Towards more reliable matching for person re-identification

Xiang Li, Ancong Wu, Mei Cao, Jinjie You, Weishi Zheng
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引用次数: 7

Abstract

Person re-identification is an important problem of matching persons across non-overlapping camera views. However, the re-identification is still far from achieving reliable matching. First, many existing approaches are wholebody- based matching, and how body parts could affect and assist the matching is still not clearly known. Second, the learned similarity measurement/metric is equally used for each pair of probe and gallery images, and the bias of the measurement is not considered. In this paper, we address the above two problems in order to conduct a more reliable matching. More specifically, we propose a reliable integrated matching scheme (IMS), which uses body parts to assist matching of the whole body. Moreover, a sparsity-based confidence is also presented for regulating the learned metric to improve the matching reliability. The experiments conducted on three publicly available datasets confirm that the proposed scheme is effective for person re-identification.
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迈向更可靠的匹配,以进行人员再识别
人物再识别是一个重要的问题,在非重叠的相机视图匹配人物。但是,再识别还远远不能实现可靠的匹配。首先,许多现有的方法是基于全身的匹配,身体部位如何影响和辅助匹配仍然不清楚。其次,将学习到的相似性度量/度量同等地用于每对探测图像和图库图像,并且不考虑度量的偏差。在本文中,我们解决了以上两个问题,以便进行更可靠的匹配。更具体地说,我们提出了一种可靠的综合匹配方案(IMS),该方案使用身体部位来辅助整个身体的匹配。此外,还提出了一种基于稀疏度的置信度来调节学习到的度量,以提高匹配的可靠性。在三个公开的数据集上进行的实验验证了该方案对人的再识别是有效的。
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