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首页> 外文期刊>International journal of applied earth observation and geoinformation >The effect of topographic normalization on fractional tree cover mapping in tropical mountains: An assessment based on seasonal Landsat time series
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The effect of topographic normalization on fractional tree cover mapping in tropical mountains: An assessment based on seasonal Landsat time series

机译:地形归一化对热带山区分数棵树覆盖图的影响:基于季节性Landsat时间序列的评估

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摘要

Free archive of georectified and atmospherically corrected Landsat satellite images create a large range of opportunities for environmental research. However, the topographic effects in images are typically normalized regionally by end-users, and it remains uncertain if this procedure is always necessary. Our objective was to assess the effect of topographic normalization on the fractional tree cover (Fcover) modelling in a tropical mountain landscape, in Southeastern Kenya. We carried out topographic normalization by C-correction for all available Landsat images between June 2012 and October 2013, and examined if normalization improves Fcover regressions. The reference Fcover was based on airborne LiDAR data. Furthermore, we tested several vegetation indices and seasonal features (annual percentiles and means), and compared three digital elevation models (DEM). Our results showed that the fit of Fcover models did not improve after topographic normalization in the case of ratio-based vegetation indices (Normalized Difference Vegetation Index, NDVI; Reduced Simple Ratio, RSR) or Tasseled Cap Greenness but improved in the case of Brightness and Wetness, particularly in the period of the lowest sun elevation. RSR was the best vegetation index to predict Fcover. Furthermore, SRTM DEM provided stronger relationship with cosine of the solar incidence angle than ASTER DEM and regional DEM based on topographic maps. We conclude that NDVI and RSR are robust against topographic effects in the tropical mountain landscapes throughout the year. However, if Tasseled Cap indices are preferred, we recommend topographic normalization using SRTM DEM. (C) 2016 Elsevier B.V. All rights reserved.
机译:经过地理校正和大气校正的Landsat卫星图像的免费存档为环境研究提供了广泛的机会。但是,图像中的地形效果通常由最终用户按区域进行归一化,并且不确定是否始终需要执行此过程。我们的目标是评估肯尼亚东南部热带山区景观中地形归一化对分数树覆盖(Fcover)建模的影响。我们对2012年6月至2013年10月之间所有可用的Landsat图像进行了C校正的地形归一化,并检查了归一化是否可以改善Fcover回归。参考Fcover基于机载LiDAR数据。此外,我们测试了几种植被指数和季节特征(年度百分位数和平均值),并比较了三种数字高程模型(DEM)。我们的结果表明,在基于比率的植被指数(归一化植被指数,NDVI;降低的简单比率,RSR)或带帽绿度的情况下,地形归一化后,Fcover模型的拟合度并没有改善,而在亮度和绿化度的情况下,Fcover模型的拟合度有所改善潮湿,特别是在最低的太阳高度时期。 RSR是预测Fcover的最佳植被指数。此外,与基于地形图的ASTER DEM和区域DEM相比,SRTM DEM与太阳入射角的余弦关系更强。我们得出的结论是,全年NDVI和RSR对热带山区景观的地形影响具有较强的抵抗力。但是,如果首选流苏帽指数,我们建议使用SRTM DEM进行地形归一化。 (C)2016 Elsevier B.V.保留所有权利。

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