论文标题
从LiDAR数据中基于点云的快速几何表面分割
Fast Geometric Surface based Segmentation of Point Cloud from Lidar Data
论文作者
论文摘要
映射环境一直是机器人导航和同时本地化和映射(SLAM)的重要任务。 LIDAR提供了环境的快速准确的3D点云图,这有助于构建地图。但是,在点云中处理数百万点成为一项计算昂贵的任务。在本文中,提出了一种方法来实时生成分段表面,这些方法可用于建模3D对象。首先,提出了一种算法,用于从旋转激光雷达的单个镜头数据中构建有效的地图。它基于快速的网络和子采样。它利用了旋转激光雷达传感器的物理设计和工作原理。然后,通过估计正常并考虑其同质性来分割产生的网状表面。分段表面可以用作预测机器人活动环境中对象的几何准确模型的建议。将所提出的方法与一些流行的点云分割方法进行了比较,以在准确性和速度方面突出功效。
Mapping the environment has been an important task for robot navigation and Simultaneous Localization And Mapping (SLAM). LIDAR provides a fast and accurate 3D point cloud map of the environment which helps in map building. However, processing millions of points in the point cloud becomes a computationally expensive task. In this paper, a methodology is presented to generate the segmented surfaces in real time and these can be used in modeling the 3D objects. At first an algorithm is proposed for efficient map building from single shot data of spinning Lidar. It is based on fast meshing and sub-sampling. It exploits the physical design and the working principle of the spinning Lidar sensor. The generated mesh surfaces are then segmented by estimating the normal and considering their homogeneity. The segmented surfaces can be used as proposals for predicting geometrically accurate model of objects in the robots activity environment. The proposed methodology is compared with some popular point cloud segmentation methods to highlight the efficacy in terms of accuracy and speed.