Simple Online and Realtime Tracking
About
This paper explores a pragmatic approach to multiple object tracking where the main focus is to associate objects efficiently for online and realtime applications. To this end, detection quality is identified as a key factor influencing tracking performance, where changing the detector can improve tracking by up to 18.9%. Despite only using a rudimentary combination of familiar techniques such as the Kalman Filter and Hungarian algorithm for the tracking components, this approach achieves an accuracy comparable to state-of-the-art online trackers. Furthermore, due to the simplicity of our tracking method, the tracker updates at a rate of 260 Hz which is over 20x faster than other state-of-the-art trackers.
Alex Bewley, Zongyuan Ge, Lionel Ott, Fabio Ramos, Ben Upcroft• 2016
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Multiple Object Tracking | MOT17 (test) | MOTA80.1 | 921 | |
| Multiple Object Tracking | MOT20 (test) | MOTA42.7 | 358 | |
| Multi-Object Tracking | DanceTrack (test) | HOTA51.2 | 355 | |
| Multi-Object Tracking | MOT16 (test) | MOTA60.4 | 228 | |
| Multi-Object Tracking | SportsMOT (test) | HOTA70.3 | 199 | |
| Multi-Object Tracking | MOT 2016 (test) | MOTA59.8 | 59 | |
| Multi-Object Tracking | MOT17 | MOTA43.1 | 55 | |
| Multi-Object Tracking and Segmentation | BDD100K segmentation tracking (val) | mMOTSA11.4 | 54 | |
| Multi-Object Tracking | KITTI (test) | -- | 51 | |
| Multi-Object Tracking | TAO (val) | AssocA14.32 | 40 |
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