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Aerial Laser Scanning Data as a Source of Terrain Modeling in a Fluvial Environment: Biasing Factors of Terrain Height Accuracy

机译:航空激光扫描数据作为河流环境中地形建模的来源:地形高度精度的偏差因素

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摘要

Airborne light detection and ranging (LiDAR) scanning is a commonly used technology for representing the topographic terrain. As LiDAR point clouds include all surface features present in the terrain, one of the key elements for generating a digital terrain model (DTM) is the separation of the ground points. In this study, we intended to reveal the efficiency of different denoising approaches and an easy-to-use ground point classification technique in a floodplain with fluvial forms. We analyzed a point cloud from the perspective of the efficiency of noise reduction, parametrizing a ground point classifier (cloth simulation filter, CSF), interpolation methods and resolutions. Noise filtering resulted a wide range of point numbers in the models, and the number of points had moderate correlation with the mean accuracies (r = −0.65, < 0.05), indicating that greater numbers of points had larger errors. The smallest differences belonged to the neighborhood-based noise filtering and the larger cloth size (5) and the smaller threshold value (0.2). The most accurate model was generated with the natural neighbor interpolation with the cloth size of 5 and the threshold of 0.2. These results can serve as a guide for researchers using point clouds when considering the steps of data preparation, classification, or interpolation in a flat terrain.
机译:机载光检测和测距(LiDAR)扫描是代表地形的一种常用技术。由于LiDAR点云包括地形中存在的所有表面特征,因此生成数字地形模型(DTM)的关键要素之一就是地面点的分离。在这项研究中,我们打算揭示在具有河流形式的洪泛区中,不同去噪方法的效率和易于使用的地面点分类技术。我们从降噪效率的角度分析了点云,参数化了地面点分类器(布料模拟滤波器,CSF),插值方法和分辨率。噪声过滤在模型中产生了广泛的点数,并且点数与平均准确度具有中等相关性(r = -0.65,<0.05),表明更多的点数具有较大的误差。最小的差异属于基于邻域的噪声过滤,而较大的布料尺寸(5)和较小的阈值(0.2)。最精确的模型是使用自然邻域插值生成的,其布料大小为5,阈值为0.2。这些结果可为研究人员在考虑平坦地形中的数据准备,分类或插值步骤时使用点云提供指导。

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