Accurate 3D multi-object tracking (MOT) is vital for autonomous vehicles, yet LiDAR and camera-based methods degrade in adverse weather. Meanwhile, Radar-based solutions remain robust but often suffer from limited vertical resolution and simplistic motion models. Existing Kalman filter-based approaches also rely on fixed noise covariance, hampering adaptability when objects make sudden maneuvers. We propose Bay es-4DR Track, a 4D Radar-based MOT framework that adopts a transformer-based motion prediction network to capture nonlinear motion dynamics and employs Bayesian approximation in both detection and prediction steps. Moreover, our two-stage data association leverages Doppler measurements to better distinguish closely spaced targets. Evaluated on the K-Radar dataset (including adverse weather scenarios), Bayes-4DRTrack demonstrates a 5.7% gain in Average Multi-Object Tracking Accuracy (AMOTA) over methods with traditional motion models and fixed noise covariance. These results show-case enhanced robustness and accuracy in demanding, real-world conditions.
Bayesian Approximation-Based Trajectory Prediction and Tracking with 4D Radar
Dong-In Kim,Dong-Hee Paek,Seung-Hyun Song,Seung-Hyun Kong
Published 2025 in 2025 IEEE Intelligent Vehicles Symposium (IV)
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- Publication year
2025
- Venue
2025 IEEE Intelligent Vehicles Symposium (IV)
- Publication date
2025-02-03
- Fields of study
Computer Science, Engineering
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