Semi-automatic LiDAR point cloud denoising using a connected-component labelling method

IF 0.5 Q3 GEOGRAPHY Geographia Cassoviensis Pub Date : 2019-01-01 DOI:10.33542/gc2019-2-08
J. Kaňuk, Jozef Šupinský, J. Šašak, J. Hofierka, Yongbou Wang, Qiuzhao Zhang, V. Sedlák, Katarína Onačillová, M. Gallay
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Abstract

The Smart City concept requires new, fast methods for collection of 3-D data representing features of urban landscape. Laser scanning technology (LiDAR - Light Detection and Ranging) enables such approach producing dense 3-D point clouds of millions of points, which, however, contain noise. Therefore, we developed a new approach allowing for a semi-automatic elimination of data noise resulting from motion of objects within the scanned scene such as persons. We used a connected-component labelling method to filter out the noise points from terrestrial laser scanning point clouds. Our approach was based on a step-by-step object classification with a proper parameterisation. In the first step, all points located close to the predicted terrain were selected. In the second step, the points representing the terrain and floor were classified using the surface filter tool implemented in the RiScan Pro software by RIEGL. The rest of points were classified using point cloud clustering via the connected-component labelling method implemented in the CloudCompare software. In the final step, the operator manually decides whether the point cluster represents the noise. The method was applied to the Cathedral of Saint Elizabeth, a sacral object located in the historical centre of the city of Košice in Slovakia during normal operating hours. We managed to capture approximately 80% of the data noise in total. The method provides a better flexibility in surveying overcrowded city locations using the laser scanning technology.
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基于连通分量标记法的半自动激光雷达点云去噪
智慧城市的概念需要新的、快速的方法来收集代表城市景观特征的三维数据。激光扫描技术(LiDAR—光探测和测距)使这种方法能够产生由数百万个点组成的密集的三维点云,然而,这些点云包含噪声。因此,我们开发了一种新方法,允许半自动消除扫描场景中物体(如人)运动引起的数据噪声。采用连通分量标记法从地面激光扫描点云中滤除噪声点。我们的方法是基于一个逐步的对象分类与适当的参数化。在第一步中,选择所有靠近预测地形的点。第二步,使用RIEGL在RiScan Pro软件中实现的表面滤波工具对代表地形和地板的点进行分类。其余的点通过CloudCompare软件中实现的连接组件标记方法使用点云聚类进行分类。最后一步,操作员手动判断点簇是否代表噪声。该方法应用于位于斯洛伐克Košice市历史中心的圣伊丽莎白大教堂,这是一个在正常工作时间内的神圣物体。我们设法捕获了大约80%的数据噪声。该方法为使用激光扫描技术测量拥挤的城市地点提供了更好的灵活性。
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来源期刊
CiteScore
0.80
自引率
0.00%
发文量
4
期刊介绍: Geographia Cassoviensis is a biannual peer-reviewed journal published by the Pavol Jozef Šafárik University in Košice since 2007. It is available both in print and open-access electronic version. The journal publishes original research articles from Geography and other closely-related research fields. Since 2016 the journal is indexed in SCOPUS and ERIH PLUS - European Reference Index for Humanities and Social Sciences, and since 2017 also in Emerging Sources Citation Index by Clarivate Analytics.
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