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MambaMOT: State-Space Model as Motion Predictor for Multi-Object Tracking
Hsiang-Wei Huang Cheng-Yen Yang Wenhao Chai Zhongyu Jiang Jenq-Neng Hwang

Abstract
In the field of multi-object tracking (MOT), traditional methods often rely on the Kalman filter for motion prediction, leveraging its strengths in linear motion scenarios. However, the inherent limitations of these methods become evident when confronted with complex, nonlinear motions and occlusions prevalent in dynamic environments like sports and dance. This paper explores the possibilities of replacing the Kalman filter with a learning-based motion model that effectively enhances tracking accuracy and adaptability beyond the constraints of Kalman filter-based tracker. In this paper, our proposed method MambaMOT and MambaMOT+, demonstrate advanced performance on challenging MOT datasets such as DanceTrack and SportsMOT, showcasing their ability to handle intricate, non-linear motion patterns and frequent occlusions more effectively than traditional methods.
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| multi-object-tracking-on-dancetrack | MambaMOT | AssA: 39.0 DetA: 80.8 HOTA: 56.1 IDF1: 54.9 MOTA: 90.3 |
| multi-object-tracking-on-sportsmot | MambaMOT | AssA: 58.6 DetA: 86.7 HOTA: 71.3 IDF1: 71.1 MOTA: 94.9 |
| multiple-object-tracking-on-sportsmot | MambaMOT | AssA: 58.6 DetA: 86.7 HOTA: 71.3 IDF1: 71.1 MOTA: 94.9 |
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