RADDet:基于距离-方位-多普勒的动态道路使用者雷达目标检测

Ao Zhang, F. Nowruzi, R. Laganière
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引用次数: 42

摘要

与基于相机的方法相比,使用汽车雷达进行目标检测的深度学习模型尚未得到探索。这可归因于缺乏公共雷达数据集。在本文中,我们收集了一个新的雷达数据集,该数据集包含距离-方位多普勒张量形式的雷达数据,以及动态道路使用者张量上的边界框、类别标签和笛卡尔鸟瞰距离地图上的2D边界框。为了构建数据集,我们提出了一种基于实例的自动标注方法。此外,提出了一种新的基于距离-方位-多普勒的多类目标检测深度学习模型。该算法是一种基于锚点的单阶段检测器,分别在距离、方位、多普勒和笛卡尔域上生成3D边界框和2D边界框。我们提出的算法在3D边界框预测上达到56.3%的AP, IOU为0.3,在2D边界框预测上达到51.6%,IOU为0.5。我们的数据集和代码可以在https://github.com/ZhangAoCanada/RADDet.git上找到。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RADDet: Range-Azimuth-Doppler based Radar Object Detection for Dynamic Road Users
Object detection using automotive radars has not been explored with deep learning models in comparison to the camera based approaches. This can be attributed to the lack of public radar datasets. In this paper, we collect a novel radar dataset that contains radar data in the form of Range-AzimuthDoppler tensors along with the bounding boxes on the tensor for dynamic road users, category labels, and 2D bounding boxes on the Cartesian Bird-Eye-View range map. To build the dataset, we propose an instance-wise auto-annotation method. Furthermore, a novel Range-Azimuth-Doppler based multiclass object detection deep learning model is proposed. The algorithm is a one-stage anchor-based detector that generates both 3D bounding boxes and 2D bounding boxes on RangeAzimuth-Doppler and Cartesian domains, respectively. Our proposed algorithm achieves 56.3% AP with IOU of 0.3 on 3D bounding box predictions, and 51.6% with IOU of 0.5 on 2D bounding box prediction. Our dataset and the code can be found at https://github.com/ZhangAoCanada/RADDet.git.
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