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Improvement of remotely sensed vegetation coverage in heterogeneous environments with an optimal zoning approach

机译:具有最优分区方法的异构环境中远程感测植被覆盖的改进

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The high spatial heterogeneity forms a major uncertainty in accurately monitoring of vegetation coverage. In this study, an optimal zoning approach with dividing the whole heterogeneous image into relatively homogeneously segments was proposed to reduce the effects of high heterogeneity on vegetation coverage estimation. With the combination of the spectral similarity of the adjacent pixels and spatial autocorrelation of the segments, the optimal zoning approach accounted for the intrasegment uniformity and intersegment disparity of improved image segmentation. In comparison, vegetation coverage in the highly heterogeneous karst environments tended to be underestimated by the normalized difference vegetation index (NDVI) and overestimated by the normalized difference vegetation index-spectral mixture analysis (NDVI-SMA) model. Hence, when applying remote sensing for highly heterogeneous environments, the influence of high heterogeneity should not be ignored. Our study indicates that the proposed model, using NDVI-SMA model with improved segmentation, is found to ameliorate the effects of the highly heterogeneous environments on the extraction of vegetation coverage from hyperspectral imagery. The proposed approach is useful for obtaining accurate estimations of vegetation coverage in not only karst environments but also other environments with high heterogeneity.
机译:高空间异质性在准确监测植被覆盖范围内形成了重大不确定性。在该研究中,提出了一种利用将整个异质图像分成相对均匀区段的最佳区划方法,以减少高异质性对植被覆盖估计的影响。通过相邻像素的光谱相似性和段的空间自相关的组合,最佳分区方法占改进图像分割的阵路均匀性和间隙差异。相比之下,高度异质喀斯特环境中的植被覆盖范围倾向于被归一化差异植被指数(NDVI)低估,并受归一化差异植被指数光谱混合物分析(NDVI-SMA)模型的估计。因此,在对高度异构环境应用遥感时,不应忽略高异质性的影响。我们的研究表明,使用具有改进分割的NDVI-SMA模型的提出的模型,发现了高度异构环境对高光谱图像提取植被覆盖的影响。该方法可用于获得不仅在喀斯特环境中的植被覆盖范围的准确估计,而且是具有高异质性的其他环境。

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