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Collaborative Sparse Approximation for Multiple-Shot Across-Camera Person Re-identification

机译:多次拍摄跨摄像头人重新识别的协同稀疏近似

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In this paper we propose a simple and effective solution to the important and challenging problem of across-camera person re-identification. We focus on the common case in video surveillance where multiple images or video frames are available for each person. Instead of exploring new features, the proposed approach aims at making a better use of such images/frames. It builds a collaborative representation over all the gallery images (of known person individuals) to best approximate the query images (containing an unknown person) via affine combinations. The approximation is measured by the nearest point distance between the two affine hulls constructed by the query images and gallery images, respectively. By enforcing the sparsity of the samples used for approximating the two nearest points, the relative importance of the gallery images belonging to different persons has the ability to reveal the identity of the querying person. Extensive experiments on public benchmark datasets demonstrate that the proposed approach greatly outperforms the state-of-the-art methods.
机译:在本文中,我们提出了一种简单有效的解决方案,对跨相机的重要和挑战性问题重新识别。我们专注于视频监控中的常见情况,其中多个图像或视频帧可供每个人使用。所提出的方法而不是探索新功能,而是更好地利用这种图像/框架。它通过所有画廊图像(已知人员个人)构建协作表示,以通过仿射组合最佳地近似查询图像(包含未知人)。近似通过分别由查询图像和库图像构成的两个仿射船体之间的最近点距离来测量。通过强制用于近似两个最接近点的样本的稀疏性,属于不同人的画廊图像的相对重要性具有揭示查询人的身份的能力。公共基准数据集的广泛实验表明,所提出的方法极大地优于最先进的方法。

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