Data Association
Data association, the process of matching data points from different sources or time instances, is crucial for numerous computer vision and robotics applications, aiming to establish correct correspondences between observations and underlying objects or features. Current research heavily focuses on developing robust and efficient data association methods using deep learning architectures like transformers and graph neural networks, often incorporating geometric constraints (e.g., epipolar geometry) and probabilistic models to handle uncertainty and noise. These advancements are significantly impacting fields like multi-object tracking, simultaneous localization and mapping (SLAM), and sensor fusion, leading to improved accuracy and reliability in autonomous systems and scene understanding.
Papers
HDA-LVIO: A High-Precision LiDAR-Visual-Inertial Odometry in Urban Environments with Hybrid Data Association
Jian Shi, Wei Wang, Mingyang Qi, Xin Li, Ye Yan
LiDAR Point Cloud-based Multiple Vehicle Tracking with Probabilistic Measurement-Region Association
Guanhua Ding, Jianan Liu, Yuxuan Xia, Tao Huang, Bing Zhu, Jinping Sun
Learnable Graph Matching: A Practical Paradigm for Data Association
Jiawei He, Zehao Huang, Naiyan Wang, Zhaoxiang Zhang
ByteTrackV2: 2D and 3D Multi-Object Tracking by Associating Every Detection Box
Yifu Zhang, Xinggang Wang, Xiaoqing Ye, Wei Zhang, Jincheng Lu, Xiao Tan, Errui Ding, Peize Sun, Jingdong Wang