Title :
Local Fisher Discriminant Analysis for Pedestrian Re-identification
Author :
Pedagadi, Sateesh ; Orwell, James ; Velastin, Sergio ; Boghossian, Boghos
Author_Institution :
Kingston Univ. London, London, UK
Abstract :
Metric learning methods, for person re-identification, estimate a scaling for distances in a vector space that is optimized for picking out observations of the same individual. This paper presents a novel approach to the pedestrian re-identification problem that uses metric learning to improve the state-of-the-art performance on standard public datasets. Very high dimensional features are extracted from the source color image. A first processing stage performs unsupervised PCA dimensionality reduction, constrained to maintain the redundancy in color-space representation. A second stage further reduces the dimensionality, using a Local Fisher Discriminant Analysis defined by a training set. A regularization step is introduced to avoid singular matrices during this stage. The experiments conducted on three publicly available datasets confirm that the proposed method outperforms the state-of-the-art performance, including all other known metric learning methods. Further-more, the method is an effective way to process observations comprising multiple shots, and is non-iterative: the computation times are relatively modest. Finally, a novel statistic is derived to characterize the Match Characteristic: the normalized entropy reduction can be used to define the ´Proportion of Uncertainty Removed´ (PUR). This measure is invariant to test set size and provides an intuitive indication of performance.
Keywords :
feature extraction; image colour analysis; learning (artificial intelligence); principal component analysis; traffic engineering computing; PUR; color-space representation redundancy; local fisher discriminant analysis; match characteristic; metric learning methods; normalized entropy reduction; pedestrian re-identification problem; person re-identification method; proportion of uncertainty removed; public datasets; regularization step; singular matrices; source color image; training set; unsupervised PCA dimensionality reduction; very high dimensional feature extraction; Cameras; Feature extraction; Image color analysis; Measurement; Principal component analysis; Training; Vectors; Metric Learning; Object recognition; Pedestrain Re-identification;
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2013 IEEE Conference on
Conference_Location :
Portland, OR
DOI :
10.1109/CVPR.2013.426