade20k/ocrnet_hr48_512x512_80k_ade20k_20200615_021518-d168c2d1.pth
- Name: ocrnet_hr18s_512x512_160k_ade20k
In Collection: ocrnet
Metadata:
backbone: HRNetV2p-W18-Small
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 37.19
mIoU(ms+flip): 38.4
Config: configs/ocrnet/ocrnet_hr18s_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18s_512x512_160k_ade20k/ocrnet_hr18s_512x512_160k_ade20k_20200615_184505-8e913058.pth
- Name: ocrnet_hr18_512x512_160k_ade20k
In Collection: ocrnet
Metadata:
backbone: HRNetV2p-W18
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 39.32
mIoU(ms+flip): 40.8
Config: configs/ocrnet/ocrnet_hr18_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18_512x512_160k_ade20k/ocrnet_hr18_512x512_160k_ade20k_20200615_200940-d8fcd9d1.pth
- Name: ocrnet_hr48_512x512_160k_ade20k
In Collection: ocrnet
Metadata:
backbone: HRNetV2p-W48
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.25
mIoU(ms+flip): 44.88
Config: configs/ocrnet/ocrnet_hr48_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr48_512x512_160k_ade20k/ocrnet_hr48_512x512_160k_ade20k_20200615_184705-a073726d.pth
- Name: ocrnet_hr18s_512x512_20k_voc12aug
In Collection: ocrnet
Metadata:
backbone: HRNetV2p-W18-Small
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 31.7
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 3.5
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 71.7
mIoU(ms+flip): 73.84
Config: configs/ocrnet/ocrnet_hr18s_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18s_512x512_20k_voc12aug/ocrnet_hr18s_512x512_20k_voc12aug_20200617_233913-02b04fcb.pth
- Name: ocrnet_hr18_512x512_20k_voc12aug
In Collection: ocrnet
Metadata:
backbone: HRNetV2p-W18
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 50.23
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 4.7
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 74.75
mIoU(ms+flip): 77.11
Config: configs/ocrnet/ocrnet_hr18_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18_512x512_20k_voc12aug/ocrnet_hr18_512x512_20k_voc12aug_20200617_233932-8954cbb7.pth
- Name: ocrnet_hr48_512x512_20k_voc12aug
In Collection: ocrnet
Metadata:
backbone: HRNetV2p-W48
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 56.09
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 8.1
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.72
mIoU(ms+flip): 79.87
Config: configs/ocrnet/ocrnet_hr48_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr48_512x512_20k_voc12aug/ocrnet_hr48_512x512_20k_voc12aug_20200617_233932-9e82080a.pth
- Name: ocrnet_hr18s_512x512_40k_voc12aug
In Collection: ocrnet
Metadata:
backbone: HRNetV2p-W18-Small
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 72.76
mIoU(ms+flip): 74.6
Config: configs/ocrnet/ocrnet_hr18s_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18s_512x512_40k_voc12aug/ocrnet_hr18s_512x512_40k_voc12aug_20200614_002025-42b587ac.pth
- Name: ocrnet_hr18_512x512_40k_voc12aug
In Collection: ocrnet
Metadata:
backbone: HRNetV2p-W18
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 74.98
mIoU(ms+flip): 77.4
Config: configs/ocrnet/ocrnet_hr18_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr18_512x512_40k_voc12aug/ocrnet_hr18_512x512_40k_voc12aug_20200614_015958-714302be.pth
- Name: ocrnet_hr48_512x512_40k_voc12aug
In Collection: ocrnet
Metadata:
backbone: HRNetV2p-W48
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.14
mIoU(ms+flip): 79.71
Config: configs/ocrnet/ocrnet_hr48_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/ocrnet/ocrnet_hr48_512x512_40k_voc12aug/ocrnet_hr48_512x512_40k_voc12aug_20200614_015958-255bc5ce.pth

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@ -1,82 +0,0 @@
Collections:
- Name: PointRend
Metadata:
Training Data:
- Cityscapes
- ADE20K
Models:
- Name: pointrend_r50_512x1024_80k_cityscapes
In Collection: PointRend
Metadata:
inference time (ms/im):
- value: 117.92
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.47
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/point_rend/pointrend_r50_512x1024_80k_cityscapes/pointrend_r50_512x1024_80k_cityscapes_20200711_015821-bb1ff523.pth
Config: configs/pointrend/pointrend_r50_512x1024_80k_cityscapes.py
- Name: pointrend_r101_512x1024_80k_cityscapes
In Collection: PointRend
Metadata:
inference time (ms/im):
- value: 142.86
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.30
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/point_rend/pointrend_r101_512x1024_80k_cityscapes/pointrend_r101_512x1024_80k_cityscapes_20200711_170850-d0ca84be.pth
Config: configs/pointrend/pointrend_r101_512x1024_80k_cityscapes.py
- Name: pointrend_r50_512x512_160k_ade20k
In Collection: PointRend
Metadata:
inference time (ms/im):
- value: 57.77
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 37.64
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/point_rend/pointrend_r50_512x512_160k_ade20k/pointrend_r50_512x512_160k_ade20k_20200807_232644-ac3febf2.pth
Config: configs/pointrend/pointrend_r50_512x512_160k_ade20k.py
- Name: pointrend_r101_512x512_160k_ade20k
In Collection: PointRend
Metadata:
inference time (ms/im):
- value: 64.52
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 40.02
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/point_rend/pointrend_r101_512x512_160k_ade20k/pointrend_r101_512x512_160k_ade20k_20200808_030852-8834902a.pth
Config: configs/pointrend/pointrend_r101_512x512_160k_ade20k.py

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Collections:
- Name: point_rend
Metadata:
Training Data:
- Cityscapes
- ADE20K
Models:
- Name: pointrend_r50_512x1024_80k_cityscapes
In Collection: point_rend
Metadata:
backbone: R-50
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 117.92
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 3.1
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 76.47
mIoU(ms+flip): 78.13
Config: configs/point_rend/pointrend_r50_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/point_rend/pointrend_r50_512x1024_80k_cityscapes/pointrend_r50_512x1024_80k_cityscapes_20200711_015821-bb1ff523.pth
- Name: pointrend_r101_512x1024_80k_cityscapes
In Collection: point_rend
Metadata:
backbone: R-101
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 142.86
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 4.2
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.3
mIoU(ms+flip): 79.97
Config: configs/point_rend/pointrend_r101_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/point_rend/pointrend_r101_512x1024_80k_cityscapes/pointrend_r101_512x1024_80k_cityscapes_20200711_170850-d0ca84be.pth
- Name: pointrend_r50_512x512_160k_ade20k
In Collection: point_rend
Metadata:
backbone: R-50
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 57.77
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 5.1
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 37.64
mIoU(ms+flip): 39.17
Config: configs/point_rend/pointrend_r50_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/point_rend/pointrend_r50_512x512_160k_ade20k/pointrend_r50_512x512_160k_ade20k_20200807_232644-ac3febf2.pth
- Name: pointrend_r101_512x512_160k_ade20k
In Collection: point_rend
Metadata:
backbone: R-101
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 64.52
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 6.1
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 40.02
mIoU(ms+flip): 41.6
Config: configs/point_rend/pointrend_r101_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/point_rend/pointrend_r101_512x512_160k_ade20k/pointrend_r101_512x512_160k_ade20k_20200808_030852-8834902a.pth

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Collections:
- Name: PSANet
Metadata:
Training Data:
- Cityscapes
- Pascal VOC 2012 + Aug
- ADE20K
Models:
- Name: psanet_r50-d8_512x1024_40k_cityscapes
In Collection: PSANet
Metadata:
inference time (ms/im):
- value: 315.46
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.63
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r50-d8_512x1024_40k_cityscapes/psanet_r50-d8_512x1024_40k_cityscapes_20200606_103117-99fac37c.pth
Config: configs/psanet/psanet_r50-d8_512x1024_40k_cityscapes.py
- Name: psanet_r101-d8_512x1024_40k_cityscapes
In Collection: PSANet
Metadata:
inference time (ms/im):
- value: 454.55
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.14
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r101-d8_512x1024_40k_cityscapes/psanet_r101-d8_512x1024_40k_cityscapes_20200606_001418-27b9cfa7.pth
Config: configs/psanet/psanet_r101-d8_512x1024_40k_cityscapes.py
- Name: psanet_r50-d8_769x769_40k_cityscapes
In Collection: PSANet
Metadata:
inference time (ms/im):
- value: 714.29
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.99
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r50-d8_769x769_40k_cityscapes/psanet_r50-d8_769x769_40k_cityscapes_20200530_033717-d5365506.pth
Config: configs/psanet/psanet_r50-d8_769x769_40k_cityscapes.py
- Name: psanet_r101-d8_769x769_40k_cityscapes
In Collection: PSANet
Metadata:
inference time (ms/im):
- value: 1020.41
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.43
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r101-d8_769x769_40k_cityscapes/psanet_r101-d8_769x769_40k_cityscapes_20200530_035107-997da1e6.pth
Config: configs/psanet/psanet_r101-d8_769x769_40k_cityscapes.py
- Name: psanet_r50-d8_512x1024_80k_cityscapes
In Collection: PSANet
Metadata:
inference time (ms/im):
- value: 315.46
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.24
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r50-d8_512x1024_80k_cityscapes/psanet_r50-d8_512x1024_80k_cityscapes_20200606_161842-ab60a24f.pth
Config: configs/psanet/psanet_r50-d8_512x1024_80k_cityscapes.py
- Name: psanet_r101-d8_512x1024_80k_cityscapes
In Collection: PSANet
Metadata:
inference time (ms/im):
- value: 454.55
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.31
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r101-d8_512x1024_80k_cityscapes/psanet_r101-d8_512x1024_80k_cityscapes_20200606_161823-0f73a169.pth
Config: configs/psanet/psanet_r101-d8_512x1024_80k_cityscapes.py
- Name: psanet_r50-d8_769x769_80k_cityscapes
In Collection: PSANet
Metadata:
inference time (ms/im):
- value: 714.29
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.31
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r50-d8_769x769_80k_cityscapes/psanet_r50-d8_769x769_80k_cityscapes_20200606_225134-fe42f49e.pth
Config: configs/psanet/psanet_r50-d8_769x769_80k_cityscapes.py
- Name: psanet_r101-d8_769x769_80k_cityscapes
In Collection: PSANet
Metadata:
inference time (ms/im):
- value: 1020.41
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.69
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r101-d8_769x769_80k_cityscapes/psanet_r101-d8_769x769_80k_cityscapes_20200606_214550-7665827b.pth
Config: configs/psanet/psanet_r101-d8_769x769_80k_cityscapes.py
- Name: psanet_r50-d8_512x512_80k_ade20k
In Collection: PSANet
Metadata:
inference time (ms/im):
- value: 52.88
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 41.14
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r50-d8_512x512_80k_ade20k/psanet_r50-d8_512x512_80k_ade20k_20200614_144141-835e4b97.pth
Config: configs/psanet/psanet_r50-d8_512x512_80k_ade20k.py
- Name: psanet_r101-d8_512x512_80k_ade20k
In Collection: PSANet
Metadata:
inference time (ms/im):
- value: 76.16
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.80
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r101-d8_512x512_80k_ade20k/psanet_r101-d8_512x512_80k_ade20k_20200614_185117-1fab60d4.pth
Config: configs/psanet/psanet_r101-d8_512x512_80k_ade20k.py
- Name: psanet_r50-d8_512x512_160k_ade20k
In Collection: PSANet
Metadata:
inference time (ms/im):
- value: 52.88
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 41.67
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r50-d8_512x512_160k_ade20k/psanet_r50-d8_512x512_160k_ade20k_20200615_161258-148077dd.pth
Config: configs/psanet/psanet_r50-d8_512x512_160k_ade20k.py
- Name: psanet_r101-d8_512x512_160k_ade20k
In Collection: PSANet
Metadata:
inference time (ms/im):
- value: 76.16
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.74
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r101-d8_512x512_160k_ade20k/psanet_r101-d8_512x512_160k_ade20k_20200615_161537-dbfa564c.pth
Config: configs/psanet/psanet_r101-d8_512x512_160k_ade20k.py
- Name: psanet_r50-d8_512x512_20k_voc12aug
In Collection: PSANet
Metadata:
inference time (ms/im):
- value: 54.82
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.39
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r50-d8_512x512_20k_voc12aug/psanet_r50-d8_512x512_20k_voc12aug_20200617_102413-2f1bbaa1.pth
Config: configs/psanet/psanet_r50-d8_512x512_20k_voc12aug.py
- Name: psanet_r101-d8_512x512_20k_voc12aug
In Collection: PSANet
Metadata:
inference time (ms/im):
- value: 79.18
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.91
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r101-d8_512x512_20k_voc12aug/psanet_r101-d8_512x512_20k_voc12aug_20200617_110624-946fef11.pth
Config: configs/psanet/psanet_r101-d8_512x512_20k_voc12aug.py
- Name: psanet_r50-d8_512x512_40k_voc12aug
In Collection: PSANet
Metadata:
inference time (ms/im):
- value: 54.82
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.30
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r50-d8_512x512_40k_voc12aug/psanet_r50-d8_512x512_40k_voc12aug_20200613_161946-f596afb5.pth
Config: configs/psanet/psanet_r50-d8_512x512_40k_voc12aug.py
- Name: psanet_r101-d8_512x512_40k_voc12aug
In Collection: PSANet
Metadata:
inference time (ms/im):
- value: 79.18
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.73
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r101-d8_512x512_40k_voc12aug/psanet_r101-d8_512x512_40k_voc12aug_20200613_161946-1f560f9e.pth
Config: configs/psanet/psanet_r101-d8_512x512_40k_voc12aug.py

