The development of autonomous vehicles generates a tremendous demand for a low-cost solution with a complete set of camera sensors capturing the environment around the car. It is essential for object detection and tracking to address these new challenges in multi-camera settings. In order to address these challenges, this work introduces novel Single-Stage Global Association Tracking approaches to associate one or more detection 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 experimental results on the nuScenes dataset demonstrate the benefits of the proposed method by outperforming prior vision-based tracking methods in multi-camera settings.
翻译:自主车辆的开发产生了对低成本解决方案的巨大需求,需要一套完整的照相传感器来捕捉汽车周围的环境,对物体探测和跟踪至关重要,以应对多摄像头环境中的这些新挑战。为了应对这些挑战,这项工作引入了新型的单一系统全球协会跟踪方法,将多摄像头中的一个或多个探测与跟踪物体联系起来。这些方法旨在解决3D天体探测不一致造成的碎片跟踪问题。此外,我们的模型还提高了NuScenes探测挑战中基于视觉的标准3D天体探测器的探测准确性。NuScenes数据集的实验结果显示,在多摄像头环境中,超过以往的基于视觉的跟踪方法,是拟议方法的好处。