Person Re Identification
Person re-identification (ReID) focuses on matching images of the same individual across different camera views, a crucial task in surveillance and security. Current research emphasizes improving ReID's robustness to variations in appearance (e.g., clothing changes, occlusions, lighting), viewpoint, and even across different camera modalities (e.g., aerial and ground views), often employing transformer networks, graph convolutional networks, and generative adversarial networks to learn more discriminative and generalizable features. These advancements are driving progress in applications like video surveillance, robotics, and even privacy-preserving ReID systems, impacting both the accuracy and efficiency of person identification technologies.
Papers
Camera-Driven Representation Learning for Unsupervised Domain Adaptive Person Re-identification
Geon Lee, Sanghoon Lee, Dohyung Kim, Younghoon Shin, Yongsang Yoon, Bumsub Ham
HashReID: Dynamic Network with Binary Codes for Efficient Person Re-identification
Kshitij Nikhal, Yujunrong Ma, Shuvra S. Bhattacharyya, Benjamin S. Riggan
Rethinking Person Re-identification from a Projection-on-Prototypes Perspective
Qizao Wang, Xuelin Qian, Bin Li, Yanwei Fu, Xiangyang Xue
Color Prompting for Data-Free Continual Unsupervised Domain Adaptive Person Re-Identification
Jianyang Gu, Hao Luo, Kai Wang, Wei Jiang, Yang You, Jian Zhao
Learning Clothing and Pose Invariant 3D Shape Representation for Long-Term Person Re-Identification
Feng Liu, Minchul Kim, ZiAng Gu, Anil Jain, Xiaoming Liu