RSN: Range Sparse Net for Efficient, Accurate LiDAR 3D Object Detection

Pei Sun, Weiyue Wang, Yuning Chai, Gamaleldin F. Elsayed, A. Bewley, Xiao Zhang, C. Sminchisescu, Drago Anguelov
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引用次数: 106

Abstract

The detection of 3D objects from LiDAR data is a critical component in most autonomous driving systems. Safe, high speed driving needs larger detection ranges, which are enabled by new LiDARs. These larger detection ranges require more efficient and accurate detection models. Towards this goal, we propose Range Sparse Net (RSN) – a simple, efficient, and accurate 3D object detector – in order to tackle real time 3D object detection in this extended detection regime. RSN predicts foreground points from range images and applies sparse convolutions on the selected foreground points to detect objects. The lightweight 2D convolutions on dense range images results in significantly fewer selected foreground points, thus enabling the later sparse convolutions in RSN to efficiently operate. Combining features from the range image further enhance detection accuracy. RSN runs at more than 60 frames per second on a 150m × 150m detection region on Waymo Open Dataset (WOD) while being more accurate than previously published detectors. As of 11/2020, RSN is ranked first in the WOD leaderboard based on the APH/LEVEL_1 metrics for LiDAR-based pedestrian and vehicle detection, while being several times faster than alternatives.
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有效、准确的激光雷达三维目标检测的距离稀疏网络
从激光雷达数据中检测3D物体是大多数自动驾驶系统的关键组成部分。安全、高速驾驶需要更大的探测范围,而新型激光雷达可以实现这一点。这些更大的检测范围需要更高效和准确的检测模型。为了实现这一目标,我们提出了一种简单、高效、准确的3D目标检测器——距离稀疏网(RSN),以便在这种扩展的检测体系中解决实时3D目标检测问题。RSN从距离图像中预测前景点,并对选中的前景点应用稀疏卷积来检测目标。在密集距离图像上进行轻量级的二维卷积,所选择的前景点明显减少,从而使RSN中后续的稀疏卷积能够高效地运行。结合距离图像的特征,进一步提高了检测精度。RSN在Waymo开放数据集(WOD)上150m × 150m的检测区域上以每秒60帧以上的速度运行,同时比以前发布的检测器更准确。截至2020年11月,基于基于激光雷达的行人和车辆检测的APH/LEVEL_1指标,RSN在世界领先排行榜上排名第一,同时速度比替代方案快几倍。
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