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Re-ranking pedestrian re-identification with multiple Metrics

机译:使用多个指标对行人重新标识进行重新排序

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摘要

Pedestrian re-identification (re-ID) is a video surveillance technology for specific pedestrians in non-overlapping multi-camera scenes. However, due to the influence of dramatic changes in perspectives and pedestrian occasions, it is still a huge challenge to find a stable, reliable algorithm in high accuracy rate. In this paper, to increase the robustness and performance of re-ID, we proposed a re-ID method by re-ranking the refined re-ID results (i.e. initial lists) gotten from the kernel-Local Fisher Discriminant Analysis (kLFDA) and Marginal Fisher Analysis (MFA) metrics, which can improve the probability of the correct target on the initial result lists and also enhance the robustness. During the process of re-ranking, in order to distinguish pedestrians in high similarity, a rigorous distance constraint model named Perspective Distance Model (PDM) is designed to further reduce the intra-class variations and increase the distance of inter-class variations. By using the PDM, the concise results gotten from the kLFDA and MFA metrics are re-ranked in order to further recognize different individuals in high similarity and improve the re-ID rate. Experimental results on seven challenging re-ID datasets (VIPeR, CUHK01, Prid2011, iLIDS, CUHK03, Market-1501and DukeReID) show that the performance of proposed method is high and effective.
机译:行人重新识别(re-ID)是一种针对非重叠多摄像机场景中特定行人的视频监视技术。然而,由于视角和行人场合的急剧变化的影响,找到一种稳定,可靠的高准确率算法仍然是一个巨大的挑战。在本文中,为了提高re-ID的鲁棒性和性能,我们通过对从内核-本地Fisher判别分析(kLFDA)和边缘费舍尔分析(MFA)度量标准,可以提高初始结果列表上正确目标的概率,并增强鲁棒性。在重新排序的过程中,为了区分高度相似的行人,设计了一个严格的距离约束模型,称为“透视距离模型”(PDM),以进一步减少类内差异并增加类间差异的距离。通过使用PDM,对从kLFDA和MFA指标得出的简明结果进行重新排名,以便进一步以高度相似性识别不同的个体并提高re-ID率。在七个具有挑战性的re-ID数据集(VIPeR,CUHK01,Prid2011,iLIDS,CUHK03,Market-1501和DukeReID)上的实验结果表明,该方法的性能高且有效。

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