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Unsupervised extraction of urban features from airborne lidar data by using self-organizing maps

机译:通过使用自组织地图,无监督从机载激光雷达数据的城市特征提取

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摘要

The extraction of artificial and natural features using light detection and ranging (Lidar) data is a fundamental task in many fields of research for environmental science. In this study, the possibility of using self-organising maps (SOM), which is an unsupervised artificial neural network classification method to extract the bare earth surface and features from airborne Lidar data, was investigated for two different urban areas. The effect of the enlargement of the study area was analysed using the proposed approach. The appropriate weights of SOM inputs, which are 3D coordinates and intensity, obtained from a Lidar point cloud were determined by using Pearson's chi-squared independence test. The weighted SOM feature extraction performance was better than that of the unweighted SOM. The filtering results of SOM to separate ground and non-ground data were also compared with those obtained by the adaptive TIN filtering algorithm. Most of the non-ground features could be removed by the weighted SOM.
机译:利用光检测和测距(LIDAR)数据的提取人工和自然特征是环境科学研究领域的基本任务。在这项研究中,研究了两种不同的城市地区,研究了使用自组织地图(SOM)的可能性,该方法是一种未经监督的人工神经网络分类方法以从机载LIDAR数据中提取裸露的地球表面和特征。使用所提出的方法分析了研究区域的扩大的效果。通过使用Pearson的Chi-Squared独立测试确定从LIDAR点云获得的3D坐标和强度的SOM输入的适当重量。加权SOM特征提取性能优于未加权的SOM。还将SOM的滤波结果与通过自适应TiN滤波算法获得的那些进行比较。大多数非接地特征可以通过加权索赔来删除。

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