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3 months ago

DMT: Dynamic Mutual Training for Semi-Supervised Learning

Zhengyang Feng Qianyu Zhou Qiqi Gu Xin Tan Guangliang Cheng Xuequan Lu Jianping Shi Lizhuang Ma

DMT: Dynamic Mutual Training for Semi-Supervised Learning

Abstract

Recent semi-supervised learning methods use pseudo supervision as core idea, especially self-training methods that generate pseudo labels. However, pseudo labels are unreliable. Self-training methods usually rely on single model prediction confidence to filter low-confidence pseudo labels, thus remaining high-confidence errors and wasting many low-confidence correct labels. In this paper, we point out it is difficult for a model to counter its own errors. Instead, leveraging inter-model disagreement between different models is a key to locate pseudo label errors. With this new viewpoint, we propose mutual training between two different models by a dynamically re-weighted loss function, called Dynamic Mutual Training (DMT). We quantify inter-model disagreement by comparing predictions from two different models to dynamically re-weight loss in training, where a larger disagreement indicates a possible error and corresponds to a lower loss value. Extensive experiments show that DMT achieves state-of-the-art performance in both image classification and semantic segmentation. Our codes are released at https://github.com/voldemortX/DST-CBC .

Code Repositories

voldemortX/DST-CBC
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
semi-supervised-image-classification-on-cifarDMT (WRN-28-2)
Percentage error: 5.79
semi-supervised-semantic-segmentation-on-10DMT (DeepLab v2, ResNet-50)
Validation mIoU: 74.85
semi-supervised-semantic-segmentation-on-2DMT (DeepLab v2 MSCOCO/ImageNet pre-trained)
Validation mIoU: 63.03%
semi-supervised-semantic-segmentation-on-3DMT (DeepLab v2 MSCOCO/ImageNet pre-trained)
Validation mIoU: 54.80%
semi-supervised-semantic-segmentation-on-4DMT
Validation mIoU: 72.70%
semi-supervised-semantic-segmentation-on-5DMT (DeepLab v2 MSCOCO/ImageNet pre-trained)
Validation mIoU: 69.92%
semi-supervised-semantic-segmentation-on-6DMT (DeepLab v2 MSCOCO pre-trained)
Validation mIoU: 67.15%
semi-supervised-semantic-segmentation-on-7DMT (DeepLab v2 MSCOCO pre-trained)
Validation mIoU: 63.04%

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