FC-Track: Overlap-Aware Post-Association Correction for Online Multi-Object Tracking
arXiv cs.AI / 3/16/2026
💬 OpinionModels & Research
Key Points
- FC-Track is a lightweight online MOT framework that corrects overlap-induced mismatches without requiring global optimization or re-identification.
- It uses an Intersection over Area (IoA)-based filtering strategy to suppress unreliable appearance updates under high-overlap conditions and performs local appearance similarity checks within overlapped tracklet pairs to fix detection-to-tracklet mismatches.
- On MOT17 and MOT20 benchmarks it achieves 81.73 MOTA, 82.81 IDF1, 66.95 HOTA and 77.52 MOTA, 80.90 IDF1, 65.67 HOTA respectively, with real-time or near real-time speeds (5.7 FPS for MOT17; 0.6 FPS for MOT20).
- FC-Track reduces long-term identity switches to 29.55%, significantly lower than existing online trackers, while maintaining state-of-the-art performance on MOT20.
- The method is designed for real-time robotic applications, enabling more robust tracking in dynamic environments without global optimization or re-identification.
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