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
TrackFlow: Multi-Object Tracking with Normalizing Flows
Gianluca Mancusi, Aniello Panariello, Angelo Porrello, Matteo Fabbri, Simone Calderara, Rita Cucchiara
TOPIC: A Parallel Association Paradigm for Multi-Object Tracking under Complex Motions and Diverse Scenes
Xiaoyan Cao, Yiyao Zheng, Yao Yao, Huapeng Qin, Xiaoyu Cao, Shihui Guo
Hybrid-SORT: Weak Cues Matter for Online Multi-Object Tracking
Mingzhan Yang, Guangxin Han, Bin Yan, Wenhua Zhang, Jinqing Qi, Huchuan Lu, Dong Wang
Advancing Frame-Dropping in Multi-Object Tracking-by-Detection Systems Through Event-Based Detection Triggering
Matti Henning, Michael Buchholz, Klaus Dietmayer