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MOTRv2: Bootstrapping End-to-End Multi-Object Tracking by Pretrained Object Detectors

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In this paper, we propose MOTRv2, a simple yet effective pipeline to bootstrap end-to-end multi-object tracking with a pretrained object detector. Existing end-to-end methods, MOTR and TrackFormer are inferior to their tracking-by-detection counterparts mainly due to their poor detection performance. We aim to improve MOTR by elegantly incorporating an extra object detector. We first adopt the anchor formulation of queries and then use an extra object detector to generate proposals as anchors, providing detection prior to MOTR. The simple modification greatly eases the conflict between joint learning detection and association tasks in MOTR. MOTRv2 keeps the query propogation feature and scales well on large-scale benchmarks. MOTRv2 ranks the 1st place (73.4% HOTA on DanceTrack) in the 1st Multiple People Tracking in Group Dance Challenge. Moreover, MOTRv2 reaches state-of-the-art performance on the BDD100K dataset. We hope this simple and effective pipeline can provide some new insights to the end-to-end MOT community. Code is available at \url{https://github.com/megvii-research/MOTRv2}.

Yuang Zhang, Tiancai Wang, Xiangyu Zhang• 2022

Related benchmarks

TaskDatasetResultRank
Multiple Object TrackingMOT17 (test)
MOTA78.6
921
Multiple Object TrackingMOT20 (test)
MOTA76.2
358
Multi-Object TrackingDanceTrack (test)
HOTA0.734
355
Multi-Object TrackingBDD100K (val)
mIDF156.5
70
Multi-Object TrackingMOT17
MOTA78.6
55
Multiple Object TrackingMOT20
MOTA76.2
21
Multi-Object TrackingDanceTrack 58 (test)
HOTA69.9
20
Multi-Object TrackingQuadTrack (test)
HOTA16.42
11
Multi-Object TrackingJRDB (test)
HOTA18.22
11
Multi-Object TrackingBenSMOT
HOTA65.28
9
Showing 10 of 11 rows

Other info

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