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Collections:
- Name: psanet
Metadata:
Training Data:
- Cityscapes
- ADE20K
- Pascal VOC 2012 + Aug
Models:
- Name: psanet_r50-d8_512x1024_40k_cityscapes
In Collection: psanet
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 315.46
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 7.0
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.63
mIoU(ms+flip): 79.04
Config: configs/psanet/psanet_r50-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r50-d8_512x1024_40k_cityscapes/psanet_r50-d8_512x1024_40k_cityscapes_20200606_103117-99fac37c.pth
- Name: psanet_r101-d8_512x1024_40k_cityscapes
In Collection: psanet
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 454.55
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 10.5
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.14
mIoU(ms+flip): 80.19
Config: configs/psanet/psanet_r101-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r101-d8_512x1024_40k_cityscapes/psanet_r101-d8_512x1024_40k_cityscapes_20200606_001418-27b9cfa7.pth
- Name: psanet_r50-d8_769x769_40k_cityscapes
In Collection: psanet
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 714.29
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 7.9
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.99
mIoU(ms+flip): 79.64
Config: configs/psanet/psanet_r50-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r50-d8_769x769_40k_cityscapes/psanet_r50-d8_769x769_40k_cityscapes_20200530_033717-d5365506.pth
- Name: psanet_r101-d8_769x769_40k_cityscapes
In Collection: psanet
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 1020.41
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 11.9
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.43
mIoU(ms+flip): 80.26
Config: configs/psanet/psanet_r101-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r101-d8_769x769_40k_cityscapes/psanet_r101-d8_769x769_40k_cityscapes_20200530_035107-997da1e6.pth
- Name: psanet_r50-d8_512x1024_80k_cityscapes
In Collection: psanet
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.24
mIoU(ms+flip): 78.69
Config: configs/psanet/psanet_r50-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r50-d8_512x1024_80k_cityscapes/psanet_r50-d8_512x1024_80k_cityscapes_20200606_161842-ab60a24f.pth
- Name: psanet_r101-d8_512x1024_80k_cityscapes
In Collection: psanet
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.31
mIoU(ms+flip): 80.53
Config: configs/psanet/psanet_r101-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r101-d8_512x1024_80k_cityscapes/psanet_r101-d8_512x1024_80k_cityscapes_20200606_161823-0f73a169.pth
- Name: psanet_r50-d8_769x769_80k_cityscapes
In Collection: psanet
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.31
mIoU(ms+flip): 80.91
Config: configs/psanet/psanet_r50-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r50-d8_769x769_80k_cityscapes/psanet_r50-d8_769x769_80k_cityscapes_20200606_225134-fe42f49e.pth
- Name: psanet_r101-d8_769x769_80k_cityscapes
In Collection: psanet
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.69
mIoU(ms+flip): 80.89
Config: configs/psanet/psanet_r101-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r101-d8_769x769_80k_cityscapes/psanet_r101-d8_769x769_80k_cityscapes_20200606_214550-7665827b.pth
- Name: psanet_r50-d8_512x512_80k_ade20k
In Collection: psanet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 52.88
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 9.0
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 41.14
mIoU(ms+flip): 41.91
Config: configs/psanet/psanet_r50-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r50-d8_512x512_80k_ade20k/psanet_r50-d8_512x512_80k_ade20k_20200614_144141-835e4b97.pth
- Name: psanet_r101-d8_512x512_80k_ade20k
In Collection: psanet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 76.16
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 12.5
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.8
mIoU(ms+flip): 44.75
Config: configs/psanet/psanet_r101-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r101-d8_512x512_80k_ade20k/psanet_r101-d8_512x512_80k_ade20k_20200614_185117-1fab60d4.pth
- Name: psanet_r50-d8_512x512_160k_ade20k
In Collection: psanet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 41.67
mIoU(ms+flip): 42.95
Config: configs/psanet/psanet_r50-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r50-d8_512x512_160k_ade20k/psanet_r50-d8_512x512_160k_ade20k_20200615_161258-148077dd.pth
- Name: psanet_r101-d8_512x512_160k_ade20k
In Collection: psanet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.74
mIoU(ms+flip): 45.38
Config: configs/psanet/psanet_r101-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r101-d8_512x512_160k_ade20k/psanet_r101-d8_512x512_160k_ade20k_20200615_161537-dbfa564c.pth
- Name: psanet_r50-d8_512x512_20k_voc12aug
In Collection: psanet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 54.82
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 6.9
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.39
mIoU(ms+flip): 77.34
Config: configs/psanet/psanet_r50-d8_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r50-d8_512x512_20k_voc12aug/psanet_r50-d8_512x512_20k_voc12aug_20200617_102413-2f1bbaa1.pth
- Name: psanet_r101-d8_512x512_20k_voc12aug
In Collection: psanet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 79.18
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 10.4
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.91
mIoU(ms+flip): 79.3
Config: configs/psanet/psanet_r101-d8_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r101-d8_512x512_20k_voc12aug/psanet_r101-d8_512x512_20k_voc12aug_20200617_110624-946fef11.pth
- Name: psanet_r50-d8_512x512_40k_voc12aug
In Collection: psanet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.3
mIoU(ms+flip): 77.35
Config: configs/psanet/psanet_r50-d8_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r50-d8_512x512_40k_voc12aug/psanet_r50-d8_512x512_40k_voc12aug_20200613_161946-f596afb5.pth
- Name: psanet_r101-d8_512x512_40k_voc12aug
In Collection: psanet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.73
mIoU(ms+flip): 79.05
Config: configs/psanet/psanet_r101-d8_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/psanet/psanet_r101-d8_512x512_40k_voc12aug/psanet_r101-d8_512x512_40k_voc12aug_20200613_161946-1f560f9e.pth

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@ -1,540 +0,0 @@
Collections:
- Name: PSPNet
Metadata:
Training Data:
- Cityscapes
- Pascal Context
- Pascal VOC 2012 + Aug
- ADE20K
Models:
- Name: pspnet_r50-d8_512x1024_40k_cityscapes
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 245.7
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.85
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r50-d8_512x1024_40k_cityscapes/pspnet_r50-d8_512x1024_40k_cityscapes_20200605_003338-2966598c.pth
Config: configs/pspnet/pspnet_r50-d8_512x1024_40k_cityscapes.py
- Name: pspnet_r101-d8_512x1024_40k_cityscapes
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 373.13
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.34
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101-d8_512x1024_40k_cityscapes/pspnet_r101-d8_512x1024_40k_cityscapes_20200604_232751-467e7cf4.pth
Config: configs/pspnet/pspnet_r101-d8_512x1024_40k_cityscapes.py
- Name: pspnet_r50-d8_769x769_40k_cityscapes
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 568.18
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.26
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r50-d8_769x769_40k_cityscapes/pspnet_r50-d8_769x769_40k_cityscapes_20200606_112725-86638686.pth
Config: configs/pspnet/pspnet_r50-d8_769x769_40k_cityscapes.py
- Name: pspnet_r101-d8_769x769_40k_cityscapes
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 869.57
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.08
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101-d8_769x769_40k_cityscapes/pspnet_r101-d8_769x769_40k_cityscapes_20200606_112753-61c6f5be.pth
Config: configs/pspnet/pspnet_r101-d8_769x769_40k_cityscapes.py
- Name: pspnet_r18-d8_512x1024_80k_cityscapes
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 63.65
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 74.87
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r18-d8_512x1024_80k_cityscapes/pspnet_r18-d8_512x1024_80k_cityscapes_20201225_021458-09ffa746.pth
Config: configs/pspnet/pspnet_r18-d8_512x1024_80k_cityscapes.py
- Name: pspnet_r50-d8_512x1024_80k_cityscapes
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 245.7
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.55
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r50-d8_512x1024_80k_cityscapes/pspnet_r50-d8_512x1024_80k_cityscapes_20200606_112131-2376f12b.pth
Config: configs/pspnet/pspnet_r50-d8_512x1024_80k_cityscapes.py
- Name: pspnet_r101-d8_512x1024_80k_cityscapes
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 373.13
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.76
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101-d8_512x1024_80k_cityscapes/pspnet_r101-d8_512x1024_80k_cityscapes_20200606_112211-e1e1100f.pth
Config: configs/pspnet/pspnet_r101-d8_512x1024_80k_cityscapes.py
- Name: pspnet_r18-d8_769x769_80k_cityscapes
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 161.29
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 75.90
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r18-d8_769x769_80k_cityscapes/pspnet_r18-d8_769x769_80k_cityscapes_20201225_021458-3deefc62.pth
Config: configs/pspnet/pspnet_r18-d8_769x769_80k_cityscapes.py
- Name: pspnet_r50-d8_769x769_80k_cityscapes
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 568.18
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.59
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r50-d8_769x769_80k_cityscapes/pspnet_r50-d8_769x769_80k_cityscapes_20200606_210121-5ccf03dd.pth
Config: configs/pspnet/pspnet_r50-d8_769x769_80k_cityscapes.py
- Name: pspnet_r101-d8_769x769_80k_cityscapes
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 869.57
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.77
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101-d8_769x769_80k_cityscapes/pspnet_r101-d8_769x769_80k_cityscapes_20200606_225055-dba412fa.pth
Config: configs/pspnet/pspnet_r101-d8_769x769_80k_cityscapes.py
- Name: pspnet_r18b-d8_512x1024_80k_cityscapes
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 61.43
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 74.23
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r18b-d8_512x1024_80k_cityscapes/pspnet_r18b-d8_512x1024_80k_cityscapes_20201226_063116-26928a60.pth
Config: configs/pspnet/pspnet_r18b-d8_512x1024_80k_cityscapes.py
- Name: pspnet_r50b-d8_512x1024_80k_cityscapes
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 232.56
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.22
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r50b-d8_512x1024_80k_cityscapes/pspnet_r50b-d8_512x1024_80k_cityscapes_20201225_094315-6344287a.pth
Config: configs/pspnet/pspnet_r50b-d8_512x1024_80k_cityscapes.py
- Name: pspnet_r101b-d8_512x1024_80k_cityscapes
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 362.32
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.69
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101b-d8_512x1024_80k_cityscapes/pspnet_r101b-d8_512x1024_80k_cityscapes_20201226_170012-3a4d38ab.pth
Config: configs/pspnet/pspnet_r101b-d8_512x1024_80k_cityscapes.py
- Name: pspnet_r18b-d8_769x769_80k_cityscapes
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 156.01
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 74.92
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r18b-d8_769x769_80k_cityscapes/pspnet_r18b-d8_769x769_80k_cityscapes_20201226_080942-bf98d186.pth
Config: configs/pspnet/pspnet_r18b-d8_769x769_80k_cityscapes.py
- Name: pspnet_r50b-d8_769x769_80k_cityscapes
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 531.91
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.50
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r50b-d8_769x769_80k_cityscapes/pspnet_r50b-d8_769x769_80k_cityscapes_20201225_094316-4c643cf6.pth
Config: configs/pspnet/pspnet_r50b-d8_769x769_80k_cityscapes.py
- Name: pspnet_r101b-d8_769x769_80k_cityscapes
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 854.7
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.87
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101b-d8_769x769_80k_cityscapes/pspnet_r101b-d8_769x769_80k_cityscapes_20201226_171823-f0e7c293.pth
Config: configs/pspnet/pspnet_r101b-d8_769x769_80k_cityscapes.py
- Name: pspnet_r50-d8_512x512_80k_ade20k
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 42.5
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 41.13
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r50-d8_512x512_80k_ade20k/pspnet_r50-d8_512x512_80k_ade20k_20200615_014128-15a8b914.pth
Config: configs/pspnet/pspnet_r50-d8_512x512_80k_ade20k.py
- Name: pspnet_r101-d8_512x512_80k_ade20k
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 65.36
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.57
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101-d8_512x512_80k_ade20k/pspnet_r101-d8_512x512_80k_ade20k_20200614_031423-b6e782f0.pth
Config: configs/pspnet/pspnet_r101-d8_512x512_80k_ade20k.py
- Name: pspnet_r50-d8_512x512_160k_ade20k
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 42.5
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.48
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r50-d8_512x512_160k_ade20k/pspnet_r50-d8_512x512_160k_ade20k_20200615_184358-1890b0bd.pth
Config: configs/pspnet/pspnet_r50-d8_512x512_160k_ade20k.py
- Name: pspnet_r101-d8_512x512_160k_ade20k
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 65.36
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 44.39
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101-d8_512x512_160k_ade20k/pspnet_r101-d8_512x512_160k_ade20k_20200615_100650-967c316f.pth
Config: configs/pspnet/pspnet_r101-d8_512x512_160k_ade20k.py
- Name: pspnet_r50-d8_512x512_20k_voc12aug
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 42.39
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.78
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r50-d8_512x512_20k_voc12aug/pspnet_r50-d8_512x512_20k_voc12aug_20200617_101958-ed5dfbd9.pth
Config: configs/pspnet/pspnet_r50-d8_512x512_20k_voc12aug.py
- Name: pspnet_r101-d8_512x512_20k_voc12aug
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 66.58
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 78.47
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101-d8_512x512_20k_voc12aug/pspnet_r101-d8_512x512_20k_voc12aug_20200617_102003-4aef3c9a.pth
Config: configs/pspnet/pspnet_r101-d8_512x512_20k_voc12aug.py
- Name: pspnet_r50-d8_512x512_40k_voc12aug
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 42.39
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.29
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r50-d8_512x512_40k_voc12aug/pspnet_r50-d8_512x512_40k_voc12aug_20200613_161222-ae9c1b8c.pth
Config: configs/pspnet/pspnet_r50-d8_512x512_40k_voc12aug.py
- Name: pspnet_r101-d8_512x512_40k_voc12aug
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 66.58
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 78.52
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101-d8_512x512_40k_voc12aug/pspnet_r101-d8_512x512_40k_voc12aug_20200613_161222-bc933b18.pth
Config: configs/pspnet/pspnet_r101-d8_512x512_40k_voc12aug.py
- Name: pspnet_r101-d8_480x480_40k_pascal_context
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 103.31
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 46.60
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101-d8_480x480_40k_pascal_context/pspnet_r101-d8_480x480_40k_pascal_context_20200911_211210-bf0f5d7c.pth
Config: configs/pspnet/pspnet_r101-d8_480x480_40k_pascal_context.py
- Name: pspnet_r101-d8_480x480_80k_pascal_context
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 103.31
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 46.03
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101-d8_480x480_80k_pascal_context/pspnet_r101-d8_480x480_80k_pascal_context_20200911_190530-c86d6233.pth
Config: configs/pspnet/pspnet_r101-d8_480x480_80k_pascal_context.py
- Name: pspnet_r101-d8_480x480_40k_pascal_context
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: None
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 52.02
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101-d8_480x480_40k_pascal_context_59/pspnet_r101-d8_480x480_40k_pascal_context_59_20210416_114524-86d44cd4.pth
Config: configs/pspnet/pspnet_r101-d8_480x480_40k_pascal_context.py
- Name: pspnet_r101-d8_480x480_80k_pascal_context_59
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: None
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 52.47
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101-d8_480x480_80k_pascal_context_59/pspnet_r101-d8_480x480_80k_pascal_context_59_20210416_114418-fa6caaa2.pth
Config: configs/pspnet/pspnet_r101-d8_480x480_80k_pascal_context_59.py

