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Scale-Optimized Surface Roughness for Topographic Analysis

机译:比例优化的表面粗糙度,用于地形分析

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Surface roughness is a terrain parameter that has been widely applied to the study of geomorphological processes. One of the main challenges in studying roughness is its highly scale-dependent nature. Determining appropriate mapping scales in topographically heterogenous landscapes can be difficult. A method is presented for estimating multiscale surface roughness based on the standard deviation of surface normals. This method utilizes scale partitioning and integral image processing to isolate scales of surface complexity. The computational efficiency of the method enables high scale sampling density and identification of maximum roughness for each grid cell in a digital elevation model (DEM). The approach was applied to a 0.5 m resolution LiDAR DEM of a 210 km 2 area near Brantford, Canada. The case study demonstrated substantial heterogeneity in roughness properties. At shorter scales, tillage patterns and other micro-topography associated with ground beneath forest cover dominated roughness scale signatures. Extensive agricultural land-use resulted in 35.6% of the site exhibiting maximum roughness at micro-topographic scales. At larger spatial scales, rolling morainal topography and fluvial landforms, including incised channels and meander cut banks, were associated with maximum surface roughness. This method allowed for roughness mapping at spatial scales that are locally adapted to the topographic context of each individual grid cell within a DEM. Furthermore, the analysis revealed significant differences in roughness characteristics among soil texture categories, demonstrating the practical utility of locally adaptive, scale-optimized roughness.
机译:表面粗糙度是已广泛应用于地貌过程研究的地形参数。研究粗糙度的主要挑战之一是其高度依存性。在地形异质景观中确定合适的地图比例可能很困难。提出了一种基于表面法线标准偏差的多尺度表面粗糙度估计方法。该方法利用比例尺划分和整体图像处理来隔离表面复杂性的比例尺。该方法的计算效率可实现数字高程模型(DEM)中每个网格单元的大规模采样密度和最大粗糙度识别。该方法应用于加拿大布兰特福德附近210 km 2区域的0.5 m分辨率LiDAR DEM。案例研究表明,粗糙度特性存在很大的异质性。在较短的尺度上,耕作模式和与森林覆盖物下方地面相关的其他微观地形主要是粗糙度尺度的标志。大量的农业土地利用导致了36.5%的土地在微观地形尺度上表现出最大的粗糙度。在较大的空间尺度上,滚动的沟壑地形和河流地貌,包括切开的河道和蜿蜒的河岸,与最大的表面粗糙度有关。该方法允许在空间尺度上进行粗糙度映射,该粗糙度局部适应于DEM中每个单独网格单元的地形环境。此外,分析表明,土壤质地类别之间的粗糙度特征存在显着差异,这表明了局部自适应,比例优化的粗糙度的实际应用。

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