Multi-Augmentation-Based Contrastive Learning for Semi-Supervised Learning
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Published:2024-02-20
Issue:3
Volume:17
Page:91
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ISSN:1999-4893
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Container-title:Algorithms
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language:en
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Short-container-title:Algorithms
Author:
Wang Jie1ORCID, Yang Jie1, He Jiafan2, Peng Dongliang1
Affiliation:
1. Artificial Intelligence Institute, Hangzhou Dianzi University, Hangzhou 310018, China 2. Science and Technology on Information Systems Engineering Laboratory, Nanjing 210014, China
Abstract
Semi-supervised learning has been proven to be effective in utilizing unlabeled samples to mitigate the problem of limited labeled data. Traditional semi-supervised learning methods generate pseudo-labels for unlabeled samples and train the classifier using both labeled and pseudo-labeled samples. However, in data-scarce scenarios, reliance on labeled samples for initial classifier generation can degrade performance. Methods based on consistency regularization have shown promising results by encouraging consistent outputs for different semantic variations of the same sample obtained through diverse augmentation techniques. However, existing methods typically utilize only weak and strong augmentation variants, limiting information extraction. Therefore, a multi-augmentation contrastive semi-supervised learning method (MAC-SSL) is proposed. MAC-SSL introduces moderate augmentation, combining outputs from moderately and weakly augmented unlabeled images to generate pseudo-labels. Cross-entropy loss ensures consistency between strongly augmented image outputs and pseudo-labels. Furthermore, the MixUP is adopted to blend outputs from labeled and unlabeled images, enhancing consistency between re-augmented outputs and new pseudo-labels. The proposed method achieves a state-of-the-art performance (accuracy) through extensive experiments conducted on multiple datasets with varying numbers of labeled samples. Ablation studies further investigate each component’s significance.
Funder
Science and Technology on Information System Engineering Laboratory Fundamental Research Funds for the provincial Universities of Zhejiang Key Laboratory of Avionics System Integrated Technology
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