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Deep conditional adaptation networks and label correlation transfer for unsupervised domain adaptation

机译:无条件适应网络和无监督域自适应的标签相关传输

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摘要

Unsupervised domain adaptation aims to improve the performance of an unknown target domain by utilizing the knowledge learned from a related source domain. Given that the target label information is unavailable in the unsupervised situation, it is challenging to match the domain distributions and to transfer the source model to target applications. In this paper, a Deep Conditional Adaptation Networks (DCAN) is proposed to address the unsupervised domain adaptation problem. DCAN is implemented based on a deep neural network and attempts to learn domain invariant features based on the Wasserstein distance. A conditional adaptation strategy is presented to reduce the domain distribution discrepancy and to address category mismatch and class prior bias, which are usually ignored in marginal adaptation approaches. Furthermore, we propose a label correlation transfer algorithm to address the unsupervised issues, by generating more effective pseudo target labels based on the underlying cross-domain relationship. A set of comparative experiments were performed on standard domain adaptation benchmarks and the results demonstrate that the proposed DCAN outperforms previous adaptation methods. (C) 2019 Elsevier Ltd. All rights reserved.
机译:无监督域适应旨在通过利用从相关源域中学习的知识来提高未知目标域的性能。鉴于目标标签信息在无监督的情况下不可用,匹配域分布并将源模型传输到目标应用程序是挑战性的。在本文中,提出了一种深度条件适应网络(DCAN)来解决无监督的域适应问题。 DCAN基于深度神经网络实现,并尝试根据WASSERTEIN距离学习域不变功能。提出了一种条件适应策略,以减少域分布差异,并解决类别不匹配和课程前偏差,这些偏差通常忽略边缘适应方法。此外,我们提出了一种标签相关传输算法来解决无监督的问题,通过基于基础横域关系产生更有效的伪目标标签。在标准域适应基准上进行了一组比较实验,结果表明,所提出的DCAN优于先前的适应方法。 (c)2019年elestvier有限公司保留所有权利。

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