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Estimating fractional vegetation cover and the vegetation index of bare soil and highly dense vegetation with a physically based method

机译:用物理基础法估算分数植被覆盖和裸土壤植被指数,具有高度密集的植被

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Normalized difference vegetation index (NDVI) of highly dense vegetation (NDVIv) and bare soil (NDVIs), identified as the key parameters for Fractional Vegetation Cover (FVC) estimation, are usually obtained with empirical statistical methods However, it is often difficult to obtain reasonable values of NDVIv and NDVIs at a coarse resolution (e.g., 1 km), or in arid, semiarid, and evergreen areas. The uncertainty of estimated NDVIs and NDVIv can cause substantial errors in FVC estimations when a simple linear mixture model is used. To address this problem, this paper proposes a physically based method. The leaf area index (LAI) and directional NDVI are introduced in a gap fraction model and a linear mixture model for FVC estimation to calculate NDVIV and NDVIs. The model incorporates the Moderate Resolution Imaging Spectroradiometer (MODIS) Bidirectional Reflectance Distribution Function (BRDF) model parameters product (MCD43B1) and LAI product, which are convenient to acquire. Two types of evaluation experiments are designed 1) with data simulated by a canopy radiative transfer model and 2) with satellite observations. The root-mean-square deviation (RMSD) for simulated data is less than 0.117, depending on the type of noise added on the data. In the real data experiment, the RMSD for cropland is 0.127, for grassland is 0.075, and for forest is 0.107. The experimental areas respectively lack fully vegetated and non-vegetated pixels at 1 km resolution. Consequently, a relatively large uncertainty is found while using the statistical methods and the RMSD ranges from 0.110 to 0.363 based on the real data. The proposed method is convenient to produce NDVIv and NDVIs maps for FVC estimation on regional and global scales. (C) 2017 Elsevier B.V. All rights reserved.
机译:鉴定为分数植被覆盖(FVC)估计的关键参数,通常以经验统计方法获得鉴定为分数植被覆盖(FVC)估计的关键参数的归一化差异植被指数(NDVI)。然而,通常难以获得NDVIV和NDVIS的合理值在粗糙分辨率(例如,1km),或在干旱,半干旱和常绿区域。当使用简单的线性混合模型时,估计的NDVIV和NDVIV的不确定性可能导致FVC估计中的大量误差。为了解决这个问题,本文提出了一种物理基础的方法。叶区域指数(LAI)和定向NDVI在间隙级分模型和用于FVC估计的线性混合模型中引入,以计算NDVIV和NDVIS。该模型包括适度分辨率成像光谱辐射计(MODIS)双向反射率分布功能(BRDF)模型参数产品(MCD43B1)和LAI产品,方便获取。两种类型的评估实验设计了1),其数据通过遮篷辐射转移模型和2)模拟,具有卫星观察。模拟数据的根均方偏差(RMSD)小于0.117,具体取决于数据上添加的噪声类型。在真实数据实验中,农田的RMSD为0.127,对于草地为0.075,森林为0.107。实验区域分别缺乏1公里分辨率的植被和非植被的像素。因此,在使用统计方法的同时发现相对较大的不确定性,并且RMSD基于实际数据的0.110至0.363。所提出的方法方便为区域和全球尺度的FVC估计产生NDVIV和NDVIS映射。 (c)2017 Elsevier B.v.保留所有权利。

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