Adversarial Partial Domain Adaptation by Cycle Inconsistency

Unsupervised partial domain adaptation (PDA) is a unsupervised domain adaptation problem which assumes that the source label space subsumes the target label space. A critical challenge of PDA is the negative transfer problem, which is triggered by learning to match the whole source and target domain...

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Bibliographic Details
Published inComputer Vision - ECCV 2022 Vol. 13693; pp. 530 - 548
Main Authors Lin, Kun-Yu, Zhou, Jiaming, Qiu, Yukun, Zheng, Wei-Shi
Format Book Chapter
LanguageEnglish
Published Switzerland Springer 2022
Springer Nature Switzerland
SeriesLecture Notes in Computer Science
Subjects
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Summary:Unsupervised partial domain adaptation (PDA) is a unsupervised domain adaptation problem which assumes that the source label space subsumes the target label space. A critical challenge of PDA is the negative transfer problem, which is triggered by learning to match the whole source and target domains. To mitigate negative transfer, we note a fact that, it is impossible for a source sample of outlier classes to find a target sample of the same category due to the absence of outlier classes in the target domain, while it is possible for a source sample of shared classes. Inspired by this fact, we exploit the cycle inconsistency, i.e., category discrepancy between the original features and features after cycle transformations, to distinguish outlier classes apart from shared classes in the source domain. Accordingly, we propose to filter out source samples of outlier classes by weight suppression and align the distributions of shared classes between the source and target domains by adversarial learning. To learn accurate weight assignment for filtering out outlier classes, we design cycle transformations based on domain prototypes and soft nearest neighbor, where center losses are introduced in individual domains to reduce the intra-class variation. Experiment results on three benchmark datasets demonstrate the effectiveness of our proposed method.
Bibliography:K. Lin and J. Zhou—Equal contributions.
Supplementary InformationThe online version contains supplementary material available at https://doi.org/10.1007/978-3-031-19827-4_31.
ISBN:9783031198267
3031198263
ISSN:0302-9743
1611-3349
DOI:10.1007/978-3-031-19827-4_31