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首页> 外文期刊>IEEE Transactions on Image Processing >Person Re-Identification via Distance Metric Learning With Latent Variables
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Person Re-Identification via Distance Metric Learning With Latent Variables

机译:通过具有潜在变量的距离度量学习对人员进行重新识别

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摘要

In this paper, we propose an effective person re-identification method with latent variables, which represents a pedestrian as the mixture of a holistic model and a number of flexible models. Three types of latent variables are introduced to model uncertain factors in the re-identification problem, including vertical misalignments, horizontal misalignments and leg posture variations. The distance between two pedestrians can be determined by minimizing a given distance function with respect to latent variables, and then be used to conduct the re-identification task. In addition, we develop a latent metric learning method for learning the effective metric matrix, which can be solved via an iterative manner: once latent information is specified, the metric matrix can be obtained based on some typical metric learning methods; with the computed metric matrix, the latent variables can be determined by searching the state space exhaustively. Finally, extensive experiments are conducted on seven databases to evaluate the proposed method. The experimental results demonstrate that our method achieves better performance than other competing algorithms.
机译:在本文中,我们提出了一种有效的具有潜在变量的人员重新识别方法,该方法将行人作为整体模型和许多灵活模型的混合体。引入了三种类型的潜在变量来对重新识别问题中的不确定因素进行建模,包括垂直未对准,水平未对准和腿部姿势变化。可以通过最小化相对于潜在变量的给定距离函数来确定两个行人之间的距离,然后将其用于执行重新识别任务。另外,我们开发了一种潜在的度量学习方法来学习有效的度量矩阵,可以通过迭代的方式来解决:一旦指定了潜在信息,就可以根据一些典型的度量学习方法来获得度量矩阵。利用计算的度量矩阵,可以通过穷举搜索状态空间来确定潜在变量。最后,在七个数据库上进行了广泛的实验,以评估所提出的方法。实验结果表明,我们的方法比其他竞争算法具有更好的性能。

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