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
View-decoupled Transformer for Person Re-identification under Aerial-ground Camera Network
Quan Zhang, Lei Wang, Vishal M. Patel, Xiaohua Xie, Jianhuang Lai
Test-time Similarity Modification for Person Re-identification toward Temporal Distribution Shift
Kazuki Adachi, Shohei Enomoto, Taku Sasaki, Shin'ya Yamaguchi