Point To Set Similarity Based Deep Feature Learning For Person Re-Identification

30TH IEEE CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR 2017)(2017)

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摘要
Person re-identification (Re-ID) remains a challenging problem due to significant appearance changes caused by variations in view angle, background clutter, illumination condition and mutual occlusion. To address these issues, conventional methods usually focus on proposing robust feature representation or learning metric transformation based on pairwise similarity, using Fisher-type criterion. The recent development in deep learning based approaches address the two processes in a joint fashion and have achieved promising progress. One of the key issues for deep learning based person Re-ID is the selection of proper similarity comparison criteria, and the performance of learned features using existing criterion based on pairwise similarity is still limited, because only Point to Point (P2P) distances are mostly considered. In this paper, we present a novel person Re-ID method based on Point to Set similarity comparison. The Point to Set (P2S) metric can jointly minimize the intra-class distance and maximize the interclass distance, while back-propagating the gradient to optimize parameters of the deep model. By utilizing our proposed P2S metric, the learned deep model can effectively distinguish different persons by learning discriminative and stable feature representations. Comprehensive experimental evaluations on 3DPeS, CUHK01, PRID2011 and Market1501 datasets demonstrate the advantages of our method over the state-of-the-art approaches.
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关键词
mutual occlusion,person Re-ID method,discriminative feature representations,deep feature learning,person re-identification,view angle,background clutter,illumination condition,point-to-set similarity-based deep feature learning,similarity comparison criteria,intraclass distance,interclass distance,P2S metric,CUHK01 dataset,PRID2011 dataset,Market1501 dataset,3DPeS dataset
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