Collections: - Name: KNet Metadata: Training Data: - ADE20K Paper: URL: https://arxiv.org/abs/2106.14855 Title: 'K-Net: Towards Unified Image Segmentation' README: configs/knet/README.md Code: URL: https://github.com/open-mmlab/mmsegmentation/blob/v0.23.0/mmseg/models/decode_heads/knet_head.py#L392 Version: v0.23.0 Converted From: Code: https://github.com/ZwwWayne/K-Net/ Models: - Name: knet_s3_fcn_r50-d8_8x2_512x512_adamw_80k_ade20k In Collection: KNet Metadata: backbone: R-50-D8 crop size: (512,512) lr schd: 80000 inference time (ms/im): - value: 51.98 hardware: V100 backend: PyTorch batch size: 1 mode: FP32 resolution: (512,512) Training Memory (GB): 7.01 Results: - Task: Semantic Segmentation Dataset: ADE20K Metrics: mIoU: 43.6 mIoU(ms+flip): 45.12 Config: configs/knet/knet_s3_fcn_r50-d8_8x2_512x512_adamw_80k_ade20k.py Weights: https://download.openmmlab.com/mmsegmentation/v0.5/knet/knet_s3_fcn_r50-d8_8x2_512x512_adamw_80k_ade20k/knet_s3_fcn_r50-d8_8x2_512x512_adamw_80k_ade20k_20220228_043751-abcab920.pth - Name: knet_s3_pspnet_r50-d8_8x2_512x512_adamw_80k_ade20k In Collection: KNet Metadata: backbone: R-50-D8 crop size: (512,512) lr schd: 80000 inference time (ms/im): - value: 49.9 hardware: V100 backend: PyTorch batch size: 1 mode: FP32 resolution: (512,512) Training Memory (GB): 6.98 Results: - Task: Semantic Segmentation Dataset: ADE20K Metrics: mIoU: 44.18 mIoU(ms+flip): 45.58 Config: configs/knet/knet_s3_pspnet_r50-d8_8x2_512x512_adamw_80k_ade20k.py Weights: https://download.openmmlab.com/mmsegmentation/v0.5/knet/knet_s3_pspnet_r50-d8_8x2_512x512_adamw_80k_ade20k/knet_s3_pspnet_r50-d8_8x2_512x512_adamw_80k_ade20k_20220228_054634-d2c72240.pth - Name: knet_s3_deeplabv3_r50-d8_8x2_512x512_adamw_80k_ade20k In Collection: KNet Metadata: backbone: R-50-D8 crop size: (512,512) lr schd: 80000 inference time (ms/im): - value: 82.64 hardware: V100 backend: PyTorch batch size: 1 mode: FP32 resolution: (512,512) Training Memory (GB): 7.42 Results: - Task: Semantic Segmentation Dataset: ADE20K Metrics: mIoU: 45.06 mIoU(ms+flip): 46.11 Config: configs/knet/knet_s3_deeplabv3_r50-d8_8x2_512x512_adamw_80k_ade20k.py Weights: https://download.openmmlab.com/mmsegmentation/v0.5/knet/knet_s3_deeplabv3_r50-d8_8x2_512x512_adamw_80k_ade20k/knet_s3_deeplabv3_r50-d8_8x2_512x512_adamw_80k_ade20k_20220228_041642-00c8fbeb.pth - Name: knet_s3_upernet_r50-d8_8x2_512x512_adamw_80k_ade20k In Collection: KNet Metadata: backbone: R-50-D8 crop size: (512,512) lr schd: 80000 inference time (ms/im): - value: 58.45 hardware: V100 backend: PyTorch batch size: 1 mode: FP32 resolution: (512,512) Training Memory (GB): 7.34 Results: - Task: Semantic Segmentation Dataset: ADE20K Metrics: mIoU: 43.45 mIoU(ms+flip): 44.07 Config: configs/knet/knet_s3_upernet_r50-d8_8x2_512x512_adamw_80k_ade20k.py Weights: https://download.openmmlab.com/mmsegmentation/v0.5/knet/knet_s3_upernet_r50-d8_8x2_512x512_adamw_80k_ade20k/knet_s3_upernet_r50-d8_8x2_512x512_adamw_80k_ade20k_20220304_125657-215753b0.pth - Name: knet_s3_upernet_swin-t_8x2_512x512_adamw_80k_ade20k In Collection: KNet Metadata: backbone: Swin-T crop size: (512,512) lr schd: 80000 inference time (ms/im): - value: 64.27 hardware: V100 backend: PyTorch batch size: 1 mode: FP32 resolution: (512,512) Training Memory (GB): 7.57 Results: - Task: Semantic Segmentation Dataset: ADE20K Metrics: mIoU: 45.84 mIoU(ms+flip): 46.27 Config: configs/knet/knet_s3_upernet_swin-t_8x2_512x512_adamw_80k_ade20k.py Weights: https://download.openmmlab.com/mmsegmentation/v0.5/knet/knet_s3_upernet_swin-t_8x2_512x512_adamw_80k_ade20k/knet_s3_upernet_swin-t_8x2_512x512_adamw_80k_ade20k_20220303_133059-7545e1dc.pth - Name: knet_s3_upernet_swin-l_8x2_512x512_adamw_80k_ade20k In Collection: KNet Metadata: backbone: Swin-L crop size: (512,512) lr schd: 80000 inference time (ms/im): - value: 120.63 hardware: V100 backend: PyTorch batch size: 1 mode: FP32 resolution: (512,512) Training Memory (GB): 13.5 Results: - Task: Semantic Segmentation Dataset: ADE20K Metrics: mIoU: 52.05 mIoU(ms+flip): 53.24 Config: configs/knet/knet_s3_upernet_swin-l_8x2_512x512_adamw_80k_ade20k.py Weights: https://download.openmmlab.com/mmsegmentation/v0.5/knet/knet_s3_upernet_swin-l_8x2_512x512_adamw_80k_ade20k/knet_s3_upernet_swin-l_8x2_512x512_adamw_80k_ade20k_20220303_154559-d8da9a90.pth - Name: knet_s3_upernet_swin-l_8x2_640x640_adamw_80k_ade20k In Collection: KNet Metadata: backbone: Swin-L crop size: (640,640) lr schd: 80000 inference time (ms/im): - value: 120.63 hardware: V100 backend: PyTorch batch size: 1 mode: FP32 resolution: (640,640) Training Memory (GB): 13.54 Results: - Task: Semantic Segmentation Dataset: ADE20K Metrics: mIoU: 52.21 mIoU(ms+flip): 53.34 Config: configs/knet/knet_s3_upernet_swin-l_8x2_640x640_adamw_80k_ade20k.py Weights: https://download.openmmlab.com/mmsegmentation/v0.5/knet/knet_s3_upernet_swin-l_8x2_640x640_adamw_80k_ade20k/knet_s3_upernet_swin-l_8x2_640x640_adamw_80k_ade20k_20220301_220747-8787fc71.pth