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Person Re-identification by Multi-hypergraph Fusion

机译:通过超符号融合进行人员重新识别

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摘要

Matching people across nonoverlapping cameras, also known as person re-identification, is an important and challenging research topic. Despite its great demand in many crucial applications such as surveillance, person re-identification is still far from being solved. Due to drastic view changes, even the same person may look quite dissimilar in different cameras. Illumination and pose variations further aggravate this discrepancy. To this end, various feature descriptors have been designed for improving the matching accuracy. Since different features encode information from different aspects, in this paper, we propose to effectively leverage multiple off-the-shelf features via multi-hypergraph fusion. A hypergraph captures not only pairwise but also high-order relationships among the subjects being matched. In addition, different from conventional approaches in which the matching is achieved by computing the pairwise distance or similarity between a probe and a gallery subject, the similarities between the probe and all gallery subjects are learned jointly via hypergraph optimization. Experiments on popular data sets demonstrate the effectiveness of the proposed method, and a superior performance is achieved as compared with the most recent state-of-the-arts.
机译:使用不重叠的摄像机对人员进行匹配(也称为人员重新识别)是一项重要且具有挑战性的研究课题。尽管在诸如监视之类的许多关键应用中有巨大的需求,但是人员重识别仍然远远没有解决。由于视角的急剧变化,即使同一个人在不同的相机中看起来也可能完全不同。照明和姿势变化进一步加剧了这种差异。为此,已经设计了各种特征描述符以提高匹配精度。由于不同的特征会从不同的方面对信息进行编码,因此在本文中,我们建议通过多超级图融合有效地利用多个现成的特征。超图不仅捕获配对对象,还捕获匹配对象之间的高级关系。另外,不同于通过计算探针与画廊对象之间的成对距离或相似度来实现匹配的常规方法,探针与所有画廊对象之间的相似度是通过超图优化共同学习的。在流行数据集上进行的实验证明了该方法的有效性,并且与最新技术相比,其性能更高。

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