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Collections:
- Name: pspnet
Metadata:
Training Data:
- Cityscapes
- ADE20K
- Pascal VOC 2012 + Aug
- Pascal Context
- Pascal Context 59
Models:
- Name: pspnet_r50-d8_512x1024_40k_cityscapes
In Collection: pspnet
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 245.7
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 6.1
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.85
mIoU(ms+flip): 79.18
Config: configs/pspnet/pspnet_r50-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r50-d8_512x1024_40k_cityscapes/pspnet_r50-d8_512x1024_40k_cityscapes_20200605_003338-2966598c.pth
- Name: pspnet_r101-d8_512x1024_40k_cityscapes
In Collection: pspnet
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 373.13
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 9.6
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.34
mIoU(ms+flip): 79.74
Config: configs/pspnet/pspnet_r101-d8_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101-d8_512x1024_40k_cityscapes/pspnet_r101-d8_512x1024_40k_cityscapes_20200604_232751-467e7cf4.pth
- Name: pspnet_r50-d8_769x769_40k_cityscapes
In Collection: pspnet
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 568.18
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 6.9
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.26
mIoU(ms+flip): 79.88
Config: configs/pspnet/pspnet_r50-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r50-d8_769x769_40k_cityscapes/pspnet_r50-d8_769x769_40k_cityscapes_20200606_112725-86638686.pth
- Name: pspnet_r101-d8_769x769_40k_cityscapes
In Collection: pspnet
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 869.57
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 10.9
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.08
mIoU(ms+flip): 80.28
Config: configs/pspnet/pspnet_r101-d8_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101-d8_769x769_40k_cityscapes/pspnet_r101-d8_769x769_40k_cityscapes_20200606_112753-61c6f5be.pth
- Name: pspnet_r18-d8_512x1024_80k_cityscapes
In Collection: pspnet
Metadata:
backbone: R-18-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 63.65
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 1.7
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 74.87
mIoU(ms+flip): 76.04
Config: configs/pspnet/pspnet_r18-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r18-d8_512x1024_80k_cityscapes/pspnet_r18-d8_512x1024_80k_cityscapes_20201225_021458-09ffa746.pth
- Name: pspnet_r50-d8_512x1024_80k_cityscapes
In Collection: pspnet
Metadata:
backbone: R-50-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.55
mIoU(ms+flip): 79.79
Config: configs/pspnet/pspnet_r50-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r50-d8_512x1024_80k_cityscapes/pspnet_r50-d8_512x1024_80k_cityscapes_20200606_112131-2376f12b.pth
- Name: pspnet_r101-d8_512x1024_80k_cityscapes
In Collection: pspnet
Metadata:
backbone: R-101-D8
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.76
mIoU(ms+flip): 81.01
Config: configs/pspnet/pspnet_r101-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101-d8_512x1024_80k_cityscapes/pspnet_r101-d8_512x1024_80k_cityscapes_20200606_112211-e1e1100f.pth
- Name: pspnet_r18-d8_769x769_80k_cityscapes
In Collection: pspnet
Metadata:
backbone: R-18-D8
crop size: (769,769)
lr schd: 80000
inference time (ms/im):
- value: 161.29
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 1.9
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 75.9
mIoU(ms+flip): 77.86
Config: configs/pspnet/pspnet_r18-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r18-d8_769x769_80k_cityscapes/pspnet_r18-d8_769x769_80k_cityscapes_20201225_021458-3deefc62.pth
- Name: pspnet_r50-d8_769x769_80k_cityscapes
In Collection: pspnet
Metadata:
backbone: R-50-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.59
mIoU(ms+flip): 80.69
Config: configs/pspnet/pspnet_r50-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r50-d8_769x769_80k_cityscapes/pspnet_r50-d8_769x769_80k_cityscapes_20200606_210121-5ccf03dd.pth
- Name: pspnet_r101-d8_769x769_80k_cityscapes
In Collection: pspnet
Metadata:
backbone: R-101-D8
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.77
mIoU(ms+flip): 81.06
Config: configs/pspnet/pspnet_r101-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101-d8_769x769_80k_cityscapes/pspnet_r101-d8_769x769_80k_cityscapes_20200606_225055-dba412fa.pth
- Name: pspnet_r18b-d8_512x1024_80k_cityscapes
In Collection: pspnet
Metadata:
backbone: R-18b-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 61.43
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 1.5
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 74.23
mIoU(ms+flip): 75.79
Config: configs/pspnet/pspnet_r18b-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r18b-d8_512x1024_80k_cityscapes/pspnet_r18b-d8_512x1024_80k_cityscapes_20201226_063116-26928a60.pth
- Name: pspnet_r50b-d8_512x1024_80k_cityscapes
In Collection: pspnet
Metadata:
backbone: R-50b-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 232.56
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 6.0
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.22
mIoU(ms+flip): 79.46
Config: configs/pspnet/pspnet_r50b-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r50b-d8_512x1024_80k_cityscapes/pspnet_r50b-d8_512x1024_80k_cityscapes_20201225_094315-6344287a.pth
- Name: pspnet_r101b-d8_512x1024_80k_cityscapes
In Collection: pspnet
Metadata:
backbone: R-101b-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 362.32
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 9.5
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.69
mIoU(ms+flip): 80.79
Config: configs/pspnet/pspnet_r101b-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101b-d8_512x1024_80k_cityscapes/pspnet_r101b-d8_512x1024_80k_cityscapes_20201226_170012-3a4d38ab.pth
- Name: pspnet_r18b-d8_769x769_80k_cityscapes
In Collection: pspnet
Metadata:
backbone: R-18b-D8
crop size: (769,769)
lr schd: 80000
inference time (ms/im):
- value: 156.01
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 1.7
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 74.92
mIoU(ms+flip): 76.9
Config: configs/pspnet/pspnet_r18b-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r18b-d8_769x769_80k_cityscapes/pspnet_r18b-d8_769x769_80k_cityscapes_20201226_080942-bf98d186.pth
- Name: pspnet_r50b-d8_769x769_80k_cityscapes
In Collection: pspnet
Metadata:
backbone: R-50b-D8
crop size: (769,769)
lr schd: 80000
inference time (ms/im):
- value: 531.91
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 6.8
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.5
mIoU(ms+flip): 79.96
Config: configs/pspnet/pspnet_r50b-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r50b-d8_769x769_80k_cityscapes/pspnet_r50b-d8_769x769_80k_cityscapes_20201225_094316-4c643cf6.pth
- Name: pspnet_r101b-d8_769x769_80k_cityscapes
In Collection: pspnet
Metadata:
backbone: R-101b-D8
crop size: (769,769)
lr schd: 80000
inference time (ms/im):
- value: 854.7
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 10.8
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.87
mIoU(ms+flip): 80.04
Config: configs/pspnet/pspnet_r101b-d8_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101b-d8_769x769_80k_cityscapes/pspnet_r101b-d8_769x769_80k_cityscapes_20201226_171823-f0e7c293.pth
- Name: pspnet_r50-d8_512x512_80k_ade20k
In Collection: pspnet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 42.5
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 8.5
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 41.13
mIoU(ms+flip): 41.94
Config: configs/pspnet/pspnet_r50-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r50-d8_512x512_80k_ade20k/pspnet_r50-d8_512x512_80k_ade20k_20200615_014128-15a8b914.pth
- Name: pspnet_r101-d8_512x512_80k_ade20k
In Collection: pspnet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 65.36
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 12.0
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.57
mIoU(ms+flip): 44.35
Config: configs/pspnet/pspnet_r101-d8_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101-d8_512x512_80k_ade20k/pspnet_r101-d8_512x512_80k_ade20k_20200614_031423-b6e782f0.pth
- Name: pspnet_r50-d8_512x512_160k_ade20k
In Collection: pspnet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.48
mIoU(ms+flip): 43.44
Config: configs/pspnet/pspnet_r50-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r50-d8_512x512_160k_ade20k/pspnet_r50-d8_512x512_160k_ade20k_20200615_184358-1890b0bd.pth
- Name: pspnet_r101-d8_512x512_160k_ade20k
In Collection: pspnet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 44.39
mIoU(ms+flip): 45.35
Config: configs/pspnet/pspnet_r101-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101-d8_512x512_160k_ade20k/pspnet_r101-d8_512x512_160k_ade20k_20200615_100650-967c316f.pth
- Name: pspnet_r50-d8_512x512_20k_voc12aug
In Collection: pspnet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 42.39
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 6.1
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 76.78
mIoU(ms+flip): 77.61
Config: configs/pspnet/pspnet_r50-d8_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r50-d8_512x512_20k_voc12aug/pspnet_r50-d8_512x512_20k_voc12aug_20200617_101958-ed5dfbd9.pth
- Name: pspnet_r101-d8_512x512_20k_voc12aug
In Collection: pspnet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 66.58
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 9.6
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 78.47
mIoU(ms+flip): 79.25
Config: configs/pspnet/pspnet_r101-d8_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101-d8_512x512_20k_voc12aug/pspnet_r101-d8_512x512_20k_voc12aug_20200617_102003-4aef3c9a.pth
- Name: pspnet_r50-d8_512x512_40k_voc12aug
In Collection: pspnet
Metadata:
backbone: R-50-D8
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.29
mIoU(ms+flip): 78.48
Config: configs/pspnet/pspnet_r50-d8_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r50-d8_512x512_40k_voc12aug/pspnet_r50-d8_512x512_40k_voc12aug_20200613_161222-ae9c1b8c.pth
- Name: pspnet_r101-d8_512x512_40k_voc12aug
In Collection: pspnet
Metadata:
backbone: R-101-D8
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 78.52
mIoU(ms+flip): 79.57
Config: configs/pspnet/pspnet_r101-d8_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101-d8_512x512_40k_voc12aug/pspnet_r101-d8_512x512_40k_voc12aug_20200613_161222-bc933b18.pth
- Name: pspnet_r101-d8_480x480_40k_pascal_context
In Collection: pspnet
Metadata:
backbone: R-101-D8
crop size: (480,480)
lr schd: 40000
inference time (ms/im):
- value: 103.31
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (480,480)
memory (GB): 8.8
Results:
Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 46.6
mIoU(ms+flip): 47.78
Config: configs/pspnet/pspnet_r101-d8_480x480_40k_pascal_context.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101-d8_480x480_40k_pascal_context/pspnet_r101-d8_480x480_40k_pascal_context_20200911_211210-bf0f5d7c.pth
- Name: pspnet_r101-d8_480x480_80k_pascal_context
In Collection: pspnet
Metadata:
backbone: R-101-D8
crop size: (480,480)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Pascal Context
Metrics:
mIoU: 46.03
mIoU(ms+flip): 47.15
Config: configs/pspnet/pspnet_r101-d8_480x480_80k_pascal_context.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101-d8_480x480_80k_pascal_context/pspnet_r101-d8_480x480_80k_pascal_context_20200911_190530-c86d6233.pth
- Name: pspnet_r101-d8_480x480_40k_pascal_context_59
In Collection: pspnet
Metadata:
backbone: R-101-D8
crop size: (480,480)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal Context 59
Metrics:
mIoU: 52.02
mIoU(ms+flip): 53.54
Config: configs/pspnet/pspnet_r101-d8_480x480_40k_pascal_context_59.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101-d8_480x480_40k_pascal_context_59/pspnet_r101-d8_480x480_40k_pascal_context_59_20210416_114524-86d44cd4.pth
- Name: pspnet_r101-d8_480x480_80k_pascal_context_59
In Collection: pspnet
Metadata:
backbone: R-101-D8
crop size: (480,480)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Pascal Context 59
Metrics:
mIoU: 52.47
mIoU(ms+flip): 53.99
Config: configs/pspnet/pspnet_r101-d8_480x480_80k_pascal_context_59.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/pspnet/pspnet_r101-d8_480x480_80k_pascal_context_59/pspnet_r101-d8_480x480_80k_pascal_context_59_20210416_114418-fa6caaa2.pth

