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Papers/Uncertainty Estimation via Response Scaling for Pseudo-mas...

Uncertainty Estimation via Response Scaling for Pseudo-mask Noise Mitigation in Weakly-supervised Semantic Segmentation

Yi Li, Yiqun Duan, Zhanghui Kuang, Yimin Chen, Wayne Zhang, Xiaomeng Li

2021-12-14Weakly-Supervised Semantic SegmentationWeakly supervised Semantic SegmentationSegmentationSemantic SegmentationSaliency Detection
PaperPDFCode(official)

Abstract

Weakly-Supervised Semantic Segmentation (WSSS) segments objects without a heavy burden of dense annotation. While as a price, generated pseudo-masks exist obvious noisy pixels, which result in sub-optimal segmentation models trained over these pseudo-masks. But rare studies notice or work on this problem, even these noisy pixels are inevitable after their improvements on pseudo-mask. So we try to improve WSSS in the aspect of noise mitigation. And we observe that many noisy pixels are of high confidence, especially when the response range is too wide or narrow, presenting an uncertain status. Thus, in this paper, we simulate noisy variations of response by scaling the prediction map multiple times for uncertainty estimation. The uncertainty is then used to weight the segmentation loss to mitigate noisy supervision signals. We call this method URN, abbreviated from Uncertainty estimation via Response scaling for Noise mitigation. Experiments validate the benefits of URN, and our method achieves state-of-the-art results at 71.2% and 41.5% on PASCAL VOC 2012 and MS COCO 2014 respectively, without extra models like saliency detection. Code is available at https://github.com/XMed-Lab/URN.

Results

TaskDatasetMetricValueModel
Semantic SegmentationCOCO 2014 valmIoU41.5URN(Res2Net-101, no saliency, no RW)
Semantic SegmentationCOCO 2014 valmIoU40.8URN(ScaleNet-101, no saliency, no RW)
Semantic SegmentationCOCO 2014 valmIoU40.7URN(ResNet-101, no saliency, no RW)
Semantic SegmentationCOCO 2014 valmIoU40.5URN(ResNet-38, no saliency, no RW)
Semantic SegmentationPASCAL VOC 2012 valMean IoU71.2URN(Res2Net-101, no saliency, no RW)
Semantic SegmentationPASCAL VOC 2012 valMean IoU70.1URN(ScaleNet-101, no saliency, no RW)
Semantic SegmentationPASCAL VOC 2012 valMean IoU69.5URN(ResNet-101, no saliency, no RW)
Semantic SegmentationPASCAL VOC 2012 valMean IoU69.4URN(ResNet-38, no saliency, no RW)
Semantic SegmentationPASCAL VOC 2012 testMean IoU71.5URN(Res2Net-101, no saliency, no RW)
Semantic SegmentationPASCAL VOC 2012 testMean IoU70.8URN(ScaleNet-101, no saliency, no RW)
Semantic SegmentationPASCAL VOC 2012 testMean IoU70.6URN(ResNet-38, no saliency, no RW)
Semantic SegmentationPASCAL VOC 2012 testMean IoU69.7URN(ResNet-101, no saliency, no RW)
10-shot image generationCOCO 2014 valmIoU41.5URN(Res2Net-101, no saliency, no RW)
10-shot image generationCOCO 2014 valmIoU40.8URN(ScaleNet-101, no saliency, no RW)
10-shot image generationCOCO 2014 valmIoU40.7URN(ResNet-101, no saliency, no RW)
10-shot image generationCOCO 2014 valmIoU40.5URN(ResNet-38, no saliency, no RW)
10-shot image generationPASCAL VOC 2012 valMean IoU71.2URN(Res2Net-101, no saliency, no RW)
10-shot image generationPASCAL VOC 2012 valMean IoU70.1URN(ScaleNet-101, no saliency, no RW)
10-shot image generationPASCAL VOC 2012 valMean IoU69.5URN(ResNet-101, no saliency, no RW)
10-shot image generationPASCAL VOC 2012 valMean IoU69.4URN(ResNet-38, no saliency, no RW)
10-shot image generationPASCAL VOC 2012 testMean IoU71.5URN(Res2Net-101, no saliency, no RW)
10-shot image generationPASCAL VOC 2012 testMean IoU70.8URN(ScaleNet-101, no saliency, no RW)
10-shot image generationPASCAL VOC 2012 testMean IoU70.6URN(ResNet-38, no saliency, no RW)
10-shot image generationPASCAL VOC 2012 testMean IoU69.7URN(ResNet-101, no saliency, no RW)

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