Person Re-Identification (Re-Id) in occlusion scenarios is a challenging problem because a pedestrian can be partially occluded. The use of local information for feature extraction and matching is still necessary. Therefore, we propose a Pose-guided inter- and intra-part relational transformer (Pirt) for occluded person Re-Id, which builds part-aware long-term correlations by introducing transformer. In our framework, we firstly develop a pose-guided feature extraction module with regional grouping and mask construction for robust feature representations. The positions of a pedestrian in the image under surveillance scenarios are relatively fixed, hence we propose intra-part and inter-part relational transformer. The intra-part module creates local relations with mask-guided features, while the inter-part relationship builds correlations with transformers, to develop cross relationships between part nodes. With the collaborative learning inter- and intra-part relationships, experiments reveal that our proposed Pirt model achieves a new state of the art on the public occluded dataset, and further extensions on standard non-occluded person Re-Id datasets also reveal our comparable performances.
Tao WangHong LiuPinhao SongTianyu GuoWei Shi
Chentao HuYanbing ChenLingyi GuoLingbing TaoZhixin TieWei Ke
Ying ChenYuzhen YangWenfeng LiuYuwen HuangJinming Li
Jiaxu MiaoYu WuPing LiuYuhang DingYi Yang
Xiaokun ZhaoLongfei ZhangXingyong WuGangyi Ding