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@ -1,158 +0,0 @@
Collections:
- Name: ResNeSt
Metadata:
Training Data:
- Cityscapes
- ADE20K
Models:
- Name: fcn_s101-d8_512x1024_80k_cityscapes
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 418.41
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.56
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/resnest/fcn_s101-d8_512x1024_80k_cityscapes/fcn_s101-d8_512x1024_80k_cityscapes_20200807_140631-f8d155b3.pth
Config: configs/fcn/fcn_s101-d8_512x1024_80k_cityscapes.py
- Name: pspnet_s101-d8_512x1024_80k_cityscapes
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 396.83
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.57
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/resnest/pspnet_s101-d8_512x1024_80k_cityscapes/pspnet_s101-d8_512x1024_80k_cityscapes_20200807_140631-c75f3b99.pth
Config: configs/pspnet/pspnet_s101-d8_512x1024_80k_cityscapes.py
- Name: deeplabv3_s101-d8_512x1024_80k_cityscapes
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 531.91
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.67
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/resnest/deeplabv3_s101-d8_512x1024_80k_cityscapes/deeplabv3_s101-d8_512x1024_80k_cityscapes_20200807_144429-b73c4270.pth
Config: configs/deeplabv3/deeplabv3_s101-d8_512x1024_80k_cityscapes.py
- Name: deeplabv3plus_s101-d8_512x1024_80k_cityscapes
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 423.73
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.62
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/resnest/deeplabv3plus_s101-d8_512x1024_80k_cityscapes/deeplabv3plus_s101-d8_512x1024_80k_cityscapes_20200807_144429-1239eb43.pth
Config: configs/deeplabv3+/deeplabv3plus_s101-d8_512x1024_80k_cityscapes.py
- Name: fcn_s101-d8_512x512_160k_ade20k
In Collection: FCN
Metadata:
inference time (ms/im):
- value: 77.76
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 45.62
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/resnest/fcn_s101-d8_512x512_160k_ade20k/fcn_s101-d8_512x512_160k_ade20k_20200807_145416-d3160329.pth
Config: configs/fcn/fcn_s101-d8_512x512_160k_ade20k.py
- Name: pspnet_s101-d8_512x512_160k_ade20k
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: 76.8
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 45.44
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/resnest/pspnet_s101-d8_512x512_160k_ade20k/pspnet_s101-d8_512x512_160k_ade20k_20200807_145416-a6daa92a.pth
Config: configs/pspnet/pspnet_s101-d8_512x512_160k_ade20k.py
- Name: deeplabv3_s101-d8_512x512_160k_ade20k
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: 107.76
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 45.71
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/resnest/deeplabv3_s101-d8_512x512_160k_ade20k/deeplabv3_s101-d8_512x512_160k_ade20k_20200807_144503-17ecabe5.pth
Config: configs/deeplabv3/deeplabv3_s101-d8_512x512_160k_ade20k.py
- Name: deeplabv3plus_s101-d8_512x512_160k_ade20k
In Collection: DeepLabV3+
Metadata:
inference time (ms/im):
- value: 83.61
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 46.47
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/resnest/deeplabv3plus_s101-d8_512x512_160k_ade20k/deeplabv3plus_s101-d8_512x512_160k_ade20k_20200807_144503-27b26226.pth
Config: configs/deeplabv3+/deeplabv3plus_s101-d8_512x512_160k_ade20k.py

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configs/resnest/resnest.yml Normal file
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Collections:
- Name: resnest
Metadata:
Training Data:
- Cityscapes
- ADE20k
Models:
- Name: fcn_s101-d8_512x1024_80k_cityscapes
In Collection: resnest
Metadata:
backbone: S-101-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 418.41
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 11.4
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.56
mIoU(ms+flip): 78.98
Config: configs/resnest/fcn_s101-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/resnest/fcn_s101-d8_512x1024_80k_cityscapes/fcn_s101-d8_512x1024_80k_cityscapes_20200807_140631-f8d155b3.pth
- Name: pspnet_s101-d8_512x1024_80k_cityscapes
In Collection: resnest
Metadata:
backbone: S-101-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 396.83
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 11.8
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.57
mIoU(ms+flip): 79.19
Config: configs/resnest/pspnet_s101-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/resnest/pspnet_s101-d8_512x1024_80k_cityscapes/pspnet_s101-d8_512x1024_80k_cityscapes_20200807_140631-c75f3b99.pth
- Name: deeplabv3_s101-d8_512x1024_80k_cityscapes
In Collection: resnest
Metadata:
backbone: S-101-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 531.91
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 11.9
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.67
mIoU(ms+flip): 80.51
Config: configs/resnest/deeplabv3_s101-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/resnest/deeplabv3_s101-d8_512x1024_80k_cityscapes/deeplabv3_s101-d8_512x1024_80k_cityscapes_20200807_144429-b73c4270.pth
- Name: deeplabv3plus_s101-d8_512x1024_80k_cityscapes
In Collection: resnest
Metadata:
backbone: S-101-D8
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 423.73
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 13.2
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.62
mIoU(ms+flip): 80.27
Config: configs/resnest/deeplabv3plus_s101-d8_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/resnest/deeplabv3plus_s101-d8_512x1024_80k_cityscapes/deeplabv3plus_s101-d8_512x1024_80k_cityscapes_20200807_144429-1239eb43.pth
- Name: fcn_s101-d8_512x512_160k_ade20k
In Collection: resnest
Metadata:
backbone: S-101-D8
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 77.76
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 14.2
Results:
Task: Semantic Segmentation
Dataset: ADE20k
Metrics:
mIoU: 45.62
mIoU(ms+flip): 46.16
Config: configs/resnest/fcn_s101-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/resnest/fcn_s101-d8_512x512_160k_ade20k/fcn_s101-d8_512x512_160k_ade20k_20200807_145416-d3160329.pth
- Name: pspnet_s101-d8_512x512_160k_ade20k
In Collection: resnest
Metadata:
backbone: S-101-D8
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 76.8
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 14.2
Results:
Task: Semantic Segmentation
Dataset: ADE20k
Metrics:
mIoU: 45.44
mIoU(ms+flip): 46.28
Config: configs/resnest/pspnet_s101-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/resnest/pspnet_s101-d8_512x512_160k_ade20k/pspnet_s101-d8_512x512_160k_ade20k_20200807_145416-a6daa92a.pth
- Name: deeplabv3_s101-d8_512x512_160k_ade20k
In Collection: resnest
Metadata:
backbone: S-101-D8
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 107.76
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 14.6
Results:
Task: Semantic Segmentation
Dataset: ADE20k
Metrics:
mIoU: 45.71
mIoU(ms+flip): 46.59
Config: configs/resnest/deeplabv3_s101-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/resnest/deeplabv3_s101-d8_512x512_160k_ade20k/deeplabv3_s101-d8_512x512_160k_ade20k_20200807_144503-17ecabe5.pth
- Name: deeplabv3plus_s101-d8_512x512_160k_ade20k
In Collection: resnest
Metadata:
backbone: S-101-D8
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 83.61
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 16.2
Results:
Task: Semantic Segmentation
Dataset: ADE20k
Metrics:
mIoU: 46.47
mIoU(ms+flip): 47.27
Config: configs/resnest/deeplabv3plus_s101-d8_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/resnest/deeplabv3plus_s101-d8_512x512_160k_ade20k/deeplabv3plus_s101-d8_512x512_160k_ade20k_20200807_144503-27b26226.pth

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@ -1,83 +0,0 @@
Collections:
- Name: FPN
Metadata:
Training Data:
- Cityscapes
- Pascal VOC 2012 + Aug
- ADE20K
Models:
- Name: fpn_r50_512x1024_80k_cityscapes
In Collection: FPN
Metadata:
inference time (ms/im):
- value: 73.86
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 74.52
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/sem_fpn/fpn_r50_512x1024_80k_cityscapes/fpn_r50_512x1024_80k_cityscapes_20200717_021437-94018a0d.pth
Config: configs/fpn/fpn_r50_512x1024_80k_cityscapes.py
- Name: fpn_r101_512x1024_80k_cityscapes
In Collection: FPN
Metadata:
inference time (ms/im):
- value: 97.18
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 75.80
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/sem_fpn/fpn_r101_512x1024_80k_cityscapes/fpn_r101_512x1024_80k_cityscapes_20200717_012416-c5800d4c.pth
Config: configs/fpn/fpn_r101_512x1024_80k_cityscapes.py
- Name: fpn_r50_512x512_160k_ade20k
In Collection: FPN
Metadata:
inference time (ms/im):
- value: 17.93
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 37.49
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/sem_fpn/fpn_r50_512x512_160k_ade20k/fpn_r50_512x512_160k_ade20k_20200718_131734-5b5a6ab9.pth
Config: configs/fpn/fpn_r50_512x512_160k_ade20k.py
- Name: fpn_r101_512x512_160k_ade20k
In Collection: FPN
Metadata:
inference time (ms/im):
- value: 24.64
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 39.35
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/sem_fpn/fpn_r101_512x512_160k_ade20k/fpn_r101_512x512_160k_ade20k_20200718_131734-306b5004.pth
Config: configs/fpn/fpn_r101_512x512_160k_ade20k.py

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Collections:
- Name: sem_fpn
Metadata:
Training Data:
- Cityscapes
- ADE20K
Models:
- Name: fpn_r50_512x1024_80k_cityscapes
In Collection: sem_fpn
Metadata:
backbone: R-50
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 73.86
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 2.8
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 74.52
mIoU(ms+flip): 76.08
Config: configs/sem_fpn/fpn_r50_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/sem_fpn/fpn_r50_512x1024_80k_cityscapes/fpn_r50_512x1024_80k_cityscapes_20200717_021437-94018a0d.pth
- Name: fpn_r101_512x1024_80k_cityscapes
In Collection: sem_fpn
Metadata:
backbone: R-101
crop size: (512,1024)
lr schd: 80000
inference time (ms/im):
- value: 97.18
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 3.9
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 75.8
mIoU(ms+flip): 77.4
Config: configs/sem_fpn/fpn_r101_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/sem_fpn/fpn_r101_512x1024_80k_cityscapes/fpn_r101_512x1024_80k_cityscapes_20200717_012416-c5800d4c.pth
- Name: fpn_r50_512x512_160k_ade20k
In Collection: sem_fpn
Metadata:
backbone: R-50
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 17.93
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 4.9
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 37.49
mIoU(ms+flip): 39.09
Config: configs/sem_fpn/fpn_r50_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/sem_fpn/fpn_r50_512x512_160k_ade20k/fpn_r50_512x512_160k_ade20k_20200718_131734-5b5a6ab9.pth
- Name: fpn_r101_512x512_160k_ade20k
In Collection: sem_fpn
Metadata:
backbone: R-101
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 24.64
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 5.9
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 39.35
mIoU(ms+flip): 40.72
Config: configs/sem_fpn/fpn_r101_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/sem_fpn/fpn_r101_512x512_160k_ade20k/fpn_r101_512x512_160k_ade20k_20200718_131734-306b5004.pth

