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arxiv: 1705.08314 · v4 · pith:53ACT7ZUnew · submitted 2017-05-23 · 💻 cs.CV

Fusion of Head and Full-Body Detectors for Multi-Object Tracking

classification 💻 cs.CV
keywords trackingbenchmarkdetectordetectorsproblemssinglealgorithmapproach
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In order to track all persons in a scene, the tracking-by-detection paradigm has proven to be a very effective approach. Yet, relying solely on a single detector is also a major limitation, as useful image information might be ignored. Consequently, this work demonstrates how to fuse two detectors into a tracking system. To obtain the trajectories, we propose to formulate tracking as a weighted graph labeling problem, resulting in a binary quadratic program. As such problems are NP-hard, the solution can only be approximated. Based on the Frank-Wolfe algorithm, we present a new solver that is crucial to handle such difficult problems. Evaluation on pedestrian tracking is provided for multiple scenarios, showing superior results over single detector tracking and standard QP-solvers. Finally, our tracker ranks 2nd on the MOT16 benchmark and 1st on the new MOT17 benchmark, outperforming over 90 trackers.

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