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Papers/PseudoSeg: Designing Pseudo Labels for Semantic Segmentation

PseudoSeg: Designing Pseudo Labels for Semantic Segmentation

Yuliang Zou, Zizhao Zhang, Han Zhang, Chun-Liang Li, Xiao Bian, Jia-Bin Huang, Tomas Pfister

2020-10-19ICLR 2021 1Image ClassificationSemi-Supervised Semantic SegmentationData AugmentationSegmentationSemantic Segmentation
PaperPDFCodeCode(official)

Abstract

Recent advances in semi-supervised learning (SSL) demonstrate that a combination of consistency regularization and pseudo-labeling can effectively improve image classification accuracy in the low-data regime. Compared to classification, semantic segmentation tasks require much more intensive labeling costs. Thus, these tasks greatly benefit from data-efficient training methods. However, structured outputs in segmentation render particular difficulties (e.g., designing pseudo-labeling and augmentation) to apply existing SSL strategies. To address this problem, we present a simple and novel re-design of pseudo-labeling to generate well-calibrated structured pseudo labels for training with unlabeled or weakly-labeled data. Our proposed pseudo-labeling strategy is network structure agnostic to apply in a one-stage consistency training framework. We demonstrate the effectiveness of the proposed pseudo-labeling strategy in both low-data and high-data regimes. Extensive experiments have validated that pseudo labels generated from wisely fusing diverse sources and strong data augmentation are crucial to consistency training for segmentation. The source code is available at https://github.com/googleinterns/wss.

Results

TaskDatasetMetricValueModel
Semantic SegmentationCOCO 1/512 labeledValidation mIoU29.8PseudoSeg
Semantic SegmentationCOCO 1/256 labeledValidation mIoU37.1PseuodSeg
Semantic SegmentationCOCO 1/128 labeledValidation mIoU39.1PseudoSeg
Semantic SegmentationCOCO 1/64 labeledValidation mIoU41.8PseudoSeg
Semantic SegmentationCOCO 1/32 labeledValidation mIoU43.6PseudoSeg
10-shot image generationCOCO 1/512 labeledValidation mIoU29.8PseudoSeg
10-shot image generationCOCO 1/256 labeledValidation mIoU37.1PseuodSeg
10-shot image generationCOCO 1/128 labeledValidation mIoU39.1PseudoSeg
10-shot image generationCOCO 1/64 labeledValidation mIoU41.8PseudoSeg
10-shot image generationCOCO 1/32 labeledValidation mIoU43.6PseudoSeg

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