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Collections:
- Name: setr
Metadata:
Training Data:
- ADE20K
Models:
- Name: setr_naive_512x512_160k_b16_ade20k
In Collection: setr
Metadata:
backbone: ViT-L
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 211.86
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 18.4
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 48.28
mIoU(ms+flip): 49.56
Config: configs/setr/setr_naive_512x512_160k_b16_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/setr/setr_naive_512x512_160k_b16_ade20k/setr_naive_512x512_160k_b16_ade20k_20210619_191258-061f24f5.pth
- Name: setr_pup_512x512_160k_b16_ade20k
In Collection: setr
Metadata:
backbone: ViT-L
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 222.22
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 19.54
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 48.24
mIoU(ms+flip): 49.99
Config: configs/setr/setr_pup_512x512_160k_b16_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/setr/setr_pup_512x512_160k_b16_ade20k/setr_pup_512x512_160k_b16_ade20k_20210619_191343-7e0ce826.pth
- Name: setr_mla_512x512_160k_b8_ade20k
In Collection: setr
Metadata:
backbone: ViT-L
crop size: (512,512)
lr schd: 160000
memory (GB): 10.96
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 47.34
mIoU(ms+flip): 49.05
Config: configs/setr/setr_mla_512x512_160k_b8_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/setr/setr_mla_512x512_160k_b8_ade20k/setr_mla_512x512_160k_b8_ade20k_20210619_191118-c6d21df0.pth
- Name: setr_mla_512x512_160k_b16_ade20k
In Collection: setr
Metadata:
backbone: ViT-L
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 190.48
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 17.3
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 47.54
mIoU(ms+flip): 49.37
Config: configs/setr/setr_mla_512x512_160k_b16_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/setr/setr_mla_512x512_160k_b16_ade20k/setr_mla_512x512_160k_b16_ade20k_20210619_191057-f9741de7.pth

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Collections:
- Name: swin
Metadata:
Training Data:
- ADE20K
Models:
- Name: upernet_swin_tiny_patch4_window7_512x512_160k_ade20k_pretrain_224x224_1K
In Collection: swin
Metadata:
backbone: Swin-T
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 47.48
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 5.02
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 44.41
mIoU(ms+flip): 45.79
Config: configs/swin/upernet_swin_tiny_patch4_window7_512x512_160k_ade20k_pretrain_224x224_1K.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/swin/upernet_swin_tiny_patch4_window7_512x512_160k_ade20k_pretrain_224x224_1K/upernet_swin_tiny_patch4_window7_512x512_160k_ade20k_pretrain_224x224_1K_20210531_112542-e380ad3e.pth
- Name: upernet_swin_small_patch4_window7_512x512_160k_ade20k_pretrain_224x224_1K
In Collection: swin
Metadata:
backbone: Swin-S
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 67.93
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 6.17
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 47.72
mIoU(ms+flip): 49.24
Config: configs/swin/upernet_swin_small_patch4_window7_512x512_160k_ade20k_pretrain_224x224_1K.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/swin/upernet_swin_small_patch4_window7_512x512_160k_ade20k_pretrain_224x224_1K/upernet_swin_small_patch4_window7_512x512_160k_ade20k_pretrain_224x224_1K_20210526_192015-ee2fff1c.pth
- Name: upernet_swin_base_patch4_window7_512x512_160k_ade20k_pretrain_224x224_1K
In Collection: swin
Metadata:
backbone: Swin-B
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 79.05
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 7.61
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 47.99
mIoU(ms+flip): 49.57
Config: configs/swin/upernet_swin_base_patch4_window7_512x512_160k_ade20k_pretrain_224x224_1K.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/swin/upernet_swin_base_patch4_window7_512x512_160k_ade20k_pretrain_224x224_1K/upernet_swin_base_patch4_window7_512x512_160k_ade20k_pretrain_224x224_1K_20210526_192340-593b0e13.pth
- Name: upernet_swin_base_patch4_window7_512x512_160k_ade20k_pretrain_224x224_22K
In Collection: swin
Metadata:
backbone: Swin-B
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 50.31
mIoU(ms+flip): 51.9
Config: configs/swin/upernet_swin_base_patch4_window7_512x512_160k_ade20k_pretrain_224x224_22K.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/swin/upernet_swin_base_patch4_window7_512x512_160k_ade20k_pretrain_224x224_22K/upernet_swin_base_patch4_window7_512x512_160k_ade20k_pretrain_224x224_22K_20210526_211650-762e2178.pth
- Name: upernet_swin_base_patch4_window12_512x512_160k_ade20k_pretrain_384x384_1K
In Collection: swin
Metadata:
backbone: Swin-B
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 82.64
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 8.52
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 48.35
mIoU(ms+flip): 49.65
Config: configs/swin/upernet_swin_base_patch4_window12_512x512_160k_ade20k_pretrain_384x384_1K.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/swin/upernet_swin_base_patch4_window12_512x512_160k_ade20k_pretrain_384x384_1K/upernet_swin_base_patch4_window12_512x512_160k_ade20k_pretrain_384x384_1K_20210531_132020-05b22ea4.pth
- Name: upernet_swin_base_patch4_window12_512x512_160k_ade20k_pretrain_384x384_22K
In Collection: swin
Metadata:
backbone: Swin-B
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 50.76
mIoU(ms+flip): 52.4
Config: configs/swin/upernet_swin_base_patch4_window12_512x512_160k_ade20k_pretrain_384x384_22K.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/swin/upernet_swin_base_patch4_window12_512x512_160k_ade20k_pretrain_384x384_22K/upernet_swin_base_patch4_window12_512x512_160k_ade20k_pretrain_384x384_22K_20210531_125459-429057bf.pth

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@ -19,32 +19,32 @@
### DRIVE
| Backbone | Head | Image Size | Crop Size | Stride | Lr schd | Mem (GB) | Inf time (fps) | Dice | config | download |
| Method | Backbone | Image Size | Crop Size | Stride | Lr schd | Mem (GB) | Inf time (fps) | Dice | config | download |
| ----------- | --------- | ---------- | --------- | -----: | ------- | -------- | -------------: | ----: | ------------------------------------------------------------------------------------------------------------------------ | ---------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------- |
| UNet-S5-D16 | FCN | 584x565 | 64x64 | 42x42 | 40000 | 0.680 | - | 78.67 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/unet/fcn_unet_s5-d16_64x64_40k_drive.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/unet/unet_s5-d16_64x64_40k_drive/unet_s5-d16_64x64_40k_drive_20201223_191051-5daf6d3b.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/unet/unet_s5-d16_64x64_40k_drive/fcn_unet_s5-d16_64x64_40k_drive-20201223_191051.log.json) |
| UNet-S5-D16 | PSPNet | 584x565 | 64x64 | 42x42 | 40000 | 0.599 | - | 78.62 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/unet/pspnet_unet_s5-d16_64x64_40k_drive.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/unet/pspnet_unet_s5-d16_64x64_40k_drive/pspnet_unet_s5-d16_64x64_40k_drive_20201227_181818-aac73387.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/unet/pspnet_unet_s5-d16_64x64_40k_drive/pspnet_unet_s5-d16_64x64_40k_drive-20201227_181818.log.json) |
| UNet-S5-D16 | DeepLabV3 | 584x565 | 64x64 | 42x42 | 40000 | 0.596 | - | 78.69 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/unet/deeplabv3_unet_s5-d16_64x64_40k_drive.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/unet/deeplabv3_unet_s5-d16_64x64_40k_drive/deeplabv3_unet_s5-d16_64x64_40k_drive_20201226_094047-0671ff20.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/unet/deeplabv3_unet_s5-d16_64x64_40k_drive/deeplabv3_unet_s5-d16_64x64_40k_drive-20201226_094047.log.json) |
| FCN | UNet-S5-D16 | 584x565 | 64x64 | 42x42 | 40000 | 0.680 | - | 78.67 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/unet/fcn_unet_s5-d16_64x64_40k_drive.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/unet/unet_s5-d16_64x64_40k_drive/unet_s5-d16_64x64_40k_drive_20201223_191051-5daf6d3b.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/unet/unet_s5-d16_64x64_40k_drive/fcn_unet_s5-d16_64x64_40k_drive-20201223_191051.log.json) |
| PSPNet | UNet-S5-D16 | 584x565 | 64x64 | 42x42 | 40000 | 0.599 | - | 78.62 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/unet/pspnet_unet_s5-d16_64x64_40k_drive.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/unet/pspnet_unet_s5-d16_64x64_40k_drive/pspnet_unet_s5-d16_64x64_40k_drive_20201227_181818-aac73387.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/unet/pspnet_unet_s5-d16_64x64_40k_drive/pspnet_unet_s5-d16_64x64_40k_drive-20201227_181818.log.json) |
| DeepLabV3 | UNet-S5-D16 | 584x565 | 64x64 | 42x42 | 40000 | 0.596 | - | 78.69 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/unet/deeplabv3_unet_s5-d16_64x64_40k_drive.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/unet/deeplabv3_unet_s5-d16_64x64_40k_drive/deeplabv3_unet_s5-d16_64x64_40k_drive_20201226_094047-0671ff20.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/unet/deeplabv3_unet_s5-d16_64x64_40k_drive/deeplabv3_unet_s5-d16_64x64_40k_drive-20201226_094047.log.json) |
### STARE
| Backbone | Head | Image Size | Crop Size | Stride | Lr schd | Mem (GB) | Inf time (fps) | Dice | config | download |
| Method | Backbone | Image Size | Crop Size | Stride | Lr schd | Mem (GB) | Inf time (fps) | Dice | config | download |
| ----------- | --------- | ---------- | --------- | -----: | ------- | -------- | -------------: | ----: | -------------------------------------------------------------------------------------------------------------------------- | ------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------ |
| UNet-S5-D16 | FCN | 605x700 | 128x128 | 85x85 | 40000 | 0.968 | - | 81.02 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/unet/fcn_unet_s5-d16_128x128_40k_stare.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/unet/unet_s5-d16_128x128_40k_stare/unet_s5-d16_128x128_40k_stare_20201223_191051-7d77e78b.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/unet/unet_s5-d16_128x128_40k_stare/unet_s5-d16_128x128_40k_stare-20201223_191051.log.json) |
| UNet-S5-D16 | PSPNet | 605x700 | 128x128 | 85x85 | 40000 | 0.982 | - | 81.22 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/unet/pspnet_unet_s5-d16_128x128_40k_stare.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/unet/pspnet_unet_s5-d16_128x128_40k_stare/pspnet_unet_s5-d16_128x128_40k_stare_20201227_181818-3c2923c4.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/unet/pspnet_unet_s5-d16_128x128_40k_stare/pspnet_unet_s5-d16_128x128_40k_stare-20201227_181818.log.json) |
| UNet-S5-D16 | DeepLabV3 | 605x700 | 128x128 | 85x85 | 40000 | 0.999 | - | 80.93 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/unet/deeplabv3_unet_s5-d16_128x128_40k_stare.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/unet/deeplabv3_unet_s5-d16_128x128_40k_stare/deeplabv3_unet_s5-d16_128x128_40k_stare_20201226_094047-93dcb93c.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/unet/deeplabv3_unet_s5-d16_128x128_40k_stare/deeplabv3_unet_s5-d16_128x128_40k_stare-20201226_094047.log.json) |
| FCN | UNet-S5-D16 | 605x700 | 128x128 | 85x85 | 40000 | 0.968 | - | 81.02 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/unet/fcn_unet_s5-d16_128x128_40k_stare.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/unet/unet_s5-d16_128x128_40k_stare/unet_s5-d16_128x128_40k_stare_20201223_191051-7d77e78b.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/unet/unet_s5-d16_128x128_40k_stare/unet_s5-d16_128x128_40k_stare-20201223_191051.log.json) |
| PSPNet | UNet-S5-D16 | 605x700 | 128x128 | 85x85 | 40000 | 0.982 | - | 81.22 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/unet/pspnet_unet_s5-d16_128x128_40k_stare.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/unet/pspnet_unet_s5-d16_128x128_40k_stare/pspnet_unet_s5-d16_128x128_40k_stare_20201227_181818-3c2923c4.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/unet/pspnet_unet_s5-d16_128x128_40k_stare/pspnet_unet_s5-d16_128x128_40k_stare-20201227_181818.log.json) |
| DeepLabV3 | UNet-S5-D16 | 605x700 | 128x128 | 85x85 | 40000 | 0.999 | - | 80.93 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/unet/deeplabv3_unet_s5-d16_128x128_40k_stare.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/unet/deeplabv3_unet_s5-d16_128x128_40k_stare/deeplabv3_unet_s5-d16_128x128_40k_stare_20201226_094047-93dcb93c.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/unet/deeplabv3_unet_s5-d16_128x128_40k_stare/deeplabv3_unet_s5-d16_128x128_40k_stare-20201226_094047.log.json) |
### CHASE_DB1
| Backbone | Head | Image Size | Crop Size | Stride | Lr schd | Mem (GB) | Inf time (fps) | Dice | config | download |
| Method | Backbone | Image Size | Crop Size | Stride | Lr schd | Mem (GB) | Inf time (fps) | Dice | config | download |
| ----------- | --------- | ---------- | --------- | -----: | ------- | -------- | -------------: | ----: | -------------------------------------------------------------------------------------------------------------------------- | ------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------ |
| UNet-S5-D16 | FCN | 960x999 | 128x128 | 85x85 | 40000 | 0.968 | - | 80.24 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/unet/fcn_unet_s5-d16_128x128_40k_chase_db1.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/unet/unet_s5-d16_128x128_40k_chase_db1/unet_s5-d16_128x128_40k_chase_db1_20201223_191051-11543527.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/unet/unet_s5-d16_128x128_40k_chase_db1/unet_s5-d16_128x128_40k_chase_db1-20201223_191051.log.json) |
| UNet-S5-D16 | PSPNet | 960x999 | 128x128 | 85x85 | 40000 | 0.982 | - | 80.36 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/unet/pspnet_unet_s5-d16_128x128_40k_chase_db1.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/unet/pspnet_unet_s5-d16_128x128_40k_chase_db1/pspnet_unet_s5-d16_128x128_40k_chase_db1_20201227_181818-68d4e609.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/unet/pspnet_unet_s5-d16_128x128_40k_chase_db1/pspnet_unet_s5-d16_128x128_40k_chase_db1-20201227_181818.log.json) |
| UNet-S5-D16 | DeepLabV3 | 960x999 | 128x128 | 85x85 | 40000 | 0.999 | - | 80.47 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/unet/deeplabv3_unet_s5-d16_128x128_40k_chase_db1.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/unet/deeplabv3_unet_s5-d16_128x128_40k_chase_db1/deeplabv3_unet_s5-d16_128x128_40k_chase_db1_20201226_094047-4c5aefa3.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/unet/deeplabv3_unet_s5-d16_128x128_40k_chase_db1/deeplabv3_unet_s5-d16_128x128_40k_chase_db1-20201226_094047.log.json) |
| FCN | UNet-S5-D16 | 960x999 | 128x128 | 85x85 | 40000 | 0.968 | - | 80.24 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/unet/fcn_unet_s5-d16_128x128_40k_chase_db1.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/unet/unet_s5-d16_128x128_40k_chase_db1/unet_s5-d16_128x128_40k_chase_db1_20201223_191051-11543527.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/unet/unet_s5-d16_128x128_40k_chase_db1/unet_s5-d16_128x128_40k_chase_db1-20201223_191051.log.json) |
| PSPNet | UNet-S5-D16 | 960x999 | 128x128 | 85x85 | 40000 | 0.982 | - | 80.36 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/unet/pspnet_unet_s5-d16_128x128_40k_chase_db1.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/unet/pspnet_unet_s5-d16_128x128_40k_chase_db1/pspnet_unet_s5-d16_128x128_40k_chase_db1_20201227_181818-68d4e609.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/unet/pspnet_unet_s5-d16_128x128_40k_chase_db1/pspnet_unet_s5-d16_128x128_40k_chase_db1-20201227_181818.log.json) |
| DeepLabV3 | UNet-S5-D16 | 960x999 | 128x128 | 85x85 | 40000 | 0.999 | - | 80.47 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/unet/deeplabv3_unet_s5-d16_128x128_40k_chase_db1.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/unet/deeplabv3_unet_s5-d16_128x128_40k_chase_db1/deeplabv3_unet_s5-d16_128x128_40k_chase_db1_20201226_094047-4c5aefa3.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/unet/deeplabv3_unet_s5-d16_128x128_40k_chase_db1/deeplabv3_unet_s5-d16_128x128_40k_chase_db1-20201226_094047.log.json) |
### HRF
| Backbone | Head | Image Size | Crop Size | Stride | Lr schd | Mem (GB) | Inf time (fps) | Dice | config | download |
| Method | Backbone | Image Size | Crop Size | Stride | Lr schd | Mem (GB) | Inf time (fps) | Dice | config | download |
| ----------- | --------- | ---------- | --------- | -----: | ------- | -------- | -------------: | ----: | -------------------------------------------------------------------------------------------------------------------------- | ------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------ |
| UNet-S5-D16 | FCN | 2336x3504 | 256x256 | 170x170 | 40000 | 2.525 | - | 79.45 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/unet/fcn_unet_s5-d16_256x256_40k_hrf.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/unet/unet_s5-d16_256x256_40k_hrf/unet_s5-d16_256x256_40k_hrf_20201223_173724-d89cf1ed.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/unet/unet_s5-d16_256x256_40k_hrf/unet_s5-d16_256x256_40k_hrf-20201223_173724.log.json) |
| UNet-S5-D16 | PSPNet | 2336x3504 | 256x256 | 170x170 | 40000 | 2.588 | - | 80.07 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/unet/pspnet_unet_s5-d16_256x256_40k_hrf.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/unet/pspnet_unet_s5-d16_256x256_40k_hrf/pspnet_unet_s5-d16_256x256_40k_hrf_20201227_181818-fdb7e29b.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/unet/pspnet_unet_s5-d16_256x256_40k_hrf/pspnet_unet_s5-d16_256x256_40k_hrf-20201227_181818.log.json) |
| UNet-S5-D16 | DeepLabV3 | 2336x3504 | 256x256 | 170x170 | 40000 | 2.604 | - | 80.21 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/unet/deeplabv3_unet_s5-d16_256x256_40k_hrf.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/unet/deeplabv3_unet_s5-d16_256x256_40k_hrf/deeplabv3_unet_s5-d16_256x256_40k_hrf_20201226_094047-3a1fdf85.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/unet/deeplabv3_unet_s5-d16_256x256_40k_hrf/deeplabv3_unet_s5-d16_256x256_40k_hrf-20201226_094047.log.json) |
| FCN | UNet-S5-D16 | 2336x3504 | 256x256 | 170x170 | 40000 | 2.525 | - | 79.45 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/unet/fcn_unet_s5-d16_256x256_40k_hrf.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/unet/unet_s5-d16_256x256_40k_hrf/unet_s5-d16_256x256_40k_hrf_20201223_173724-d89cf1ed.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/unet/unet_s5-d16_256x256_40k_hrf/unet_s5-d16_256x256_40k_hrf-20201223_173724.log.json) |
| PSPNet | UNet-S5-D16 | 2336x3504 | 256x256 | 170x170 | 40000 | 2.588 | - | 80.07 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/unet/pspnet_unet_s5-d16_256x256_40k_hrf.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/unet/pspnet_unet_s5-d16_256x256_40k_hrf/pspnet_unet_s5-d16_256x256_40k_hrf_20201227_181818-fdb7e29b.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/unet/pspnet_unet_s5-d16_256x256_40k_hrf/pspnet_unet_s5-d16_256x256_40k_hrf-20201227_181818.log.json) |
| DeepLabV3 | UNet-S5-D16 | 2336x3504 | 256x256 | 170x170 | 40000 | 2.604 | - | 80.21 | [config](https://github.com/open-mmlab/mmsegmentation/blob/master/configs/unet/deeplabv3_unet_s5-d16_256x256_40k_hrf.py) | [model](https://download.openmmlab.com/mmsegmentation/v0.5/unet/deeplabv3_unet_s5-d16_256x256_40k_hrf/deeplabv3_unet_s5-d16_256x256_40k_hrf_20201226_094047-3a1fdf85.pth) &#124; [log](https://download.openmmlab.com/mmsegmentation/v0.5/unet/deeplabv3_unet_s5-d16_256x256_40k_hrf/deeplabv3_unet_s5-d16_256x256_40k_hrf-20201226_094047.log.json) |

