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Person Re-Identification Using Kernel-Based Metric Learning Methods*

Fei Xiong, Mengran Gou, Octavia Camps, and Mario Sznaier

Dept. of Electrical and Computer Engineering, Northeastern University, Boston, MA 02115, USA
fxiong@coe.neu.edu
mengran@coe.neu.edu
camps@coe.neu.edu
msznaier@coe.neu.edu
http://robustsystems.coe.neu.edu

Abstract. 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, 2 and RBF-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.

Electronic Supplementary Material:

Electronic Supplementary Material (7 KB)

LNCS 8695, p. 1 ff.

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