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一种分步式建筑物屋顶面点云高精度提取方法
引用本文:周钦坤,岳建平,李乐乐,杨恒. 一种分步式建筑物屋顶面点云高精度提取方法[J]. 大地测量与地球动力学, 2021, 41(6): 633-638. DOI: 10.14075/j.jgg.2021.06.015
作者姓名:周钦坤  岳建平  李乐乐  杨恒
作者单位:河海大学地球科学与工程学院,南京市佛城西路8号,211100;苏州工业园区测绘地理信息有限公司,江苏省苏州市苏虹中路101号,215000
摘    要:针对现有机载激光雷达(LiDAR)点云高精度提取方法存在建筑物屋顶面提取精度较低、适应性较差等问题,提出一种分步式建筑物屋顶面点云高精度提取方法.该方法通过主成分分析计算点云可靠性指标,选取可靠平面点;然后,利用K-means算法实现可靠点在法向量空间上的聚类,并通过逐步平面估计,提取初始屋顶面片;最后,进行面片的合并...

关 键 词:机载激光雷达  屋顶面  可靠平面点  K-means  逐步平面估计

A Stepwise High-Precision Extraction for Point Cloud of Building Roof
ZHOU Qinkun,YUE Jianping,LI Lele,YANG Heng. A Stepwise High-Precision Extraction for Point Cloud of Building Roof[J]. Journal of Geodesy and Geodynamics, 2021, 41(6): 633-638. DOI: 10.14075/j.jgg.2021.06.015
Authors:ZHOU Qinkun  YUE Jianping  LI Lele  YANG Heng
Abstract:Aiming at the problems of low accuracy and poor adaptability in extracting building roof using LiDAR point cloud data, we propose a stepwise method for high-precision extraction of building roof point clouds. We calculate the reliability index of the point cloud through principal component analysis, select the reliable plane points, then use the K-means algorithm to realize the clustering of the reliable points in the normal vector space and extract the initial roof patch through stepwise plane estimation. Finally, we process the combination of building roof patches and the attribution judgment of unmarked points. The test results show that the proposed method has excellent extraction results, high extraction efficiency, and can obtain better extraction results for building roofs of different complexity levels.
Keywords:LiDAR  building roof  reliable plane point  K-means  stepwise plane estimation  
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