DocumentCode :
59662
Title :
Person Re-Identification Over Camera Networks Using Multi-Task Distance Metric Learning
Author :
Lianyang Ma ; Xiaokang Yang ; Dacheng Tao
Author_Institution :
Dept. of Electron. Eng., Shanghai Jiao Tong Univ., Shanghai, China
Volume :
23
Issue :
8
fYear :
2014
fDate :
Aug. 2014
Firstpage :
3656
Lastpage :
3670
Abstract :
Person reidentification in a camera network is a valuable yet challenging problem to solve. Existing methods learn a common Mahalanobis distance metric by using the data collected from different cameras and then exploit the learned metric for identifying people in the images. However, the cameras in a camera network have different settings and the recorded images are seriously affected by variability in illumination conditions, camera viewing angles, and background clutter. Using a common metric to conduct person reidentification tasks on different camera pairs overlooks the differences in camera settings; however, it is very time-consuming to label people manually in images from surveillance videos. For example, in most existing person reidentification data sets, only one image of a person is collected from each of only two cameras; therefore, directly learning a unique Mahalanobis distance metric for each camera pair is susceptible to over-fitting by using insufficiently labeled data. In this paper, we reformulate person reidentification in a camera network as a multitask distance metric learning problem. The proposed method designs multiple Mahalanobis distance metrics to cope with the complicated conditions that exist in typical camera networks. We address the fact that these Mahalanobis distance metrics are different but related, and learned by adding joint regularization to alleviate over-fitting. Furthermore, by extending, we present a novel multitask maximally collapsing metric learning (MtMCML) model for person reidentification in a camera network. Experimental results demonstrate that formulating person reidentification over camera networks as multitask distance metric learning problem can improve performance, and our proposed MtMCML works substantially better than other current state-of-the-art person reidentification methods.
Keywords :
image sensors; learning (artificial intelligence); video surveillance; Mahalanobis distance metric; MtMCML model; background clutter; camera networks; camera viewing angles; joint regularization; multitask distance metric learning; multitask maximally collapsing metric learning; person reidentification; recorded images; video surveillance; Cameras; Clutter; Image color analysis; Lighting; Measurement; Optimization; Visualization; Person re-identification; camera network; convex optimization; distance metric leaning; multi-task learning;
fLanguage :
English
Journal_Title :
Image Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1057-7149
Type :
jour
DOI :
10.1109/TIP.2014.2331755
Filename :
6838984
Link To Document :
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