RobMOT: Robust 3D Multi-Object Tracking by Observational Noise and State
Estimation Drift Mitigation on LiDAR PointCloud
RobMOT: Robust 3D Multi-Object Tracking by Observational Noise and State Estimation Drift Mitigation on LiDAR PointCloud
Mohamed Nagy Naoufel Werghi Bilal Hassan Jorge Dias Majid Khonji

Abstract
This paper addresses limitations in 3D tracking-by-detection methods,particularly in identifying legitimate trajectories and reducing stateestimation drift in Kalman filters. Existing methods often use threshold-basedfiltering for detection scores, which can fail for distant and occludedobjects, leading to false positives. To tackle this, we propose a novel trackvalidity mechanism and multi-stage observational gating process, significantlyreducing ghost tracks and enhancing tracking performance. Our method achieves a29.47% improvement in Multi-Object Tracking Accuracy (MOTA) on the KITTIvalidation dataset with the Second detector. Additionally, a refined Kalmanfilter term reduces localization noise, improving higher-order trackingaccuracy (HOTA) by 4.8%. The online framework, RobMOT, outperformsstate-of-the-art methods across multiple detectors, with HOTA improvements ofup to 3.92% on the KITTI testing dataset and 8.7% on the validationdataset, while achieving low identity switch scores. RobMOT excels inchallenging scenarios, tracking distant objects and prolonged occlusions, witha 1.77% MOTA improvement on the Waymo Open dataset, and operates at aremarkable 3221 FPS on a single CPU, proving its efficiency for real-timemulti-object tracking.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| multiple-object-tracking-on-kitti-test-online | RobMOT | HOTA: 81.76 IDSW: 7 MOTA: 91.02 |
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