Mutual Learning of Joint and Separate Domain Alignments for Multi-Source Domain Adaptation

Yuanyuan Xu, Meina Kan, S. Shan, Xilin Chen
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引用次数: 6

Abstract

Multi-Source Domain Adaptation (MSDA) aims at transferring knowledge from multiple labeled source domains to benefit the task in an unlabeled target domain. The challenges of MSDA lie in mitigating domain gaps and combining information from diverse source domains. In most existing methods, the multiple source domains can be jointly or separately aligned to the target domain. In this work, we consider that these two types of methods, i.e. joint and separate domain alignments, are complementary and propose a mutual learning based alignment network (MLAN) to combine their advantages. Specifically, our proposed method is composed of three components, i.e. a joint alignment branch, a separate alignment branch, and a mutual learning objective between them. In the joint alignment branch, the samples from all source domains and the target domain are aligned together, with a single domain alignment goal, while in the separate alignment branch, each source domain is individually aligned to the target domain. Finally, by taking advantage of the complementarity of joint and separate domain alignment mechanisms, mutual learning is used to make the two branches learn collaboratively. Compared with other existing methods, our proposed MLAN integrates information of different domain alignment mechanisms and thus can mine rich knowledge from multiple domains for better performance. The experiments on Domain-Net, Office-31, and Digits-five datasets demonstrate the effectiveness of our method.
面向多源域自适应的联合与分离域对齐互学习
多源域自适应(Multi-Source Domain Adaptation, MSDA)的目的是将多个有标记的源领域的知识转移到一个未标记的目标领域。MSDA的挑战在于减少领域差距和组合来自不同源领域的信息。在大多数现有方法中,多个源域可以联合或单独对齐到目标域。在这项工作中,我们认为这两种类型的方法,即联合域对齐和分离域对齐,是互补的,并提出了一个基于相互学习的对齐网络(MLAN)来结合它们的优势。具体来说,我们提出的方法由三个组成部分组成,即联合对齐分支、独立对齐分支和它们之间的相互学习目标。在联合对齐分支中,来自所有源域和目标域的样本对齐在一起,具有单个域对齐目标,而在单独对齐分支中,每个源域分别与目标域对齐。最后,利用联合域和分离域对齐机制的互补性,利用互学习实现两个分支的协同学习。与现有方法相比,本文提出的多域网络集成了不同领域对齐机制的信息,可以从多个领域中挖掘丰富的知识,从而获得更好的性能。在Domain-Net、Office-31和digits - 5数据集上的实验验证了该方法的有效性。
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