Ground segmentation is an important preprocessing task for autonomous vehicles (AVs) with 3D LiDARs. To solve the problem of existing ground segmentation methods being very difficult to balance accuracy and computational complexity, a fast point cloud ground segmentation approach based on a coarse-to-fine Markov random field (MRF) method is proposed. The method uses an improved elevation map for ground coarse segmentation, and then uses spatiotemporal adjacent points to optimize the segmentation results. The processed point cloud is classified into high-confidence obstacle points, ground points, and unknown classification points to initialize an MRF model. The graph cut method is then used to solve the model to achieve fine segmentation. Experiments on datasets showed that our method improves on other algorithms in terms of ground segmentation accuracy and is faster than other graph-based algorithms, which require only a single core of an I7-3770 CPU to process a frame of Velodyne HDL-64E data (in 39.77 ms, on average). Field tests were also conducted to demonstrate the effectiveness of the proposed method.
翻译:地面偏移是具有3D LiDARs 的自主车辆(AVs)的重要预处理任务。为解决目前地面偏移方法很难平衡准确性和计算复杂性的问题,建议采用基于粗微至松微马尔科夫随机场(MRF)法的快速点云层地面偏移法。该方法使用经改进的地面偏移高图,然后使用波形相邻点优化分解结果。经处理的点云分为高信力障碍点、地面点和未知的分类点,以启动MRF模型。然后,图形切换法用于解决模型,以达到细微分化。对数据集的实验表明,我们的方法在地面偏移精度方面改进了其他算法,比其他基于图形的算法更快,只需要I7-3770 CPU的单一核心来处理Velodyne HDL-64E数据框架(平均为3977米)。还进行了实地测试,以证明拟议方法的有效性。