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Papers/Taking A Closer Look at Domain Shift: Category-level Adver...

Taking A Closer Look at Domain Shift: Category-level Adversaries for Semantics Consistent Domain Adaptation

Yawei Luo, Liang Zheng, Tao Guan, Junqing Yu, Yi Yang

2018-09-25CVPR 2019 6Semantic SegmentationSynthetic-to-Real TranslationUnsupervised Domain AdaptationDomain Adaptation
PaperPDFCode(official)

Abstract

We consider the problem of unsupervised domain adaptation in semantic segmentation. The key in this campaign consists in reducing the domain shift, i.e., enforcing the data distributions of the two domains to be similar. A popular strategy is to align the marginal distribution in the feature space through adversarial learning. However, this global alignment strategy does not consider the local category-level feature distribution. A possible consequence of the global movement is that some categories which are originally well aligned between the source and target may be incorrectly mapped. To address this problem, this paper introduces a category-level adversarial network, aiming to enforce local semantic consistency during the trend of global alignment. Our idea is to take a close look at the category-level data distribution and align each class with an adaptive adversarial loss. Specifically, we reduce the weight of the adversarial loss for category-level aligned features while increasing the adversarial force for those poorly aligned. In this process, we decide how well a feature is category-level aligned between source and target by a co-training approach. In two domain adaptation tasks, i.e., GTA5 -> Cityscapes and SYNTHIA -> Cityscapes, we validate that the proposed method matches the state of the art in segmentation accuracy.

Results

TaskDatasetMetricValueModel
Image-to-Image TranslationGTAV-to-Cityscapes LabelsmIoU43.2CLAN
Image-to-Image TranslationSYNTHIA-to-CityscapesMIoU (13 classes)47.8CLAN
Image GenerationGTAV-to-Cityscapes LabelsmIoU43.2CLAN
Image GenerationSYNTHIA-to-CityscapesMIoU (13 classes)47.8CLAN
Semantic SegmentationDADA-segmIoU28.76CLAN
10-shot image generationDADA-segmIoU28.76CLAN
1 Image, 2*2 StitchingGTAV-to-Cityscapes LabelsmIoU43.2CLAN
1 Image, 2*2 StitchingSYNTHIA-to-CityscapesMIoU (13 classes)47.8CLAN

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