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Learning the Roots of Visual Domain Shift

机译:学习视觉域名的根源

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In this paper we focus on the spatial nature of visual domain shift, attempting to learn where domain adaptation originates in each given image of the source and target set. We borrow concepts and techniques from the CNN visualization literature, and learn domainness maps able to localize the degree of domain specificity in images. We derive from these maps features related to different domainness levels, and we show that by considering them as a preprocessing step for a domain adaptation algorithm, the final classification performance is strongly improved. Combined with the whole image representation, these features provide state of the art results on the Office dataset.
机译:在本文中,我们专注于视域移位的空间性质,试图了解域适应源自源和目标集的每个给定图像的位置。我们从CNN可视化文献中借用概念和技术,并学习能够本地化图像中域特征程度的域名映射。我们从这些映射与不同的域级别相关的映射功能,我们认为,通过将它们视为域适应算法的预处理步骤,强大地提高了最终的分类性能。结合整个图像表示,这些特征在Office DataSet上提供了最先进的结果。

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