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Cited 9 time in webofscience Cited 9 time in scopus
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Pseudo Label Rectification via Co-Teaching and Decoupling for Multisource Domain Adaptation in Semantic Segmentationopen access

Authors
Park, So JeongPark, Hae JuKang, Eun SuNgo, Ba HungLee, Ho SubCho, Sung In
Issue Date
2022
Publisher
IEEE
Keywords
Semantics; Predictive models; Training data; Adaptation models; Image segmentation; Task analysis; Noise measurement; Unsupervised learning; Multi-source domain adaptation; semantic segmentation; unsupervised learning; self-training
Citation
IEEE Access, v.10, pp 91137 - 91149
Pages
13
Indexed
SCIE
SCOPUS
Journal Title
IEEE Access
Volume
10
Start Page
91137
End Page
91149
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/3892
DOI
10.1109/ACCESS.2022.3202190
ISSN
2169-3536
2169-3536
Abstract
Multi-source Unsupervised Domain Adaptation (MUDA) is an approach aiming to transfer the knowledge obtained from multiple labeled source domains to an unlabeled target domain. In this paper, we propose a novel self-training method for MUDA, which includes pseudo label-oriented coteaching and pseudo label decoupling that are attempted for the pseudo label rectification-based MUDA for semantic segmentation. Existing ensemble-based self-training methods which are well-known approaches for MUDA use pseudo labels made from the ensemble of the predictions of multiple models to transfer the knowledge of source domains to the target domain. In these methods, information from multiple models can be contaminated, or errors from incorrect pseudo labels can be propagated. On the other hand, the proposed pseudo label-oriented coteaching trains multiple models by using pseudo labels from the peer model without any integration of pseudo labels. Simultaneously, the pseudo label decoupling method is proposed for rectification of pseudo labels, which updates the models with two pseudo labels only if they disagree. It also alleviates the problem of class imbalance in semantic segmentation, in which dominant classes lead the update for training. The effects of the proposed pseudo label-oriented coteaching and pseudo label decoupling on the performance of semantic segmentation were verified by extensive experiments. The proposed method achieved the best semantic segmentation accuracy compared with the benchmark methods. In addition, we confirmed that the prediction accuracy of small objects was greatly improved by the proposed pseudo label rectification.
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