Person re-identification (re-id) suffers from a serious occlusion problem when applied to crowded public places. In this paper, we propose to retrieve a full-body person image by using a person image with occlusions. This differs significantly from the conventional person re-id problem where it is assumed that person images are detected without any occlusion. We thus call this new problem the occluded person re-identitification. To address this new problem, we propose a novel Attention Framework of Person Body (AFPB) based on deep learning, consisting of 1) an Occlusion Simulator (OS) which automatically generates artificial occlusions for full-body person images, and 2) multi-task losses that force the neural network not only to discriminate a person's identity but also to determine whether a sample is from the occluded data distribution or the full-body data distribution. Experiments on a new occluded person re-id dataset and three existing benchmarks modified to include full-body person images and occluded person images show the superiority of the proposed method.
Yujian FengYimu JiFei WuGuangwei GaoYang GaoTianliang LiuShangdong LiuXiao‐Yuan JingJiebo Luo
Ruibing HouBingpeng MaHong ChangXinqian GuShiguang ShanXilin Chen
Jiamin LiaoZhaopeng DouYixuan FanYali LiShengjin Wang
Sejun KimSungjae KangHyomin ChoiSeong-Soo KimKisung Seo