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首页> 外文期刊>Computers, Environment and Urban Systems >Area-wide roof plane segmentation in airborne LiDAR point clouds
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Area-wide roof plane segmentation in airborne LiDAR point clouds

机译:机载LiDAR点云中的区域屋顶平面分割

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摘要

Most algorithms performing segmentation of 3D point cloud data acquired by, e.g. Airborne Laser Scanning (ALS) systems are not suitable for large study areas because the huge amount of point cloud data cannot be processed in the computer's main memory. In this study a new workflow for seamless automated roof plane detection from ALS data is presented and applied to a large study area. The design of the workflow allows area-wide segmentation of roof planes on common computer hardware but leaves the option open to be combined with distributed computing (e.g. cluster and grid environments). The workflow that is fully implemented in a Geographical Information System (GIS) uses the geometrical information of the 3D point cloud and involves four major steps: (i) The whole dataset is divided into several overlapping subareas, i.e. tiles, (ii) A raster based candidate region detection algorithm is performed for each tile that identifies potential areas containing buildings, (iii) The resulting building candidate regions of all tiles are merged and those areas overlapping one another from adjacent tiles are united to a single building area, (iv) Finally, three dimensional roof planes are extracted from the building candidate regions and each region is treated separately. The presented workflow reduces the data volume of the point cloud that has to be analyzed significantly and leads to the main advantage that seamless area-wide point cloud based segmentation can be performed without requiring a computationally intensive algorithm detecting and combining segments being part of several subareas (i.e. processing tiles). A reduction of 85% of the input data volume for point cloud segmentation in the presented study area could be achieved, which directly decreases computation time.
机译:大多数算法执行对3D点云数据进行分割的功能,例如,机载激光扫描(ALS)系统不适用于较大的研究区域,因为无法在计算机的主内存中处理大量的点云数据。在这项研究中,提出了一种新的工作流程,用于根据ALS数据进行无缝的自动屋顶平面检测,并将其应用于较大的研究区域。工作流程的设计允许在通用计算机硬件上对屋顶平面进行全区域分割,但是保留了与分布式计算(例如集群和网格环境)结合使用的选项。地理信息系统(GIS)中完全实现的工作流使用3D点云的几何信息,并涉及四个主要步骤:(i)将整个数据集划分为几个重叠的子区域(即图块),(ii)栅格对每个图块执行基于的候选区域检测算法,以识别包含建筑物的潜在区域;(iii)将所有图块的生成的建筑物候选区域合并,并将与相邻图块彼此重叠的那些区域合并为一个建筑物区域,(iv)最后,从建筑物候选区域中提取三维屋顶平面,并对每个区域分别进行处理。提出的工作流程减少了必须大量分析的点云的数据量,并带来了主要优势,即可以执行基于无缝区域的点云的分割,而无需计算密集型算法来检测和合并作为多个子区域一部分的分段(即处理瓷砖)。在提出的研究区域中,可以将点云分割的输入数据量减少85%,这直接减少了计算时间。

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  • 来源
    《Computers, Environment and Urban Systems》 |2012年第1期|p.54-64|共11页
  • 作者单位

    University of Innsbruck, Institute of Geography, 6020 Innsbruck, Austria,alpS - Centre for Climate Change Adaptation Technologies, 6020 Innsbruck, Austria;

    University of Heidelberg, Institute of Geography, Chair ofGIScience, 69120 Heidelberg, Germany;

    alpS - Centre for Climate Change Adaptation Technologies, 6020 Innsbruck, Austria,Laserdata GmbH, TechnikerstraJSe 21a, 6020 Innsbruck, Austria;

    University of Innsbruck, Institute of Geography, 6020 Innsbruck, Austria;

    University of Heidelberg, Institute of Geography, Chair ofGIScience, 69120 Heidelberg, Germany;

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