View File

@ -1,227 +0,0 @@
Models:
- Name: fcn_unet_s5-d16_64x64_40k_drive
In Collection: FCN
Metadata:
inference time (ms/im):
- value: None
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: DRIVE
Metrics:
mIoU: 0.680
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/unet/fcn_unet_s5-d16_64x64_40k_drive/fcn_unet_s5-d16_64x64_40k_drive_20201223_191051-26cee593.pth
Config: configs/unet-s5-d16/fcn_unet_s5-d16_64x64_40k_drive.py
- Name: pspnet_unet_s5-d16_64x64_40k_drive
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: None
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: DRIVE
Metrics:
mIoU: 0.599
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/unet/pspnet_unet_s5-d16_64x64_40k_drive/pspnet_unet_s5-d16_64x64_40k_drive_20201227_181818-aac73387.pth
Config: configs/unet-s5-d16/pspnet_unet_s5-d16_64x64_40k_drive.py
- Name: deeplabv3_unet_s5-d16_64x64_40k_drive
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: None
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: DRIVE
Metrics:
mIoU: 0.596
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/unet/deeplabv3_unet_s5-d16_64x64_40k_drive/deeplabv3_unet_s5-d16_64x64_40k_drive_20201226_094047-0671ff20.pth
Config: configs/unet-s5-d16/deeplabv3_unet_s5-d16_64x64_40k_drive.py
- Name: fcn_unet_s5-d16_128x128_40k_stare
In Collection: FCN
Metadata:
inference time (ms/im):
- value: None
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: STARE
Metrics:
mIoU: 0.968
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/unet/fcn_unet_s5-d16_128x128_40k_stare/fcn_unet_s5-d16_128x128_40k_stare_20201223_191051-6ea7cfda.pth
Config: configs/unet-s5-d16/fcn_unet_s5-d16_128x128_40k_stare.py
- Name: pspnet_unet_s5-d16_128x128_40k_stare
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: None
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: STARE
Metrics:
mIoU: 0.982
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/unet/pspnet_unet_s5-d16_128x128_40k_stare/pspnet_unet_s5-d16_128x128_40k_stare_20201227_181818-3c2923c4.pth
Config: configs/unet-s5-d16/pspnet_unet_s5-d16_128x128_40k_stare.py
- Name: deeplabv3_unet_s5-d16_128x128_40k_stare
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: None
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: STARE
Metrics:
mIoU: 0.999
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/unet/deeplabv3_unet_s5-d16_128x128_40k_stare/deeplabv3_unet_s5-d16_128x128_40k_stare_20201226_094047-93dcb93c.pth
Config: configs/unet-s5-d16/deeplabv3_unet_s5-d16_128x128_40k_stare.py
- Name: fcn_unet_s5-d16_128x128_40k_chase_db1
In Collection: FCN
Metadata:
inference time (ms/im):
- value: None
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: CHASE_DB1
Metrics:
mIoU: 0.968
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/unet/fcn_unet_s5-d16_128x128_40k_chase_db1/fcn_unet_s5-d16_128x128_40k_chase_db1_20201223_191051-95852f45.pth
Config: configs/unet-s5-d16/fcn_unet_s5-d16_128x128_40k_chase_db1.py
- Name: pspnet_unet_s5-d16_128x128_40k_chase_db1
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: None
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: CHASE_DB1
Metrics:
mIoU: 0.982
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/unet/pspnet_unet_s5-d16_128x128_40k_chase_db1/pspnet_unet_s5-d16_128x128_40k_chase_db1_20201227_181818-68d4e609.pth
Config: configs/unet-s5-d16/pspnet_unet_s5-d16_128x128_40k_chase_db1.py
- Name: deeplabv3_unet_s5-d16_128x128_40k_chase_db1
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: None
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: CHASE_DB1
Metrics:
mIoU: 0.999
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/unet/deeplabv3_unet_s5-d16_128x128_40k_chase_db1/deeplabv3_unet_s5-d16_128x128_40k_chase_db1_20201226_094047-4c5aefa3.pth
Config: configs/unet-s5-d16/deeplabv3_unet_s5-d16_128x128_40k_chase_db1.py
- Name: fcn_unet_s5-d16_256x256_40k_hrf
In Collection: FCN
Metadata:
inference time (ms/im):
- value: None
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: HRF
Metrics:
mIoU: 2.525
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/unet/fcn_unet_s5-d16_256x256_40k_hrf/fcn_unet_s5-d16_256x256_40k_hrf_20201223_173724-df3ec8c4.pth
Config: configs/unet-s5-d16/fcn_unet_s5-d16_256x256_40k_hrf.py
- Name: pspnet_unet_s5-d16_256x256_40k_hrf
In Collection: PSPNet
Metadata:
inference time (ms/im):
- value: None
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: HRF
Metrics:
mIoU: 2.588
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/unet/pspnet_unet_s5-d16_256x256_40k_hrf/pspnet_unet_s5-d16_256x256_40k_hrf_20201227_181818-fdb7e29b.pth
Config: configs/unet-s5-d16/pspnet_unet_s5-d16_256x256_40k_hrf.py
- Name: deeplabv3_unet_s5-d16_256x256_40k_hrf
In Collection: DeepLabV3
Metadata:
inference time (ms/im):
- value: None
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: HRF
Metrics:
mIoU: 2.604
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/unet/deeplabv3_unet_s5-d16_256x256_40k_hrf/deeplabv3_unet_s5-d16_256x256_40k_hrf_20201226_094047-3a1fdf85.pth
Config: configs/unet-s5-d16/deeplabv3_unet_s5-d16_256x256_40k_hrf.py

