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Papers/MetaCorrection: Domain-aware Meta Loss Correction for Unsu...

MetaCorrection: Domain-aware Meta Loss Correction for Unsupervised Domain Adaptation in Semantic Segmentation

Xiaoqing Guo, Chen Yang, Baopu Li, Yixuan Yuan

2021-03-09CVPR 2021 1Meta-LearningSemantic SegmentationSynthetic-to-Real TranslationUnsupervised Domain AdaptationDomain Adaptation
PaperPDFCode(official)

Abstract

Unsupervised domain adaptation (UDA) aims to transfer the knowledge from the labeled source domain to the unlabeled target domain. Existing self-training based UDA approaches assign pseudo labels for target data and treat them as ground truth labels to fully leverage unlabeled target data for model adaptation. However, the generated pseudo labels from the model optimized on the source domain inevitably contain noise due to the domain gap. To tackle this issue, we advance a MetaCorrection framework, where a Domain-aware Meta-learning strategy is devised to benefit Loss Correction (DMLC) for UDA semantic segmentation. In particular, we model the noise distribution of pseudo labels in target domain by introducing a noise transition matrix (NTM) and construct meta data set with domain-invariant source data to guide the estimation of NTM. Through the risk minimization on the meta data set, the optimized NTM thus can correct the noisy issues in pseudo labels and enhance the generalization ability of the model on the target data. Considering the capacity gap between shallow and deep features, we further employ the proposed DMLC strategy to provide matched and compatible supervision signals for different level features, thereby ensuring deep adaptation. Extensive experimental results highlight the effectiveness of our method against existing state-of-the-art methods on three benchmarks.

Results

TaskDatasetMetricValueModel
Image-to-Image TranslationGTAV-to-Cityscapes LabelsmIoU52.1MetaCorrection
Image-to-Image TranslationSYNTHIA-to-CityscapesMIoU (13 classes)52.5MetaCorrection(ResNet-101)
Image-to-Image TranslationSYNTHIA-to-CityscapesMIoU (16 classes)45.1MetaCorrection(ResNet-101)
Image GenerationGTAV-to-Cityscapes LabelsmIoU52.1MetaCorrection
Image GenerationSYNTHIA-to-CityscapesMIoU (13 classes)52.5MetaCorrection(ResNet-101)
Image GenerationSYNTHIA-to-CityscapesMIoU (16 classes)45.1MetaCorrection(ResNet-101)
1 Image, 2*2 StitchingGTAV-to-Cityscapes LabelsmIoU52.1MetaCorrection
1 Image, 2*2 StitchingSYNTHIA-to-CityscapesMIoU (13 classes)52.5MetaCorrection(ResNet-101)
1 Image, 2*2 StitchingSYNTHIA-to-CityscapesMIoU (16 classes)45.1MetaCorrection(ResNet-101)

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