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HAND, a new terrain descriptor using SRTM-DEM: Mapping terra-firme rainforest environments in Amazonia

机译:HAND,使用SRTM-DEM的新地形描述符:在Amazonia中映射地形坚固的雨林环境

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摘要

Optical imagery can reveal spectral properties of forest canopy, which rarely allows for finding accurate correspondence of canopy features with soils and hydrology. In Amazonia non-floodable swampy forests call not be easily distinguished from non-floodable terra-firme forests using just bidimensional spectral data. accurate topographic data are required for the understanding of land Surface processes at finer scales, Topographic detail has now become available with the Shuttle Radar Topographic Mission (SRTM) data. This new digital elevation model (DEM) shows the feature-rich relief of lowland rain forests, adding to the ability to map rain forest environments through many quantitative terrain descriptors. In this paper we report oil the development of a new quantitative topographic algorithm, called HAND (Height Above the Nearest Drainage), based oil SRTM-DEM data. We tested the HAND descriptor for a groundwater, topographic and vegetation dataset from central Amazonia. The application of the HAND descriptor in terrain classification revealed strong correlation between soil water conditions, like classes of water table depth, and topography. This correlation obeys the physical principle of soil draining potential, or relative vertical distance to drainage, which call be detected remotely through the topography of the vegetation canopy found in the SRTM-DEM data. (C) 2008 Elsevier Inc. All rights reserved.
机译:光学图像可以揭示森林冠层的光谱特性,很少能找到冠层特征与土壤和水文学的准确对应关系。在亚马孙地区,仅使用二维光谱数据就很难将非洪水性的沼泽森林与非洪水性的土地-坚硬森林区分开。需要更精确的地形数据才能更好地了解陆地表面过程,而航天飞机雷达地形任务(SRTM)数据现已提供了地形细节。这个新的数字高程模型(DEM)显示了低地雨林的丰富功能,并增加了通过许多定量地形描述符来绘制雨林环境的功能。在本文中,我们报告了石油基于SRTM-DEM数据的一种新的定量地形算法的发展,该算法称为HAND(最近排水高度)。我们测试了来自亚马逊河中部的地下水,地形和植被数据集的HAND描述符。 HAND描述符在地形分类中的应用揭示了土壤水状况(如地下水位的深度)与地形之间的强烈相关性。这种相关性遵循土壤排水潜力或排水的相对垂直距离的物理原理,这可以通过SRTM-DEM数据中发现的植被冠层的地形进行远程检测。 (C)2008 Elsevier Inc.保留所有权利。

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