3D Multiple Object Tracking on Autonomous Driving: A Literature Review
Peng Zhang, Xin Li, Liang He, Xin Lin

TL;DR
This paper provides a comprehensive review of 3D multi-object tracking in autonomous driving, analyzing current methods, challenges, datasets, and future research directions to guide ongoing advancements in the field.
Contribution
It offers a systematic categorization and assessment of existing 3D MOT methodologies, highlighting their challenges, strengths, and weaknesses, and proposes future research avenues.
Findings
Categorization of 3D MOT methods and their challenges
Overview of datasets and evaluation metrics
Identification of key research gaps and future directions
Abstract
3D multi-object tracking (3D MOT) stands as a pivotal domain within autonomous driving, experiencing a surge in scholarly interest and commercial promise over recent years. Despite its paramount significance, 3D MOT confronts a myriad of formidable challenges, encompassing abrupt alterations in object appearances, pervasive occlusion, the presence of diminutive targets, data sparsity, missed detections, and the unpredictable initiation and termination of object motion trajectories. Countless methodologies have emerged to grapple with these issues, yet 3D MOT endures as a formidable problem that warrants further exploration. This paper undertakes a comprehensive examination, assessment, and synthesis of the research landscape in this domain, remaining attuned to the latest developments in 3D MOT while suggesting prospective avenues for future investigation. Our exploration commences with…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Autonomous Vehicle Technology and Safety