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Collections:
- Name: unet
Metadata:
Training Data:
- DRIVE
- STARE
- CHASE_DB1
- HRF
Models:
- Name: fcn_unet_s5-d16_64x64_40k_drive
In Collection: unet
Metadata:
backbone: UNet-S5-D16
crop size: (64,64)
lr schd: 40000
memory (GB): 0.68
Results:
Task: Semantic Segmentation
Dataset: DRIVE
Metrics:
mIoU: 78.67
Config: configs/unet/fcn_unet_s5-d16_64x64_40k_drive.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/unet/unet_s5-d16_64x64_40k_drive/unet_s5-d16_64x64_40k_drive_20201223_191051-5daf6d3b.pth
- Name: pspnet_unet_s5-d16_64x64_40k_drive
In Collection: unet
Metadata:
backbone: UNet-S5-D16
crop size: (64,64)
lr schd: 40000
memory (GB): 0.599
Results:
Task: Semantic Segmentation
Dataset: DRIVE
Metrics:
mIoU: 78.62
Config: configs/unet/pspnet_unet_s5-d16_64x64_40k_drive.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/unet/pspnet_unet_s5-d16_64x64_40k_drive/pspnet_unet_s5-d16_64x64_40k_drive_20201227_181818-aac73387.pth
- Name: deeplabv3_unet_s5-d16_64x64_40k_drive
In Collection: unet
Metadata:
backbone: UNet-S5-D16
crop size: (64,64)
lr schd: 40000
memory (GB): 0.596
Results:
Task: Semantic Segmentation
Dataset: DRIVE
Metrics:
mIoU: 78.69
Config: configs/unet/deeplabv3_unet_s5-d16_64x64_40k_drive.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/unet/deeplabv3_unet_s5-d16_64x64_40k_drive/deeplabv3_unet_s5-d16_64x64_40k_drive_20201226_094047-0671ff20.pth
- Name: fcn_unet_s5-d16_128x128_40k_stare
In Collection: unet
Metadata:
backbone: UNet-S5-D16
crop size: (128,128)
lr schd: 40000
memory (GB): 0.968
Results:
Task: Semantic Segmentation
Dataset: STARE
Metrics:
mIoU: 81.02
Config: configs/unet/fcn_unet_s5-d16_128x128_40k_stare.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/unet/unet_s5-d16_128x128_40k_stare/unet_s5-d16_128x128_40k_stare_20201223_191051-7d77e78b.pth
- Name: pspnet_unet_s5-d16_128x128_40k_stare
In Collection: unet
Metadata:
backbone: UNet-S5-D16
crop size: (128,128)
lr schd: 40000
memory (GB): 0.982
Results:
Task: Semantic Segmentation
Dataset: STARE
Metrics:
mIoU: 81.22
Config: configs/unet/pspnet_unet_s5-d16_128x128_40k_stare.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/unet/pspnet_unet_s5-d16_128x128_40k_stare/pspnet_unet_s5-d16_128x128_40k_stare_20201227_181818-3c2923c4.pth
- Name: deeplabv3_unet_s5-d16_128x128_40k_stare
In Collection: unet
Metadata:
backbone: UNet-S5-D16
crop size: (128,128)
lr schd: 40000
memory (GB): 0.999
Results:
Task: Semantic Segmentation
Dataset: STARE
Metrics:
mIoU: 80.93
Config: configs/unet/deeplabv3_unet_s5-d16_128x128_40k_stare.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/unet/deeplabv3_unet_s5-d16_128x128_40k_stare/deeplabv3_unet_s5-d16_128x128_40k_stare_20201226_094047-93dcb93c.pth
- Name: fcn_unet_s5-d16_128x128_40k_chase_db1
In Collection: unet
Metadata:
backbone: UNet-S5-D16
crop size: (128,128)
lr schd: 40000
memory (GB): 0.968
Results:
Task: Semantic Segmentation
Dataset: CHASE_DB1
Metrics:
mIoU: 80.24
Config: configs/unet/fcn_unet_s5-d16_128x128_40k_chase_db1.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/unet/unet_s5-d16_128x128_40k_chase_db1/unet_s5-d16_128x128_40k_chase_db1_20201223_191051-11543527.pth
- Name: pspnet_unet_s5-d16_128x128_40k_chase_db1
In Collection: unet
Metadata:
backbone: UNet-S5-D16
crop size: (128,128)
lr schd: 40000
memory (GB): 0.982
Results:
Task: Semantic Segmentation
Dataset: CHASE_DB1
Metrics:
mIoU: 80.36
Config: configs/unet/pspnet_unet_s5-d16_128x128_40k_chase_db1.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/unet/pspnet_unet_s5-d16_128x128_40k_chase_db1/pspnet_unet_s5-d16_128x128_40k_chase_db1_20201227_181818-68d4e609.pth
- Name: deeplabv3_unet_s5-d16_128x128_40k_chase_db1
In Collection: unet
Metadata:
backbone: UNet-S5-D16
crop size: (128,128)
lr schd: 40000
memory (GB): 0.999
Results:
Task: Semantic Segmentation
Dataset: CHASE_DB1
Metrics:
mIoU: 80.47
Config: configs/unet/deeplabv3_unet_s5-d16_128x128_40k_chase_db1.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/unet/deeplabv3_unet_s5-d16_128x128_40k_chase_db1/deeplabv3_unet_s5-d16_128x128_40k_chase_db1_20201226_094047-4c5aefa3.pth
- Name: fcn_unet_s5-d16_256x256_40k_hrf
In Collection: unet
Metadata:
backbone: UNet-S5-D16
crop size: (256,256)
lr schd: 40000
memory (GB): 2.525
Results:
Task: Semantic Segmentation
Dataset: HRF
Metrics:
mIoU: 79.45
Config: configs/unet/fcn_unet_s5-d16_256x256_40k_hrf.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/unet/unet_s5-d16_256x256_40k_hrf/unet_s5-d16_256x256_40k_hrf_20201223_173724-d89cf1ed.pth
- Name: pspnet_unet_s5-d16_256x256_40k_hrf
In Collection: unet
Metadata:
backbone: UNet-S5-D16
crop size: (256,256)
lr schd: 40000
memory (GB): 2.588
Results:
Task: Semantic Segmentation
Dataset: HRF
Metrics:
mIoU: 80.07
Config: configs/unet/pspnet_unet_s5-d16_256x256_40k_hrf.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/unet/pspnet_unet_s5-d16_256x256_40k_hrf/pspnet_unet_s5-d16_256x256_40k_hrf_20201227_181818-fdb7e29b.pth
- Name: deeplabv3_unet_s5-d16_256x256_40k_hrf
In Collection: unet
Metadata:
backbone: UNet-S5-D16
crop size: (256,256)
lr schd: 40000
memory (GB): 2.604
Results:
Task: Semantic Segmentation
Dataset: HRF
Metrics:
mIoU: 80.21
Config: configs/unet/deeplabv3_unet_s5-d16_256x256_40k_hrf.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/unet/deeplabv3_unet_s5-d16_256x256_40k_hrf/deeplabv3_unet_s5-d16_256x256_40k_hrf_20201226_094047-3a1fdf85.pth

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@ -1,311 +0,0 @@
Collections:
- Name: UPerNet
Metadata:
Training Data:
- Cityscapes
- Pascal VOC 2012 + Aug
- ADE20K
Models:
- Name: upernet_r50_512x1024_40k_cityscapes
In Collection: UPerNet
Metadata:
inference time (ms/im):
- value: 235.29
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.10
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r50_512x1024_40k_cityscapes/upernet_r50_512x1024_40k_cityscapes_20200605_094827-aa54cb54.pth
Config: configs/upernet/upernet_r50_512x1024_40k_cityscapes.py
- Name: upernet_r101_512x1024_40k_cityscapes
In Collection: UPerNet
Metadata:
inference time (ms/im):
- value: 263.85
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.69
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r101_512x1024_40k_cityscapes/upernet_r101_512x1024_40k_cityscapes_20200605_094933-ebce3b10.pth
Config: configs/upernet/upernet_r101_512x1024_40k_cityscapes.py
- Name: upernet_r50_769x769_40k_cityscapes
In Collection: UPerNet
Metadata:
inference time (ms/im):
- value: 568.18
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.98
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r50_769x769_40k_cityscapes/upernet_r50_769x769_40k_cityscapes_20200530_033048-92d21539.pth
Config: configs/upernet/upernet_r50_769x769_40k_cityscapes.py
- Name: upernet_r101_769x769_40k_cityscapes
In Collection: UPerNet
Metadata:
inference time (ms/im):
- value: 641.03
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.03
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r101_769x769_40k_cityscapes/upernet_r101_769x769_40k_cityscapes_20200530_040819-83c95d01.pth
Config: configs/upernet/upernet_r101_769x769_40k_cityscapes.py
- Name: upernet_r50_512x1024_80k_cityscapes
In Collection: UPerNet
Metadata:
inference time (ms/im):
- value: 235.29
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.19
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r50_512x1024_80k_cityscapes/upernet_r50_512x1024_80k_cityscapes_20200607_052207-848beca8.pth
Config: configs/upernet/upernet_r50_512x1024_80k_cityscapes.py
- Name: upernet_r101_512x1024_80k_cityscapes
In Collection: UPerNet
Metadata:
inference time (ms/im):
- value: 263.85
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.40
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r101_512x1024_80k_cityscapes/upernet_r101_512x1024_80k_cityscapes_20200607_002403-f05f2345.pth
Config: configs/upernet/upernet_r101_512x1024_80k_cityscapes.py
- Name: upernet_r50_769x769_80k_cityscapes
In Collection: UPerNet
Metadata:
inference time (ms/im):
- value: 568.18
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.39
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r50_769x769_80k_cityscapes/upernet_r50_769x769_80k_cityscapes_20200607_005107-82ae7d15.pth
Config: configs/upernet/upernet_r50_769x769_80k_cityscapes.py
- Name: upernet_r101_769x769_80k_cityscapes
In Collection: UPerNet
Metadata:
inference time (ms/im):
- value: 641.03
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.10
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r101_769x769_80k_cityscapes/upernet_r101_769x769_80k_cityscapes_20200607_001014-082fc334.pth
Config: configs/upernet/upernet_r101_769x769_80k_cityscapes.py
- Name: upernet_r50_512x512_80k_ade20k
In Collection: UPerNet
Metadata:
inference time (ms/im):
- value: 42.74
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 40.70
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r50_512x512_80k_ade20k/upernet_r50_512x512_80k_ade20k_20200614_144127-ecc8377b.pth
Config: configs/upernet/upernet_r50_512x512_80k_ade20k.py
- Name: upernet_r101_512x512_80k_ade20k
In Collection: UPerNet
Metadata:
inference time (ms/im):
- value: 49.16
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.91
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r101_512x512_80k_ade20k/upernet_r101_512x512_80k_ade20k_20200614_185117-32e4db94.pth
Config: configs/upernet/upernet_r101_512x512_80k_ade20k.py
- Name: upernet_r50_512x512_160k_ade20k
In Collection: UPerNet
Metadata:
inference time (ms/im):
- value: 42.74
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.05
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r50_512x512_160k_ade20k/upernet_r50_512x512_160k_ade20k_20200615_184328-8534de8d.pth
Config: configs/upernet/upernet_r50_512x512_160k_ade20k.py
- Name: upernet_r101_512x512_160k_ade20k
In Collection: UPerNet
Metadata:
inference time (ms/im):
- value: 49.16
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.82
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r101_512x512_160k_ade20k/upernet_r101_512x512_160k_ade20k_20200615_161951-91b32684.pth
Config: configs/upernet/upernet_r101_512x512_160k_ade20k.py
- Name: upernet_r50_512x512_20k_voc12aug
In Collection: UPerNet
Metadata:
inference time (ms/im):
- value: 43.16
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 74.82
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r50_512x512_20k_voc12aug/upernet_r50_512x512_20k_voc12aug_20200617_165330-5b5890a7.pth
Config: configs/upernet/upernet_r50_512x512_20k_voc12aug.py
- Name: upernet_r101_512x512_20k_voc12aug
In Collection: UPerNet
Metadata:
inference time (ms/im):
- value: 50.05
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.10
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r101_512x512_20k_voc12aug/upernet_r101_512x512_20k_voc12aug_20200617_165629-f14e7f27.pth
Config: configs/upernet/upernet_r101_512x512_20k_voc12aug.py
- Name: upernet_r50_512x512_40k_voc12aug
In Collection: UPerNet
Metadata:
inference time (ms/im):
- value: 43.16
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 75.92
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r50_512x512_40k_voc12aug/upernet_r50_512x512_40k_voc12aug_20200613_162257-ca9bcc6b.pth
Config: configs/upernet/upernet_r50_512x512_40k_voc12aug.py
- Name: upernet_r101_512x512_40k_voc12aug
In Collection: UPerNet
Metadata:
inference time (ms/im):
- value: 50.05
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
Results:
- Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.43
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r101_512x512_40k_voc12aug/upernet_r101_512x512_40k_voc12aug_20200613_163549-e26476ac.pth
Config: configs/upernet/upernet_r101_512x512_40k_voc12aug.py

