Building Segmentation of UAV-based Oblique Photography Point Cloud Using DoPP and DBSCAN

Guodong Wang, Qiang Wang, R. Zhao, Chao Chen, Yan-xin Lu
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引用次数: 1

Abstract

The segmentation of building point cloud is the basis of fast three-dimensional city models reconstruction. A building segmentation method of UAV based oblique photography dense matching point cloud is proposed using density of projection points(DoPP) and density based spatial clustering of applications with noise(DBSCAN). First, the building facades are extracted according to the density of projection points by using the rich facade features, based on the analysis of different spatial target features. Then, the density clustering method is introduced to further segment the extracted building facades, so as to realize the monomer segmentation of building facade from UAV tilt photography point clouds. Experimental results show that the proposed method can achieve good results, and provide a new building segmentation method from UAV based oblique photography dense matching point clouds.
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基于DoPP和DBSCAN的无人机斜摄点云建筑分割
建筑点云的分割是快速三维城市模型重建的基础。提出了一种基于投影点密度(DoPP)和带噪声应用密度空间聚类(DBSCAN)的无人机斜摄影密集匹配点云建筑分割方法。首先,在分析不同空间目标特征的基础上,利用丰富的立面特征,根据投影点的密度提取建筑立面;然后,引入密度聚类方法对提取的建筑立面进行进一步分割,实现无人机倾斜摄影点云对建筑立面的单体分割;实验结果表明,该方法能够取得较好的分割效果,为基于无人机斜摄影密集匹配点云的建筑物分割提供了一种新的方法。
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