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DOES TOPOGRAPHIC NORMALIZATION OF LANDSAT IMAGES IMPROVE FRACTIONAL TREE COVER MAPPING IN TROPICAL MOUNTAINS?

机译:地形图像的地形归一化是否能改善热带山区的分数阶树覆盖图?

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Fractional tree cover (Fcover) is an important biophysical variable for measuring forest degradation and characterizing land cover. Recently, atmospherically corrected Landsat data have become available, providing opportunities for high-resolution mapping of forest attributes at global-scale. However, topographic correction is a pre-processing step that remains to be addressed. While several methods have been introduced for topographic correction, it is uncertain whether Fcover models based on vegetation indices are sensitive to topographic effects. Our objective was to assess the effect of topographic correction on the accuracy of Fcover modelling. The study area was located in the Eastern Arc Mountains of Kenya. We used C-correction as a digital elevation model (DEM) based correction method. We examined if predictive models based on normalized difference vegetation index (NDVI), reduced simple ratio (RSR) and tasseled cap indices (Brightness, Greenness and Wetness) are improved if using topographically corrected data. Furthermore, we evaluated how the results depend on the DEM by correcting images using available global DEM (ASTER GDEM, SRTM) and a regional DEM. Reference Fcover was obtained from wall-to-wall airborne LiDAR data. Landsat images corresponding to minimum and maximum sun elevation were analyzed. We observed that topographic correction could only improve models based on Brightness and had very small effect on the other models. Cosine of the solar incidence angle (cos i) derived from SRTM DEM showed stronger relationship with spectral bands than other DEMs. la conclusion, our results suggest that, in tropical mountains, predictive models based on common vegetation indices are not sensitive to topographic effects.
机译:分数树木覆盖度(Fcover)是一种重要的生物物理变量,可用于测量森林退化和表征土地覆盖。最近,经过大气校正的Landsat数据已经可用,这为在全球范围内对森林属性进行高分辨率制图提供了机会。但是,地形校正是尚待解决的预处理步骤。虽然已经引入了几种方法来进行地形校正,但不确定基于植被指数的Fcover模型是否对地形影响敏感。我们的目标是评估地形校正对Fcover建模准确性的影响。研究区域位于肯尼亚的东弧山。我们使用C校正作为基于数字高程模型(DEM)的校正方法。我们检查了如果使用地形校正数据,基于归一化差异植被指数(NDVI),降低的简单比率(RSR)和流苏帽指数(亮度,绿色度和湿润度)的预测模型是否得到改善。此外,我们通过使用可用的全局DEM(ASTER GDEM,SRTM)和区域DEM校正图像来评估结果如何依赖于DEM。参考Fcover是从墙对墙机载LiDAR数据获得的。分析了与最小和最大太阳高度相对应的Landsat图像。我们观察到,地形校正只能改善基于亮度的模型,而对其他模型的影响很小。 SRTM DEM得出的太阳入射角的余弦(cos i)与光谱带的关系比其他DEM更强。总之,我们的结果表明,在热带山区,基于常见植被指数的预测模型对地形影响不敏感。

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