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CAMO-MOT

This is the official repo release of the paper CAMO-MOT: Combined Appearance-Motion Optimization for 3D Multi-Object Tracking with Camera-LiDAR Fusion.

News

  • 2022-09-08. CAMO-MOT is released on arXiv🙂.
  • 2022-08-04. We rank first among all methods on nuScenes Dataset for Tracking😊.
  • 2022-08-03. We rank 4th among all methods on KITTI Dataset for MOT😀.

Results

Multi-object tracking(on nuScenes test set)

Method AMOTA AMOTP
CAMO-MOT 0.753 0.472

You can find detailed results on nuScenes test set on this website. Or you can view the accuracy trend of MOT algorithms on this website

Multi-object tracking(on nuScenes val set)

Tracker AMOTA AMOTP
CAMO-MOT 0.763 0.527

On nuScenes, we use BEVFusion and FocalConv as our detectors.

Multi-object tracking(on KITTI test)

Category HOTA (%) MOTA (%) MOTP (%) MT (%) ML (%) IDS FRAG FP FN
Car 79.99 90.38 85.00 84.46 7.54 30 156 2337 942
Pedestrian 44.77 52.48 64.50 35.40 25.77 152 1133 8325 2525

You can find detailed results on KITTI test set on this website.

Multi-object tracking(on KITTI val)

Category HOTA (%) MOTA (%) IDS FP FN
Car 82.91 91.96 1 302 371
Pedestrian 50.99 64.75 70 2240 1140

On KITTI, we use PointGNN as our detector.

License

CAMO-MOT is released under the MIT license.

Acknowledgement

In the detection part, many thanks to the following open-source projects:

In the tracking part, many thanks to the following open-source projects:

Citation

If you find our paper useful for you, please consider cite us by:grin::

@ARTICLE{10164676,
  author={Wang, Li and Zhang, Xinyu and Qin, Wenyuan and Li, Xiaoyu and Gao, Jinghan and Yang, Lei and Li, Zhiwei and Li, Jun and Zhu, Lei and Wang, Hong and Liu, Huaping},
  journal={IEEE Transactions on Intelligent Transportation Systems}, 
  title={CAMO-MOT: Combined Appearance-Motion Optimization for 3D Multi-Object Tracking With Camera-LiDAR Fusion}, 
  year={2023},
  volume={},
  number={},
  pages={1-16},
  doi={10.1109/TITS.2023.3285651}}