Sample-Specific SVM Learning for Person Re-identification

2016 IEEE CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR)(2016)

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摘要
Person re-identification addresses the problem of matching people across disjoint camera views and extensive efforts have been made to seek either the robust feature representation or the discriminative matching metrics. However, most existing approaches focus on learning a fixed distance metric for all instance pairs, while ignoring the individuality of each person. In this paper, we formulate the person re-identification problem as an imbalanced classification problem and learn a classifier specifically for each pedestrian such that the matching model is highly tuned to the individual's appearance. To establish correspondence between feature space and classifier space, we propose a Least Square Semi-Coupled Dictionary Learning (LSSCDL) algorithm to learn a pair of dictionaries and a mapping function efficiently. Extensive experiments on a series of challenging databases demonstrate that the proposed algorithm performs favorably against the state-of-the-art approaches, especially on the rank-1 recognition rate.
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关键词
sample-specific SVM learning,person reidentification,disjoint camera views,feature representation,discriminative matching metrics,fixed distance metric learning,imbalanced classification problem,feature space,classifier space,least square semicoupled dictionary learning algorithm,LSSCDL algorithm,mapping function,rank-1 recognition rate
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