Title :
Person Re-Identification by Robust Canonical Correlation Analysis
Author :
Le An ; Songfan Yang ; Bhanu, Bir
Author_Institution :
BRIC, Univ. of North Carolina at Chapel Hill, Chapel Hill, NC, USA
Abstract :
Person re-identification is the task to match people in surveillance cameras at different time and location. Due to significant view and pose change across non-overlapping cameras, directly matching data from different views is a challenging issue to solve. In this letter, we propose a robust canonical correlation analysis (ROCCA) to match people from different views in a coherent subspace. Given a small training set as in most re-identification problems, direct application of canonical correlation analysis (CCA) may lead to poor performance due to the inaccuracy in estimating the data covariance matrices. The proposed ROCCA with shrinkage estimation and smoothing technique is simple to implement and can robustly estimate the data covariance matrices with limited training samples. Experimental results on two publicly available datasets show that the proposed ROCCA outperforms regularized CCA (RCCA), and achieves state-of-the-art matching results for person re-identification as compared to the most recent methods.
Keywords :
cameras; covariance matrices; image matching; pose estimation; surveillance; RCCA; ROCCA; coherent subspace; data covariance matrix estimation; nonoverlapping cameras; people matching; person re-identification; pose change; regularized CCA; robust canonical correlation analysis; shrinkage estimation; smoothing technique; surveillance cameras; training set; Cameras; Correlation; Covariance matrices; Estimation; Image color analysis; Measurement; Robustness; Canonical correlation analysis (CCA); covariance estimation; person re-identification; subspace; surveillance;
Journal_Title :
Signal Processing Letters, IEEE
DOI :
10.1109/LSP.2015.2390222