Automotive Radar Sub-Sampling via Object Detection Networks: Leveraging Prior Signal Information

IF 4.6 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Madhumitha Sakthi;Marius Arvinte;Haris Vikalo
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引用次数: 0

Abstract

In recent years, automotive radar has attracted considerable attention due to the growing interest in autonomous driving technologies. Acquiring situational awareness using multimodal data collected at high sampling rates by various sensing devices including cameras, LiDAR, and radar requires considerable power, memory and compute resources which are often limited at an edge device. In this paper, we present a novel adaptive radar sub-sampling algorithm designed to identify regions that require more detailed/accurate reconstruction based on the information about prior environmental conditions, enabling near-optimal performance at considerably lower effective sampling rates. Designed to robustly perform under variable weather conditions, the algorithm was shown on the Oxford radar dataset to achieve accurate scene reconstruction utilizing only 10% of the collected samples in good weather. In the case of the RADIATE dataset acquired during extreme weather conditions (snow, fog), only 20% of the samples were sufficient to enable robust scene reconstruction. A further modification of the algorithm incorporates object motion to enable reliable identification of regions that require attention. This includes monitoring possible future occlusions caused by the objects detected in the present frame. Finally, we train a YOLO network on the RADIATE dataset to perform object detection, obtaining 6.6% AP50 improvement over the baseline Faster R-CNN network.
基于目标检测网络的汽车雷达子采样:利用先验信号信息
近年来,由于人们对自动驾驶技术的兴趣日益浓厚,汽车雷达引起了相当大的关注。通过各种传感设备(包括摄像头、激光雷达和雷达)以高采样率收集的多模态数据来获取态势感知需要相当大的功率、内存和计算资源,而这些资源通常仅限于边缘设备。在本文中,我们提出了一种新的自适应雷达子采样算法,该算法旨在根据有关先前环境条件的信息识别需要更详细/更准确重建的区域,从而在相当低的有效采样率下实现接近最佳的性能。该算法旨在在可变天气条件下稳健地执行,在牛津雷达数据集上展示了该算法,在良好天气下仅利用10%的收集样本实现准确的场景重建。在极端天气条件下(雪,雾)获取的辐射数据集的情况下,只有20%的样本足以实现鲁棒场景重建。该算法的进一步修改纳入了物体运动,从而能够可靠地识别需要注意的区域。这包括监测在当前帧中检测到的物体可能引起的未来遮挡。最后,我们在辐射数据集上训练YOLO网络进行目标检测,比基线Faster R-CNN网络AP50提高了6.6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
5.40
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