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Collections:
- Name: upernet
Metadata:
Training Data:
- Cityscapes
- ADE20K
- Pascal VOC 2012 + Aug
Models:
- Name: upernet_r50_512x1024_40k_cityscapes
In Collection: upernet
Metadata:
backbone: R-50
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 235.29
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 6.4
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.1
mIoU(ms+flip): 78.37
Config: configs/upernet/upernet_r50_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r50_512x1024_40k_cityscapes/upernet_r50_512x1024_40k_cityscapes_20200605_094827-aa54cb54.pth
- Name: upernet_r101_512x1024_40k_cityscapes
In Collection: upernet
Metadata:
backbone: R-101
crop size: (512,1024)
lr schd: 40000
inference time (ms/im):
- value: 263.85
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,1024)
memory (GB): 7.4
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.69
mIoU(ms+flip): 80.11
Config: configs/upernet/upernet_r101_512x1024_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r101_512x1024_40k_cityscapes/upernet_r101_512x1024_40k_cityscapes_20200605_094933-ebce3b10.pth
- Name: upernet_r50_769x769_40k_cityscapes
In Collection: upernet
Metadata:
backbone: R-50
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 568.18
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 7.2
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 77.98
mIoU(ms+flip): 79.7
Config: configs/upernet/upernet_r50_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r50_769x769_40k_cityscapes/upernet_r50_769x769_40k_cityscapes_20200530_033048-92d21539.pth
- Name: upernet_r101_769x769_40k_cityscapes
In Collection: upernet
Metadata:
backbone: R-101
crop size: (769,769)
lr schd: 40000
inference time (ms/im):
- value: 641.03
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (769,769)
memory (GB): 8.4
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.03
mIoU(ms+flip): 80.77
Config: configs/upernet/upernet_r101_769x769_40k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r101_769x769_40k_cityscapes/upernet_r101_769x769_40k_cityscapes_20200530_040819-83c95d01.pth
- Name: upernet_r50_512x1024_80k_cityscapes
In Collection: upernet
Metadata:
backbone: R-50
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 78.19
mIoU(ms+flip): 79.19
Config: configs/upernet/upernet_r50_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r50_512x1024_80k_cityscapes/upernet_r50_512x1024_80k_cityscapes_20200607_052207-848beca8.pth
- Name: upernet_r101_512x1024_80k_cityscapes
In Collection: upernet
Metadata:
backbone: R-101
crop size: (512,1024)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.4
mIoU(ms+flip): 80.46
Config: configs/upernet/upernet_r101_512x1024_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r101_512x1024_80k_cityscapes/upernet_r101_512x1024_80k_cityscapes_20200607_002403-f05f2345.pth
- Name: upernet_r50_769x769_80k_cityscapes
In Collection: upernet
Metadata:
backbone: R-50
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 79.39
mIoU(ms+flip): 80.92
Config: configs/upernet/upernet_r50_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r50_769x769_80k_cityscapes/upernet_r50_769x769_80k_cityscapes_20200607_005107-82ae7d15.pth
- Name: upernet_r101_769x769_80k_cityscapes
In Collection: upernet
Metadata:
backbone: R-101
crop size: (769,769)
lr schd: 80000
Results:
Task: Semantic Segmentation
Dataset: Cityscapes
Metrics:
mIoU: 80.1
mIoU(ms+flip): 81.49
Config: configs/upernet/upernet_r101_769x769_80k_cityscapes.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r101_769x769_80k_cityscapes/upernet_r101_769x769_80k_cityscapes_20200607_001014-082fc334.pth
- Name: upernet_r50_512x512_80k_ade20k
In Collection: upernet
Metadata:
backbone: R-50
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 42.74
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 8.1
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 40.7
mIoU(ms+flip): 41.81
Config: configs/upernet/upernet_r50_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r50_512x512_80k_ade20k/upernet_r50_512x512_80k_ade20k_20200614_144127-ecc8377b.pth
- Name: upernet_r101_512x512_80k_ade20k
In Collection: upernet
Metadata:
backbone: R-101
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 49.16
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 9.1
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.91
mIoU(ms+flip): 43.96
Config: configs/upernet/upernet_r101_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r101_512x512_80k_ade20k/upernet_r101_512x512_80k_ade20k_20200614_185117-32e4db94.pth
- Name: upernet_r50_512x512_160k_ade20k
In Collection: upernet
Metadata:
backbone: R-50
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.05
mIoU(ms+flip): 42.78
Config: configs/upernet/upernet_r50_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r50_512x512_160k_ade20k/upernet_r50_512x512_160k_ade20k_20200615_184328-8534de8d.pth
- Name: upernet_r101_512x512_160k_ade20k
In Collection: upernet
Metadata:
backbone: R-101
crop size: (512,512)
lr schd: 160000
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.82
mIoU(ms+flip): 44.85
Config: configs/upernet/upernet_r101_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r101_512x512_160k_ade20k/upernet_r101_512x512_160k_ade20k_20200615_161951-91b32684.pth
- Name: upernet_r50_512x512_20k_voc12aug
In Collection: upernet
Metadata:
backbone: R-50
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 43.16
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 6.4
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 74.82
mIoU(ms+flip): 76.35
Config: configs/upernet/upernet_r50_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r50_512x512_20k_voc12aug/upernet_r50_512x512_20k_voc12aug_20200617_165330-5b5890a7.pth
- Name: upernet_r101_512x512_20k_voc12aug
In Collection: upernet
Metadata:
backbone: R-101
crop size: (512,512)
lr schd: 20000
inference time (ms/im):
- value: 50.05
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 7.5
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.1
mIoU(ms+flip): 78.29
Config: configs/upernet/upernet_r101_512x512_20k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r101_512x512_20k_voc12aug/upernet_r101_512x512_20k_voc12aug_20200617_165629-f14e7f27.pth
- Name: upernet_r50_512x512_40k_voc12aug
In Collection: upernet
Metadata:
backbone: R-50
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 75.92
mIoU(ms+flip): 77.44
Config: configs/upernet/upernet_r50_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r50_512x512_40k_voc12aug/upernet_r50_512x512_40k_voc12aug_20200613_162257-ca9bcc6b.pth
- Name: upernet_r101_512x512_40k_voc12aug
In Collection: upernet
Metadata:
backbone: R-101
crop size: (512,512)
lr schd: 40000
Results:
Task: Semantic Segmentation
Dataset: Pascal VOC 2012 + Aug
Metrics:
mIoU: 77.43
mIoU(ms+flip): 78.56
Config: configs/upernet/upernet_r101_512x512_40k_voc12aug.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/upernet/upernet_r101_512x512_40k_voc12aug/upernet_r101_512x512_40k_voc12aug_20200613_163549-e26476ac.pth

248
configs/vit/vit.yml Normal file
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Collections:
- Name: vit
Metadata:
Training Data:
- ADE20K
Models:
- Name: upernet_vit-b16_mln_512x512_80k_ade20k
In Collection: vit
Metadata:
backbone: ViT-B + MLN
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 144.09
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 9.2
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 47.71
mIoU(ms+flip): 49.51
Config: configs/vit/upernet_vit-b16_mln_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/vit/upernet_vit-b16_mln_512x512_80k_ade20k/upernet_vit-b16_mln_512x512_80k_ade20k-0403cee1.pth
- Name: upernet_vit-b16_mln_512x512_160k_ade20k
In Collection: vit
Metadata:
backbone: ViT-B + MLN
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 131.93
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 9.2
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 46.75
mIoU(ms+flip): 48.46
Config: configs/vit/upernet_vit-b16_mln_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/vit/upernet_vit-b16_mln_512x512_160k_ade20k/upernet_vit-b16_mln_512x512_160k_ade20k-852fa768.pth
- Name: upernet_vit-b16_ln_mln_512x512_160k_ade20k
In Collection: vit
Metadata:
backbone: ViT-B + LN + MLN
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 146.63
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 9.21
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 47.73
mIoU(ms+flip): 49.95
Config: configs/vit/upernet_vit-b16_ln_mln_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/vit/upernet_vit-b16_ln_mln_512x512_160k_ade20k/upernet_vit-b16_ln_mln_512x512_160k_ade20k-f444c077.pth
- Name: upernet_deit-s16_512x512_80k_ade20k
In Collection: vit
Metadata:
backbone: DeiT-S
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 33.5
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 4.68
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.96
mIoU(ms+flip): 43.79
Config: configs/vit/upernet_deit-s16_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/vit/upernet_deit-s16_512x512_80k_ade20k/upernet_deit-s16_512x512_80k_ade20k-afc93ec2.pth
- Name: upernet_deit-s16_512x512_160k_ade20k
In Collection: vit
Metadata:
backbone: DeiT-S
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 34.26
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 4.68
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 42.87
mIoU(ms+flip): 43.79
Config: configs/vit/upernet_deit-s16_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/vit/upernet_deit-s16_512x512_160k_ade20k/upernet_deit-s16_512x512_160k_ade20k-5110d916.pth
- Name: upernet_deit-s16_mln_512x512_160k_ade20k
In Collection: vit
Metadata:
backbone: DeiT-S + MLN
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 89.45
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 5.69
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.82
mIoU(ms+flip): 45.07
Config: configs/vit/upernet_deit-s16_mln_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/vit/upernet_deit-s16_mln_512x512_160k_ade20k/upernet_deit-s16_mln_512x512_160k_ade20k-fb9a5dfb.pth
- Name: upernet_deit-s16_ln_mln_512x512_160k_ade20k
In Collection: vit
Metadata:
backbone: DeiT-S + LN + MLN
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 80.71
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 5.69
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 43.52
mIoU(ms+flip): 45.01
Config: configs/vit/upernet_deit-s16_ln_mln_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/vit/upernet_deit-s16_ln_mln_512x512_160k_ade20k/upernet_deit-s16_ln_mln_512x512_160k_ade20k-c0cd652f.pth
- Name: upernet_deit-b16_512x512_80k_ade20k
In Collection: vit
Metadata:
backbone: DeiT-B
crop size: (512,512)
lr schd: 80000
inference time (ms/im):
- value: 103.2
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 7.75
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 45.24
mIoU(ms+flip): 46.73
Config: configs/vit/upernet_deit-b16_512x512_80k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/vit/upernet_deit-b16_512x512_80k_ade20k/upernet_deit-b16_512x512_80k_ade20k-1e090789.pth
- Name: upernet_deit-b16_512x512_160k_ade20k
In Collection: vit
Metadata:
backbone: DeiT-B
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 96.25
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 7.75
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 45.36
mIoU(ms+flip): 47.16
Config: configs/vit/upernet_deit-b16_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/vit/upernet_deit-b16_512x512_160k_ade20k/upernet_deit-b16_512x512_160k_ade20k-828705d7.pth
- Name: upernet_deit-b16_mln_512x512_160k_ade20k
In Collection: vit
Metadata:
backbone: DeiT-B + MLN
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 128.53
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 9.21
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 45.46
mIoU(ms+flip): 47.16
Config: configs/vit/upernet_deit-b16_mln_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/vit/upernet_deit-b16_mln_512x512_160k_ade20k/upernet_deit-b16_mln_512x512_160k_ade20k-4e1450f3.pth
- Name: upernet_deit-b16_ln_mln_512x512_160k_ade20k
In Collection: vit
Metadata:
backbone: DeiT-B + LN + MLN
crop size: (512,512)
lr schd: 160000
inference time (ms/im):
- value: 129.03
hardware: V100
backend: PyTorch
batch size: 1
mode: FP32
resolution: (512,512)
memory (GB): 9.21
Results:
Task: Semantic Segmentation
Dataset: ADE20K
Metrics:
mIoU: 45.37
mIoU(ms+flip): 47.23
Config: configs/vit/upernet_deit-b16_ln_mln_512x512_160k_ade20k.py
Weights: https://download.openmmlab.com/mmsegmentation/v0.5/vit/upernet_deit-b16_ln_mln_512x512_160k_ade20k/upernet_deit-b16_ln_mln_512x512_160k_ade20k-8a959c14.pth

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@ -1,27 +1,31 @@
Import:
- configs/ann/metafile.yml
- configs/apcnet/metafile.yml
- configs/ccnet/metafile.yml
- configs/cgnet/metafile.yml
- configs/danet/metafile.yml
- configs/deeplabv3/metafile.yml
- configs/deeplabv3plus/metafile.yml
- configs/dnlnet/metafile.yml
- configs/emanet/metafile.yml
- configs/encnet/metafile.yml
- configs/fastscnn/metafile.yml
- configs/fcn/metafile.yml
- configs/fp16/metafile.yml
- configs/gcnet/metafile.yml
- configs/hrnet/metafile.yml
- configs/mobilenet_v2/metafile.yml
- configs/mobilenet_v3/metafile.yml
- configs/nonlocal_net/metafile.yml
- configs/ocrnet/metafile.yml
- configs/point_rend/metafile.yml
- configs/psanet/metafile.yml
- configs/pspnet/metafile.yml
- configs/resnest/metafile.yml
- configs/sem_fpn/metafile.yml
- configs/unet/metafile.yml
- configs/upernet/metafile.yml
- configs/ann/ann.yml
- configs/apcnet/apcnet.yml
- configs/ccnet/ccnet.yml
- configs/cgnet/cgnet.yml
- configs/danet/danet.yml
- configs/deeplabv3/deeplabv3.yml
- configs/deeplabv3plus/deeplabv3plus.yml
- configs/dmnet/dmnet.yml
- configs/dnlnet/dnlnet.yml
- configs/emanet/emanet.yml
- configs/encnet/encnet.yml
- configs/fastscnn/fastscnn.yml
- configs/fcn/fcn.yml
- configs/fp16/fp16.yml
- configs/gcnet/gcnet.yml
- configs/hrnet/hrnet.yml
- configs/mobilenet_v2/mobilenet_v2.yml
- configs/mobilenet_v3/mobilenet_v3.yml
- configs/nonlocal_net/nonlocal_net.yml
- configs/ocrnet/ocrnet.yml
- configs/point_rend/point_rend.yml
- configs/psanet/psanet.yml
- configs/pspnet/pspnet.yml
- configs/resnest/resnest.yml
- configs/sem_fpn/sem_fpn.yml
- configs/setr/setr.yml
- configs/swin/swin.yml
- configs/unet/unet.yml
- configs/upernet/upernet.yml
- configs/vit/vit.yml