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Effect of point density and interpolation of LiDAR-derived high-resolution DEMs on landscape scarp identification

机译:LiDAR衍生的高分辨率DEM的点密度和内插对景观赤道识别的影响

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摘要

Recognition of geomorphic features, such as landslide scarps, is the first key step for landslide risk assessment and mitigation. Geomorphic features can be identified from high-resolution digital elevation model (DEM). Light Detection and Ranging (LiDAR) is a useful tool to collect high-density point elevation data from ground surfaces. LiDAR ground points are used to generate high-resolution DEMs. However, LiDAR sample sizes and interpolation methods are critical parameters for DEM estimation under various land cover types. To discuss the effect of the parameters, this study used a series of cases to estimate the DEMs and identify the landslide scarps, especially potential landslide scarps hidden in the forest. Results show that LiDAR sample size affects the visual identification rate of the landslide scarps. The point density of LiDAR data controls the level of detail that can be resolved in the LiDAR-derived DEM. Given low-density LiDAR ground points, the DEM accuracy is the worst, especially in dense forest. Particularly in sparse samples, the identification rate of the landslide scarp is sensitive to the interpolation method. In sparse samples, landslide scarp identification based on Kriging-estimated DEM showed the best results among the three interpolation methods. Hence, this study provides information for the assessment of the effects of sample sizes under land cover for further geomorphic monitoring, assessment and management.
机译:识别滑坡陡坡等地貌特征是滑坡风险评估和缓解的第一步。可以从高分辨率数字高程模型(DEM)识别地貌特征。光检测和测距(LiDAR)是从地面收集高密度点高程数据的有用工具。 LiDAR地面点用于生成高分辨率DEM。然而,在各种土地覆盖类型下,LiDAR样本大小和插值方法是DEM估计的关键参数。为了讨论这些参数的影响,本研究使用了一系列案例来估计DEM并确定滑坡陡坡,尤其是隐藏在森林中的潜在滑坡陡坡。结果表明,LiDAR样本大小会影响滑坡陡坡的视觉识别率。 LiDAR数据的点密度控制可在LiDAR派生的DEM中解析的详细程度。给定低密度LiDAR地面点,DEM精度最差,尤其是在茂密的森林中。特别是在稀疏样本中,滑坡陡坡的识别率对插值方法很敏感。在稀疏样本中,基于Kriging估计DEM的滑坡陡坡识别在三种插值方法中显示出最好的结果。因此,本研究为评估土地覆盖下样本量的影响提供了信息,以进行进一步的地貌监测,评估和管理。

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