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Papers/Rectifying Pseudo Label Learning via Uncertainty Estimatio...

Rectifying Pseudo Label Learning via Uncertainty Estimation for Domain Adaptive Semantic Segmentation

Zhedong Zheng, Yi Yang

2020-03-08Unsupervised Semantic SegmentationSegmentationSemantic SegmentationSynthetic-to-Real TranslationPredictionUnsupervised Domain AdaptationDomain Adaptation
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Abstract

This paper focuses on the unsupervised domain adaptation of transferring the knowledge from the source domain to the target domain in the context of semantic segmentation. Existing approaches usually regard the pseudo label as the ground truth to fully exploit the unlabeled target-domain data. Yet the pseudo labels of the target-domain data are usually predicted by the model trained on the source domain. Thus, the generated labels inevitably contain the incorrect prediction due to the discrepancy between the training domain and the test domain, which could be transferred to the final adapted model and largely compromises the training process. To overcome the problem, this paper proposes to explicitly estimate the prediction uncertainty during training to rectify the pseudo label learning for unsupervised semantic segmentation adaptation. Given the input image, the model outputs the semantic segmentation prediction as well as the uncertainty of the prediction. Specifically, we model the uncertainty via the prediction variance and involve the uncertainty into the optimization objective. To verify the effectiveness of the proposed method, we evaluate the proposed method on two prevalent synthetic-to-real semantic segmentation benchmarks, i.e., GTA5 -> Cityscapes and SYNTHIA -> Cityscapes, as well as one cross-city benchmark, i.e., Cityscapes -> Oxford RobotCar. We demonstrate through extensive experiments that the proposed approach (1) dynamically sets different confidence thresholds according to the prediction variance, (2) rectifies the learning from noisy pseudo labels, and (3) achieves significant improvements over the conventional pseudo label learning and yields competitive performance on all three benchmarks.

Results

TaskDatasetMetricValueModel
Image-to-Image TranslationGTAV-to-Cityscapes LabelsmIoU50.3MRNet+Rectifying Label
Image-to-Image TranslationSYNTHIA-to-CityscapesMIoU (13 classes)54.9MRNet+Rectifying Label(ResNet-101)
Image-to-Image TranslationSYNTHIA-to-CityscapesMIoU (16 classes)47.9MRNet+Rectifying Label(ResNet-101)
Domain AdaptationGTA5 to CityscapesmIoU50.3MRNet + Rectifying Label
Domain AdaptationGTAV-to-Cityscapes LabelsmIoU50.3Uncertainty
Domain AdaptationCityscapes-to-OxfordCarmIoU74.4MRNet+Rectifying Label(ResNet-101)
Domain AdaptationSYNTHIA-to-CityscapesmIoU47.9Uncertainty
Domain AdaptationSYNTHIA-to-CityscapesmIoU (13 classes)54.9Uncertainty
Image GenerationGTAV-to-Cityscapes LabelsmIoU50.3MRNet+Rectifying Label
Image GenerationSYNTHIA-to-CityscapesMIoU (13 classes)54.9MRNet+Rectifying Label(ResNet-101)
Image GenerationSYNTHIA-to-CityscapesMIoU (16 classes)47.9MRNet+Rectifying Label(ResNet-101)
Unsupervised Domain AdaptationGTAV-to-Cityscapes LabelsmIoU50.3Uncertainty
Unsupervised Domain AdaptationCityscapes-to-OxfordCarmIoU74.4MRNet+Rectifying Label(ResNet-101)
Unsupervised Domain AdaptationSYNTHIA-to-CityscapesmIoU47.9Uncertainty
Unsupervised Domain AdaptationSYNTHIA-to-CityscapesmIoU (13 classes)54.9Uncertainty
1 Image, 2*2 StitchingGTAV-to-Cityscapes LabelsmIoU50.3MRNet+Rectifying Label
1 Image, 2*2 StitchingSYNTHIA-to-CityscapesMIoU (13 classes)54.9MRNet+Rectifying Label(ResNet-101)
1 Image, 2*2 StitchingSYNTHIA-to-CityscapesMIoU (16 classes)47.9MRNet+Rectifying Label(ResNet-101)

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