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Improving merge methods for grid-based digital elevation models

机译:改进基于网格的数字高程模型的合并方法

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Digital Elevation Models (DEMs) are used to represent the terrain in applications such as, for example, overland flow modelling or viewshed analysis. DEMs generated from digitising contour lines or obtained by LiDAR or satellite data are now widely available. However, in some cases, the area of study is covered by more than one of the available elevation data sets. In these cases the relevant DEMs may need to be merged. The merged DEM must retain the most accurate elevation information available while generating consistent slopes and aspects. In this paper we present a thorough analysis of three conventional grid-based DEM merging methods that are available in commercial GIS software. These methods are evaluated for their applicability in merging DEMs and, based on evaluation results, a method for improving the merging of grid-based DEMs is proposed. DEMs generated by the proposed method, called Id:Blend, showed significant improvements when compared to DEMs produced by the three conventional methods in terms of elevation, slope and aspect accuracy, ensuring also smooth elevation transitions between the original DEMs. The results produced by the improved method are highly relevant different applications in terrain analysis, e.g., visibility, or spotting irregularities in landforms and for modelling terrain phenomena, such as overland flow. (C) 2016 Elsevier Ltd. All rights reserved.
机译:数字高程模型(DEM)用于表示应用程序中的地形,例如陆上水流建模或视域分析。由数字化轮廓线生成或通过LiDAR或卫星数据获得的DEM现在已广泛使用。但是,在某些情况下,研究领域被多个可用高程数据集所覆盖。在这些情况下,可能需要合并相关的DEM。合并的DEM必须保留可用的最准确的高程信息,同时生成一致的坡度和坡度。在本文中,我们对商业GIS软件中可用的三种常规基于网格的DEM合并方法进行了全面分析。对这些方法在合并DEM中的适用性进行了评估,并基于评估结果,提出了一种改进基于网格的DEM合并的方法。与三种传统方法产生的DEM相比,通过提议的方法Id:Blend生成的DEM在仰角,坡度和高宽精度方面显示出显着改善,同时还确保了原始DEM之间的平滑仰角过渡。改进方法产生的结果在地形分析中具有高度相关的不同应用,例如可见性或在地形中发现不规则性以及对地形现象(例如陆上水流)进行建模。 (C)2016 Elsevier Ltd.保留所有权利。

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