Multi Object Tracking
Multi-object tracking (MOT) aims to identify and continuously track multiple objects within video sequences, a crucial task for applications like autonomous driving and surveillance. Current research emphasizes improving robustness and accuracy, particularly in challenging scenarios involving occlusions, complex motion, and diverse object appearances, often employing tracking-by-detection frameworks enhanced with techniques like deep learning-based feature extraction (e.g., ReID), graph neural networks, and state-space models for motion prediction. These advancements are driving significant improvements in MOT performance across various benchmarks and datasets, leading to more reliable and efficient systems for real-world applications.
Papers
TR-MOT: Multi-Object Tracking by Reference
Mingfei Chen, Yue Liao, Si Liu, Fei Wang, Jenq-Neng Hwang
Interactive Multi-scale Fusion of 2D and 3D Features for Multi-object Tracking
Guangming Wang, Chensheng Peng, Jinpeng Zhang, Hesheng Wang
Learning of Global Objective for Network Flow in Multi-Object Tracking
Shuai Li, Yu Kong, Hamid Rezatofighi
DeepFusionMOT: A 3D Multi-Object Tracking Framework Based on Camera-LiDAR Fusion with Deep Association
Xiyang Wang, Chunyun Fu, Zhankun Li, Ying Lai, Jiawei He
GIAOTracker: A comprehensive framework for MCMOT with global information and optimizing strategies in VisDrone 2021
Yunhao Du, Junfeng Wan, Yanyun Zhao, Binyu Zhang, Zhihang Tong, Junhao Dong