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Person Re-Identification Using Kernel-Based Metric Learning Methods

机译:使用基于内核的度量学习方法重新识别

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Re-identification of individuals across camera networks with limited or no overlapping fields of view remains challenging in spite of significant research efforts. In this paper, we propose the use, and extensively evaluate the performance, of four alternatives for re-ID classification: regularized Pairwise Constrained Component Analysis, kernel Local Fisher Discriminant Analysis, Marginal Fisher Analysis and a ranking ensemble voting scheme, used in conjunction with different sizes of sets of histogram-based features and linear, χ~2 and RBF-χ~2 kernels. Comparisons against the state-of-art show significant improvements in performance measured both in terms of Cumulative Match Characteristic curves (CMC) and Proportion of Uncertainty Removed (PUR) scores on the challenging VIPeR, iLIDS, CAVIAR and 3DPeS datasets.
机译:尽管有重大的研究努力,但在有限或没有重叠视野领域的相机网络中的个人仍然存在具有挑战性的。 在本文中,我们提出了使用,并广泛评估了重新ID分类的四种替代品的性能:正规化的成对受限分析,内核本地Fisher判别分析,边缘Fisher分析和排名集合投票方案,与 不同大小的基于直方图的特征和线性,χ〜2和RBF-χ〜2内核。 针对现有技术的比较显示了在累积匹配特征曲线(CMC)方面测量的性能的显着改善,并且在挑战VIPER,ILIDS,Caviar和3DPES数据集上除去(PUR)分数的不确定性比例。

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