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Combating Noise: Semi-supervised Learning by Region Uncertainty Quantification

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Semi-supervised learning aims to leverage a large amount of unlabeled data for performance boosting. Existing works primarily focus on image classification. In this paper, we delve into semi-supervised learning for object detection, where labeled data are more labor-intensive to collect. Current methods are easily distracted by noisy regions generated by pseudo labels. To combat the noisy labeling, we propose noise-resistant semi-supervised learning by quantifying the region uncertainty. We first investigate the adverse effects brought by different forms of noise associated with pseudo labels. Then we propose to quantify the uncertainty of regions by identifying the noise-resistant properties of regions over different strengths. By importing the region uncertainty quantification and promoting multipeak probability distribution output, we introduce uncertainty into training and further achieve noise-resistant learning. Experiments on both PASCAL VOC and MS COCO demonstrate the extraordinary performance of our method.

Zhenyu Wang, Yali Li, Ye Guo, Shengjin Wang• 2021

Related benchmarks

TaskDatasetResultRank
Object DetectionPASCAL VOC 2007 (test)--
821
Object DetectionCOCO (minival)
mAP43.2
184
Object DetectionMS-COCO 5% labeled protocol
mAP28.96
33
Object DetectionMS-COCO 1% labeled protocol
mAP18.41
33
Object DetectionMS-COCO 2% labeled protocol
mAP24
25
Object DetectionMS-COCO 10% labeled protocol
mAP32.43
19
Object DetectionPASCAL VOC (VOC07 labeled + VOC12 + COCO20cls unlabeled)
AP50:9550.2
18
Object DetectionPASCAL VOC 2007/2012 (VOC07 labeled + VOC12 unlabeled)--
14
Object DetectionMS-COCO additional
AP@[.5:.95]43.2
12
Object DetectionMS-COCO standard
AP50:95 (IoU 1%)18.41
11
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