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首页> 外文期刊>Journal of visual communication & image representation >Projected Transfer Sparse Coding for cross domain image representation
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Projected Transfer Sparse Coding for cross domain image representation

机译:用于跨域图像表示的投影传输稀疏编码

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摘要

Sparse coding has been used for image representation successfully. However, when there is considerable variation between source and target domain, sparse coding cannot achieve satisfactory results. In this paper, we proposed a Projected Transfer Sparse Coding algorithm. In order to reduce their distribution difference, we project source and target data into a shared low dimensional space. Meanwhile, we learn a projection matrix and a shared dictionary and the sparse coding of source and target data in the low dimensional space. Unlike existing methods, the sparse representations are learnt using the projected data which are invariant to the distribution difference and the irrelevant samples. Thus, the sparse representations are robust and can improve the classification performance. We do not need to know any explicit correspondence across domains. We learn the projection matrix, the discriminative sparse representations, and the dictionary in a unified objective function. Our image representation method yields state-of-the-art results. (C) 2015 Elsevier Inc. All rights reserved.
机译:稀疏编码已成功用于图像表示。但是,当源域和目标域之间存在很大差异时,稀疏编码将无法获得令人满意的结果。在本文中,我们提出了一种投影传输稀疏编码算法。为了减少它们的分布差异,我们将源数据和目标数据投影到一个共享的低维空间中。同时,我们学习了一个投影矩阵和一个共享字典,以及在低维空间中对源数据和目标数据的稀疏编码。与现有方法不同,使用投影数据学习稀疏表示,该投影数据对于分布差异和不相关的样本是不变的。因此,稀疏表示是鲁棒的并且可以提高分类性能。我们不需要知道任何跨域的显式对应关系。我们在统一的目标函数中学习投影矩阵,判别式稀疏表示和字典。我们的图像表示方法产生了最新的结果。 (C)2015 Elsevier Inc.保留所有权利。

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