基于字典学习的无监督域自适应子空间插值

Jie Ni, Qiang Qiu, R. Chellappa
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引用次数: 188

摘要

域适应解决了源域的数据实例与目标域的数据实例具有不同分布的问题,这种情况在许多实际场景中经常发生。这项工作的重点是无监督域自适应,其中标记数据仅在源域中可用。我们提出通过字典学习插值子空间来连接源域和目标域。这些子空间能够捕获固有的域位移,并形成跨域识别的共享特征表示。此外,我们引入了一种定量度量来表征两个域之间的转移,使我们能够选择最优域来适应给定的多个源域。我们提出了跨姿态、光照和模糊变化、跨数据集对象识别的人脸识别实验,并报告了在当前状态下改进的性能。
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Subspace Interpolation via Dictionary Learning for Unsupervised Domain Adaptation
Domain adaptation addresses the problem where data instances of a source domain have different distributions from that of a target domain, which occurs frequently in many real life scenarios. This work focuses on unsupervised domain adaptation, where labeled data are only available in the source domain. We propose to interpolate subspaces through dictionary learning to link the source and target domains. These subspaces are able to capture the intrinsic domain shift and form a shared feature representation for cross domain recognition. Further, we introduce a quantitative measure to characterize the shift between two domains, which enables us to select the optimal domain to adapt to the given multiple source domains. We present experiments on face recognition across pose, illumination and blur variations, cross dataset object recognition, and report improved performance over the state of the art.
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