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Perturbed and Strict Mean Teachers for Semi-supervised Semantic Segmentation

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arxiv 2111.12903 v3 pith:FFN5OY3B submitted 2021-11-25 cs.CV

Perturbed and Strict Mean Teachers for Semi-supervised Semantic Segmentation

classification cs.CV
keywords consistencylearningperturbationspredictionsfeatureinaccuratepredictiontraining
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Consistency learning using input image, feature, or network perturbations has shown remarkable results in semi-supervised semantic segmentation, but this approach can be seriously affected by inaccurate predictions of unlabelled training images. There are two consequences of these inaccurate predictions: 1) the training based on the "strict" cross-entropy (CE) loss can easily overfit prediction mistakes, leading to confirmation bias; and 2) the perturbations applied to these inaccurate predictions will use potentially erroneous predictions as training signals, degrading consistency learning. In this paper, we address the prediction accuracy problem of consistency learning methods with novel extensions of the mean-teacher (MT) model, which include a new auxiliary teacher, and the replacement of MT's mean square error (MSE) by a stricter confidence-weighted cross-entropy (Conf-CE) loss. The accurate prediction by this model allows us to use a challenging combination of network, input data and feature perturbations to improve the consistency learning generalisation, where the feature perturbations consist of a new adversarial perturbation. Results on public benchmarks show that our approach achieves remarkable improvements over the previous SOTA methods in the field. Our code is available at https://github.com/yyliu01/PS-MT.

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