Fast Online 3D Multi-Camera Multi-Object Tracking and Pose Estimation
About
This paper proposes a fast and online method for jointly performing 3D multi-object tracking and pose estimation using multiple monocular cameras. Our algorithm requires only 2D bounding box and pose detections, eliminating the need for costly 3D training data or computationally expensive deep learning models. Our solution is an efficient implementation of a Bayes-optimal multi-object tracking filter, enhancing computational efficiency while maintaining accuracy. We demonstrate that our algorithm is significantly faster than state-of-the-art methods without compromising accuracy, using only publicly available pre-trained 2D detection models. We also illustrate the robust performance of our algorithm in scenarios where multiple cameras are intermittently disconnected or reconnected during operation.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| 3D Human Pose Estimation | CMU Panoptic | Mean MPJPE34 | 32 | |
| Multi-person 3D Pose Estimation | Campus frames 350-470, 650-750 (test) | PCP (avg)86.8 | 22 | |
| Multi-Object Tracking | WILDTRACK (remaining 10%) | MOTA47.6 | 11 | |
| 3D Multi-person Pose Estimation | Shelf Dataset (frames 300 to 600) | Actor 1 Performance Score90.4 | 7 | |
| 3D Multi-Object Tracking | CMC Sequence 1 | FP Count0.00e+0 | 4 | |
| 3D Multi-Object Tracking | CMC Sequence 3 | FP Count11 | 4 | |
| 3D Multi-Object Tracking | CMC Sequence 4 | False Positives0.00e+0 | 4 | |
| 3D Multi-Object Tracking | CMC Sequence 5 | FP Count62 | 4 | |
| 3D Multi-Object Tracking | CMC Sequence 2 | FP Count2 | 4 | |
| 3D Multi-Object Tracking | MultiviewX | False Positives (FP)2.26e+3 | 4 |