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A generalized adaptive mathematical morphological filter for LIDAR data.

机译:LIDAR数据的广义自适应数学形态学滤波器。

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摘要

Airborne Light Detection and Ranging (LIDAR) technology has become the primary method to derive high-resolution Digital Terrain Models (DTMs), which are essential for studying Earth's surface processes, such as flooding and landslides. The critical step in generating a DTM is to separate ground and non-ground measurements in a voluminous point LIDAR dataset, using a filter, because the DTM is created by interpolating ground points. As one of widely used filtering methods, the progressive morphological (PM) filter has the advantages of classifying the LIDAR data at the point level, a linear computational complexity, and preserving the geometric shapes of terrain features. The filter works well in an urban setting with a gentle slope and a mixture of vegetation and buildings. However, the PM filter often removes ground measurements incorrectly at the topographic high area, along with large sizes of non-ground objects, because it uses a constant threshold slope, resulting in "cut-off" errors. A novel cluster analysis method was developed in this study and incorporated into the PM filter to prevent the removal of the ground measurements at topographic highs.;Furthermore, to obtain the optimal filtering results for an area with undulating terrain, a trend analysis method was developed to adaptively estimate the slope-related thresholds of the PM filter based on changes of topographic slopes and the characteristics of non-terrain objects. The comparison of the PM and generalized adaptive PM (GAPM) filters for selected study areas indicates that the GAPM filter preserves the most "cut-off" points removed incorrectly by the PM filter. The application of the GAPM filter to seven ISPRS benchmark datasets shows that the GAPM filter reduces the filtering error by 20% on average, compared with the method used by the popular commercial software TerraScan. The combination of the cluster method, adaptive trend analysis, and the PM filter allows users without much experience in processing LIDAR data to effectively and efficiently identify ground measurements for the complex terrains in a large LIDAR data set. The GAPM filter is highly automatic and requires little human input. Therefore, it can significantly reduce the effort of manually processing voluminous LIDAR measurements.
机译:机载光检测和测距(LIDAR)技术已成为获取高分辨率数字地形模型(DTM)的主要方法,这对于研究地球表面过程(例如洪水和滑坡)至关重要。生成DTM的关键步骤是使用滤波器将大量点LIDAR数据集中的地面和非地面测量值分开,因为DTM是通过对地面点进行插值创建的。作为一种广泛使用的滤波方法,渐进式形态(PM)滤波器的优点是可以在点级别对LIDAR数据进行分类,线性计算复杂度并保留地形特征的几何形状。该滤清器在坡度平缓,植被和建筑物混合的城市环境中效果很好。但是,由于PM滤波器使用恒定的阈值斜率,因此经常会在地形高区域以及大尺寸的非地面物体上错误地删除地面测量值,这会导致“截止”误差。本研究开发了一种新颖的聚类分析方法,并将其结合到PM过滤器中以防止在地形高点处去除地面测量结果。此外,为了获得地形起伏区域的最佳过滤结果,开发了一种趋势分析方法根据地形坡度的变化和非地形物体的特征,自适应地估计与PM滤波器相关的坡度阈值。针对选定研究区域的PM和广义自适应PM(GAPM)滤波器的比较表明,GAPM滤波器保留了PM滤波器错误删除的最多“截止”点。 GAPM过滤器应用于七个ISPRS基准数据集的结果表明,与流行的商用软件TerraScan所使用的方法相比,GAPM过滤器平均可将过滤误差降低20%。群集方法,自适应趋势分析和PM过滤器的结合使用户在处理LIDAR数据时没有太多经验,可以有效地,高效地识别大型LIDAR数据集中复杂地形的地面测量结果。 GAPM过滤器是高度自动化的,几乎不需要人工输入。因此,它可以大大减少手动处理大量LIDAR测量的工作量。

著录项

  • 作者

    Cui, Zheng.;

  • 作者单位

    Florida International University.;

  • 授予单位 Florida International University.;
  • 学科 Engineering Computer.;Remote Sensing.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 196 p.
  • 总页数 196
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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