ICCV2021 - Mining Contextual Information Beyond Image for Semantic Segmentation

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Deep Learning mcibi
Overview

Introduction

The official repository for "Mining Contextual Information Beyond Image for Semantic Segmentation". Our full code has been merged into sssegmentation.

Abstract

This paper studies the context aggregation problem in semantic image segmentation. The existing researches focus on improving the pixel representations by aggregating the contextual information within individual images. Though impressive, these methods neglect the significance of the representations of the pixels of the corresponding class beyond the input image. To address this, this paper proposes to mine the contextual information beyond individual images to further augment the pixel representations. We first set up a feature memory module, which is updated dynamically during training, to store the dataset-level representations of various categories. Then, we learn class probability distribution of each pixel representation under the supervision of the ground-truth segmentation. At last, the representation of each pixel is augmented by aggregating the dataset-level representations based on the corresponding class probability distribution. Furthermore, by utilizing the stored dataset-level representations, we also propose a representation consistent learning strategy to make the classification head better address intra-class compactness and inter-class dispersion. The proposed method could be effortlessly incorporated into existing segmentation frameworks (e.g., FCN, PSPNet, OCRNet and DeepLabV3) and brings consistent performance improvements. Mining contextual information beyond image allows us to report state-of-the-art performance on various benchmarks: ADE20K, LIP, Cityscapes and COCO-Stuff.

Framework

img

Performance

COCOStuff-10k

Model Backbone Crop Size Schedule Train/Eval Set mIoU/mIoU (ms+flip) Download
DeepLabV3 R-50-D8 512x512 LR/POLICY/BS/EPOCH: 0.001/poly/16/110 train/test 38.84%/39.68% model | log
DeepLabV3 R-101-D8 512x512 LR/POLICY/BS/EPOCH: 0.001/poly/16/110 train/test 39.84%/41.49% model | log
DeepLabV3 S-101-D8 512x512 LR/POLICY/BS/EPOCH: 0.001/poly/32/150 train/test 41.18%/42.15% model | log
DeepLabV3 HRNetV2p-W48 512x512 LR/POLICY/BS/EPOCH: 0.001/poly/16/110 train/test 39.77%/41.35% model | log
DeepLabV3 ViT-Large 512x512 LR/POLICY/BS/EPOCH: 0.001/poly/16/110 train/test 44.01%/45.23% model | log

ADE20k

Model Backbone Crop Size Schedule Train/Eval Set mIoU/mIoU (ms+flip) Download
DeepLabV3 R-50-D8 512x512 LR/POLICY/BS/EPOCH: 0.01/poly/16/130 train/val 44.39%/45.95% model | log
DeepLabV3 R-101-D8 512x512 LR/POLICY/BS/EPOCH: 0.01/poly/16/130 train/val 45.66%/47.22% model | log
DeepLabV3 S-101-D8 512x512 LR/POLICY/BS/EPOCH: 0.004/poly/16/180 train/val 46.63%/47.36% model | log
DeepLabV3 HRNetV2p-W48 512x512 LR/POLICY/BS/EPOCH: 0.004/poly/16/180 train/val 45.79%/47.34% model | log
DeepLabV3 ViT-Large 512x512 LR/POLICY/BS/EPOCH: 0.01/poly/16/130 train/val 49.73%/50.99% model | log

CityScapes

Model Backbone Crop Size Schedule Train/Eval Set mIoU (ms+flip) Download
DeepLabV3 R-50-D8 512x1024 LR/POLICY/BS/EPOCH: 0.01/poly/16/440 trainval/test 79.90% model | log
DeepLabV3 R-101-D8 512x1024 LR/POLICY/BS/EPOCH: 0.01/poly/16/440 trainval/test 82.03% model | log
DeepLabV3 S-101-D8 512x1024 LR/POLICY/BS/EPOCH: 0.01/poly/16/500 trainval/test 81.59% model | log
DeepLabV3 HRNetV2p-W48 512x1024 LR/POLICY/BS/EPOCH: 0.01/poly/16/500 trainval/test 82.55% model | log

LIP

Model Backbone Crop Size Schedule Train/Eval Set mIoU/mIoU (flip) Download
DeepLabV3 R-50-D8 473x473 LR/POLICY/BS/EPOCH: 0.01/poly/32/150 train/val 53.73%/54.08% model | log
DeepLabV3 R-101-D8 473x473 LR/POLICY/BS/EPOCH: 0.01/poly/32/150 train/val 55.02%/55.42% model | log
DeepLabV3 S-101-D8 473x473 LR/POLICY/BS/EPOCH: 0.007/poly/40/150 train/val 56.21%/56.34% model | log
DeepLabV3 HRNetV2p-W48 473x473 LR/POLICY/BS/EPOCH: 0.007/poly/40/150 train/val 56.40%/56.99% model | log

Citation

If this code is useful for your research, please consider citing:

@article{jin2021mining,
  title={Mining Contextual Information Beyond Image for Semantic Segmentation},
  author={Jin, Zhenchao and Gong, Tao and Yu, Dongdong and Chu, Qi and Wang, Jian and Wang, Changhu and Shao, Jie},
  journal={arXiv preprint arXiv:2108.11819},
  year={2021}
}
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Comments
  • Why OCRNet is worse than DeepLabv3 in table 5.

    Why OCRNet is worse than DeepLabv3 in table 5.

    Or why you choose DeepLabv3 as your structure not other latest structure in your experiments? Maybe it can hit a higher score. Just confused.

    Thank you~

    opened by EricKani 4
  • 关于mt更新机制的问题

    关于mt更新机制的问题

    你好,我发现论文公式(7)中mt的更新和代码中mt的更新机制好像不一样。 https://github.com/CharlesPikachu/mcibi/blob/62dfe509b34e771b037fea778b1fd2a9a3d78bc2/src/models/memorynet/memory.py#L158

    请问一下,论文的实验结果是采用代码中的机制呢?

    opened by mymuli 2
  • 在memory.py文件里面,导入base以及backbones时,缺少文件

    在memory.py文件里面,导入base以及backbones时,缺少文件

    在memory.py文件里面,导入base以及backbones时,缺少文件 https://github.com/CharlesPikachu/mcibi/blob/62dfe509b34e771b037fea778b1fd2a9a3d78bc2/src/models/memorynet/memory.py#L11

    opened by mymuli 1
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