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Ground filtering and vegetation mapping using multi-return terrestrial laser scanning

机译:使用多返回地面激光扫描进行地面过滤和植被测绘

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Discriminating laser scanner data points belonging to ground from points above-ground (vegetation or buildings) is a key issue in research. Methods for filtering points into ground and non-ground classes have been widely studied mostly on datasets derived from airborne laser scanners, less so for terrestrial laser scanners. Recent developments in terrestrial laser sensors (longer ranges, faster acquisition and multiple return echoes) has aroused greater interest for surface modelling applications. The downside of TLS is that a typical dataset has high variability in point density, with evident side-effects on processing methods and CPU-time. In this work we use a scan dataset from a sensor which returns multiple target echoes, in this case providing more than 70 million points on our study site. The area presents low, medium and high vegetation, undergrowth with varying density, as well as bare ground with varying morphology (i.e. very steep slopes as well as flat areas). We test an integrated work-flow for defining a terrain and surface model (DTM and DSM) and successively for extracting information on vegetation density and height distribution on such a complex environment. Attention was given to efficiency and speed of processing. The method consists on a first step which subsets the original points to define ground candidates by taking into account the ordinal return number and the amplitude. A custom progressive morphological filter (opening operation) is applied next, on ground candidate points using a multidimensional grid to account for the fallout in point density as a function of distance from scanner. Vegetation density mapping over the area is then estimated using a weighted ratio of point counts in the tri-dimensional space over each cell. The overall result is a pipeline for processing TLS points clouds with minimal user interaction, producing a Digital Terrain Model (DTM), a Digital Surface Model (DSM), a vegetation density map and a derived Canopy Height Model (CHM). These products are of high importance for many applications ranging from forestry to hydrology and geomorphology.
机译:将属于地面的激光扫描仪数据点与地面以上的点(植被或建筑物)区分开来是研究的关键问题。对点进行地面和非地面分类的方法进行了广泛的研究,主要是从机载激光扫描仪获得的数据集中进行研究,而对于陆地激光扫描仪则较少。地面激光传感器的最新发展(更长的距离,更快的采集和多次回波)引起了对表面建模应用的更大兴趣。 TLS的缺点是典型的数据集的点密度具有很大的可变性,对处理方法和CPU时间具有明显的副作用。在这项工作中,我们使用来自传感器的扫描数据集,该传感器返回多个目标回波,在这种情况下,在我们的研究站点上提供了超过7,000万个点。该地区的植被低,中,高,密度不一的灌木丛以及形态各异的裸露地面(即非常陡峭的斜坡以及平坦的区域)。我们测试了一个集成的工作流程,以定义地形和表面模型(DTM和DSM),并随后在这种复杂的环境中提取有关植被密度和高度分布的信息。注意处理的效率和速度。该方法包括第一步,该步骤将原始点子集化,以通过考虑序数返回次数和幅度来定义地面候选对象。接下来,使用多维网格在地面候选点上应用自定义的渐进式形态学过滤器(打开操作),以解决点密度随距扫描仪距离而变的问题。然后,使用每个单元的三维空间中点计数的加权比率,估算该区域的植被密度图。总体结果是,通过最少的用户交互即可处理TLS点云的管道,从而生成数字地形模型(DTM),数字表面模型(DSM),植被密度图和派生的冠层高度模型(CHM)。这些产品对于从林业到水文学和地貌学的许多应用都非常重要。

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