Adversarial domain separation and adaptation

Jen-Chieh Tsai, Jen-Tzung Chien
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引用次数: 18

Abstract

Traditional domain adaptation methods attempted to learn the shared representation for distribution matching between source domain and target domain where the individual information in both domains was not characterized. Such a solution suffers from the mixing problem of individual information with the shared features which considerably constrains the performance for domain adaptation. To relax this constraint, it is crucial to extract both shared information and individual information. This study captures both information via a new domain separation network where the shared features are extracted and purified via separate modeling of individual information in both domains. In particular, a hybrid adversarial learning is incorporated in a separation network as well as an adaptation network where the associated discriminators are jointly trained for domain separation and adaptation according to the minmax optimization over separation loss and domain discrepancy, respectively. Experiments on different tasks show the merit of using the proposed adversarial domain separation and adaptation.
对抗性领域分离和适应
传统的领域自适应方法试图通过学习共享表示来实现源域和目标域之间的分布匹配,而源域和目标域的个体信息不具有特征。这种解决方案存在个体信息与共享特征的混合问题,严重限制了领域自适应的性能。为了放松这种约束,提取共享信息和个人信息是至关重要的。本研究通过一个新的领域分离网络来捕获这两个信息,其中通过对两个领域中的单个信息进行单独建模来提取和纯化共享特征。特别地,在分离网络和自适应网络中结合了混合对抗学习,其中根据分离损失和域差异的最小最大优化,分别联合训练相关判别器进行域分离和自适应。在不同任务上的实验表明了该方法的优越性。
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