Multi-camera multi-object tracking on the move via single-stage global association approach

Pattern Recognition(2024)

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摘要
The development of autonomous vehicles generates a tremendous demand for a low-cost solution based on a complete set of camera sensors to perceive the environment around the car. Towards this solution, it is essential for object detection and tracking to address new challenges in multi-camera settings. To address these challenges, this work introduces novel Single-Stage Global Association Tracking approaches to associate one or more detections from multi-cameras with tracked objects. These approaches aim to solve fragment-tracking issues caused by inconsistent 3D object detection. Moreover, our models also improve the detection accuracy of the standard vision-based 3D object detectors in the nuScenes detection challenge. The extensive experimental results on the nuScenes dataset demonstrate the benefits of the proposed method, which outperforms prior vision-based tracking methods in multi-camera settings.
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