Vehicle Re Identification
Vehicle re-identification (ReID) aims to match the same vehicle across different cameras, a crucial task for intelligent transportation systems and smart city initiatives. Current research focuses on improving accuracy and efficiency using deep learning models, including convolutional neural networks (CNNs) and vision transformers (ViTs), often incorporating attention mechanisms and feature fusion techniques to address challenges like viewpoint variations and inter-class similarity. These advancements enhance the reliability of vehicle tracking and identification across camera networks, impacting applications such as traffic monitoring, security, and autonomous driving. Furthermore, research explores unsupervised and continual learning approaches to reduce reliance on large annotated datasets and improve model generalization.
Papers
Study on Aspect Ratio Variability toward Robustness of Vision Transformer-based Vehicle Re-identification
Mei Qiu, Lauren Christopher, Lingxi Li
Unity in Diversity: Multi-expert Knowledge Confrontation and Collaboration for Generalizable Vehicle Re-identification
Zhenyu Kuang, Hongyang Zhang, Lidong Cheng, Yinhao Liu, Yue Huang, Xinghao Ding
Multi-query Vehicle Re-identification: Viewpoint-conditioned Network, Unified Dataset and New Metric
Aihua Zheng, Chaobin Zhang, Weijun Zhang, Chenglong Li, Jin Tang, Chang Tan, Ruoran Jia
Dynamic Enhancement Network for Partial Multi-modality Person Re-identification
Aihua Zheng, Ziling He, Zi Wang, Chenglong Li, Jin Tang