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Deep Joint Discriminative Feature Learning and Class-Aware Domain Alignment for Unsupervised Domain Adaptation

机译:深度联合区分特征学习和类感知域对齐,用于无监督域自适应

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Unsupervised domain adaptation aims to utilize the knowledge learned from source domain with labels to make predictions for target domain without labels. Most of existing methods are committed to aligning the global distribution information to narrow down the domain discrepancy between source and target domain, which show a promising achievement. However, these domain alignment methods can not completely eliminate domain shift because of the loose manifold structure, so that the adjacent samples located in a high-density data region from different classes are easily misclassified by the hyperplane learned from source domain. Another problem is that these methods only align the distributions in the domain level, while neglecting class-level distribution information, which may cause class misalignment among domains. In this paper, we propose to learn discriminative feature and align domain in class level which can learn better source discriminative feature representations and benefit domain alignment in the class level. The discriminative feature learning strategy is able to obtain a tight manifold structure and then promote a low-density separation between classes. Then, to perform fine-grained domain alignment and learn more transferable features, a class-aware domain alignment approach is proposed to align samples from the same class in source domain and target domain. Experiments on two datasets show that our proposal can improve the performance of deep unsupervised domain adaptation methods.
机译:无监督域自适应旨在利用从源域中获得的带有标签的知识来对没有标签的目标域进行预测。现有的大多数方法致力于对齐全球分布信息,以缩小源域和目标域之间的域差异,这显示了令人鼓舞的成就。然而,这些域对准方法由于疏散的歧管结构而不能完全消除域移位,从而使得来自不同类别的位于高密度数据区域中的相邻样本容易被从源域学习到的超平面误分类。另一个问题是,这些方法仅对齐域级别的分布,而忽略了类级别的分布信息,这可能会导致域之间的类未对齐。在本文中,我们建议在班级学习判别特征和对齐域,从而可以更好地学习源判别特征表示,并在班级受益于域对齐。区分特征学习策略能够获得紧密的流形结构,然后促进类之间的低密度分离。然后,为了执行细粒度的域对齐并了解更多可转移的功能,提出了一种类感知域对齐方法,以对齐源域和目标域中同一类的样本。在两个数据集上进行的实验表明,我们的建议可以提高深度无监督域自适应方法的性能。

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