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A visual domain adaptation method based on enhanced subspace distribution matching

机译:基于增强子空间分布匹配的视觉域自适应方法

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One of the challenges in computer vision is how to learn an accurate classifier for a new domain by using labeled images from an old domain under the condition that there is no available labeled images in the new domain. Domain adaptation is an outstanding solution that tackles this challenge by employing available source-labeled datasets, even with significant difference in distribution and properties. However, most prior methods only reduce the difference in subspace marginal or conditional distributions across domains while completely ignoring the source data label dependence information in a subspace. In this paper, we put forward a novel domain adaptation approach, referred to as Enhanced Subspace Distribution Matching. Specifically, it aims to jointly match the marginal and conditional distributions in a kernel principal dimensionality reduction procedure while maximizing the source label dependence in a subspace, thus raising the subspace distribution matching degree. Extensive experiments verify that it can significantly outperform several state-of-the-art methods for cross-domain image classification problems.
机译:计算机视觉中的挑战之一是如何在新域中没有可用的标记图像的情况下,通过使用来自旧域的标记图像来为新域学习准确的分类器。域自适应是一种出色的解决方案,它可以通过使用可用的带有源标签的数据集来应对这一挑战,即使分布和属性存在显着差异。然而,大多数现有方法仅减小跨域的子空间边缘或条件分布的差异,而完全忽略子空间中的源数据标签依赖性信息。在本文中,我们提出了一种新颖的域自适应方法,称为增强子空间分布匹配。具体地,其目的在于在核主维度降低过程中共同匹配边缘和条件分布,同时最大化子空间中的源标签依赖性,从而提高子空间分布匹配度。大量的实验证明,它可以大大胜过跨领域图像分类问题的几种最新方法。

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