A probabilistic representation of LiDAR range data for efficient 3D object detection

Theodore C. Yapo, C. Stewart, R. Radke
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引用次数: 29

Abstract

We present a novel approach to 3D object detection in scenes scanned by LiDAR sensors, based on a probabilistic representation of free, occupied, and hidden space that extends the concept of occupancy grids from robot mapping algorithms. This scene representation naturally handles LiDAR sampling issues, can be used to fuse multiple LiDAR data sets, and captures the inherent uncertainty of the data due to occlusions and clutter. Using this model, we formulate a hypothesis testing methodology to determine the probability that given 3D objects are present in the scene. By propagating uncertainty in the original sample points, we are able to measure confidence in the detection results in a principled way. We demonstrate the approach in examples of detecting objects that are partially occluded by scene clutter such as camouflage netting.
用于有效三维目标检测的激光雷达距离数据的概率表示
我们提出了一种在激光雷达传感器扫描的场景中进行3D物体检测的新方法,该方法基于空闲空间、占用空间和隐藏空间的概率表示,扩展了机器人映射算法中占用网格的概念。这种场景表示自然地处理了LiDAR采样问题,可用于融合多个LiDAR数据集,并捕获由于遮挡和杂波导致的数据固有的不确定性。使用这个模型,我们制定了一个假设检验方法来确定给定的3D物体出现在场景中的概率。通过在原始样本点中传播不确定性,我们能够以原则性的方式测量检测结果的置信度。我们在检测被场景杂波(如伪装网)部分遮挡的物体的示例中演示了该方法。
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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