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Cycle label-consistent networks for unsupervised domain adaptation

机译:循环标签 - 一致的无监督域适应网络

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摘要

Domain adaptation aims to leverage a labeled source domain to learn a classifier for the unlabeled target domain with a different distribution. Previous methods mostly match the distribution between two domains by global or class alignment. However, global alignment methods cannot achieve a fine-grained class-to-class overlap; class alignment methods supervised by pseudo-labels cannot guarantee their reliability. In this paper, we propose a simple yet efficient domain adaptation method, i.e. Cycle Label-Consistent Network (CLCN), by exploiting the cycle consistency of classification label, which applies dual cross-domain nearest centroid classification procedures to generate a reliable self supervised signal for the discrimination in the target domain. The cycle label-consistent loss reinforces the consistency between ground-truth labels and pseudo-labels of source samples leading to statistically similar latent representations between source and target domains. This new loss can easily be added to any existing classification network with almost no computational overhead. We demonstrate the effectiveness of our approach on MNIST-USPS-SVHN, Office-31, Office-Home and Image CLEF-DA benchmarks. Results validate that the proposed method can alleviate the negative influence of falsely-labeled samples and learn more discriminative features, leading to the absolute improvement over source-only model by 9.4% on Office-31 and 6.3% on Image CLEF-DA. (C) 2020 Published by Elsevier B.V.
机译:域适配旨在利用标记的源域来学习具有不同分发的未标记目标域的分类器。以前的方法主要通过全局或类对齐匹配两个域之间的分布。但是,全局对齐方法无法达到细粒度的级别重叠;伪标签监督的类对齐方式无法保证其可靠性。在本文中,我们提出了一种简单而有效的域适应方法,即循环标签 - 一致的网络(CLCN),通过利用分类标签的循环一致性,这适用了双跨域最近的质心分类程序来产生可靠的自我监督信号对于目标域中的歧视。循环标签 - 一致损耗强化了地面真理标签和源样本的伪标签之间的一致性,导致源极和目标域之间的统计上类似的潜在表示。这种新损失很容易添加到任何现有的分类网络中,几乎没有计算开销。我们展示了我们对Mnist-USPS-SVHN,Office-31,Office-Home和Image Clef-Da基准测试的有效性。结果验证了所提出的方法可以缓解错误标记的样本的负面影响并了解更多辨别特征,导致Office-31和Image Clef-DA上的Office-31和6.3%的绝对改善。 (c)2020由elsevier b.v发布。

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