基于激光雷达点云数据的楼宇足迹自动提取与正则化

M. Awrangjeb, Guojun Lu
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引用次数: 8

摘要

本文提出了一种用于建筑物足迹自动提取的激光雷达点云数据分割方法。利用DEM(数字高程模型)的地面高度信息,将非地面点(主要是建筑物和树木)与地面点分离。墙上的点从非接地点的集合中移除。剩余的非地面点则根据高度和局部邻域划分成簇。利用区域生长技术从每个点簇中提取平面顶板段。平面使用共面点作为种子点初始化,然后使用平面兼容性测试进行生长。在提取出所有平面段后,采用一种基于规则的方法去除尺寸较小且方向随机的树平面。然后将相邻的平面合并以获得单独的建筑边界,这些边界基于一种新的基于特征的技术进行规范化。从每个边界提取角和线段,并使用假设每个短建筑边平行或垂直于一个或多个相邻的长建筑边来调整。在五个澳大利亚数据集上的实验结果表明,所提出的方法在建筑足迹提取方面比目前最先进的方法具有更高的正确率。
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Automatic Building Footprint Extraction and Regularisation from LIDAR Point Cloud Data
This paper presents a segmentation of LIDAR point cloud data for automatic extraction of building footprint. Using the ground height information from a DEM (Digital Elevation Model), the non-ground points (mainly buildings and trees) are separated from the ground points. Points on walls are removed from the set of non-ground points. The remaining non-ground points are then divided into clusters based on height and local neighbourhood. Planar roof segments are extracted from each cluster of points following a region-growing technique. Planes are initialised using coplanar points as seed points and then grown using plane compatibility tests. Once all the planar segments are extracted, a rule-based procedure is applied to remove tree planes which are small in size and randomly oriented. The neighbouring planes are then merged to obtain individual building boundaries, which are regularised based on a new feature-based technique. Corners and line-segments are extracted from each boundary and adjusted using the assumption that each short building side is parallel or perpendicular to one or more neighbouring long building sides. Experimental results on five Australian data sets show that the proposed method offers higher correctness rate in building footprint extraction than a state-of-the-art method.
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