Lifted Disjoint Paths with Application in Multiple Object Tracking
About
We present an extension to the disjoint paths problem in which additional \emph{lifted} edges are introduced to provide path connectivity priors. We call the resulting optimization problem the lifted disjoint paths problem. We show that this problem is NP-hard by reduction from integer multicommodity flow and 3-SAT. To enable practical global optimization, we propose several classes of linear inequalities that produce a high-quality LP-relaxation. Additionally, we propose efficient cutting plane algorithms for separating the proposed linear inequalities. The lifted disjoint path problem is a natural model for multiple object tracking and allows an elegant mathematical formulation for long range temporal interactions. Lifted edges help to prevent id switches and to re-identify persons. Our lifted disjoint paths tracker achieves nearly optimal assignments with respect to input detections. As a consequence, it leads on all three main benchmarks of the MOT challenge, improving significantly over state-of-the-art.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Multiple Object Tracking | MOT17 (test) | MOTA60.5 | 921 | |
| Multi-Object Tracking | MOT16 (test) | MOTA61.3 | 228 | |
| Multi-Object Tracking | MOT17 | MOTA60.5 | 55 | |
| Multiple Object Tracking | 2D MOT15 (test) | MOTA52.5 | 34 | |
| Multiple Object Tracking | MOT16 | MOTA61.3 | 15 |