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An Improved Endmember Selection Method Based on Vector Length for MODIS Reflectance Channels

机译:一种基于矢量长度的改进MODIS反射通道端构件选择方法

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Endmember selection is the basis for sub-pixel land cover classifications using multiple endmember spectral mixture analysis (MESMA) that adopts variant endmember matrices for each pixel to mitigate errors caused by endmember variability in SMA. A spectral library covering a large number of endmembers can account for endmember variability, but it also lowers the computational efficiency. Therefore, an efficient endmember selection scheme to optimize the library is crucial to implement MESMA. In this study, we present an endmember selection method based on vector length. The spectra of a land cover class were divided into subsets using vector length intervals of the spectra, and the representative endmembers were derived from these subsets. Compared with the available endmember average RMSE (EAR) method, our approach improved the computational efficiency in endmember selection. The method accuracy was further evaluated using spectral libraries derived from the ground reference polygon and Moderate Resolution Imaging Spectroradiometer (MODIS) imagery respectively. Results using the different spectral libraries indicated that MESMA combined with the new approach performed slightly better than EAR method, with Kappa coefficient improved from 0.75 to 0.78. A MODIS image was used to test the mapping fraction, and the representative spectra based on vector length successfully modeled more than 90% spectra of the MODIS pixels by 2-endmember models.
机译:最终成员选择是使用多个最终成员光谱混合分析(MESMA)进行亚像素土地覆盖分类的基础,该分析为每个像素采用了可变的最终成员矩阵,以减轻由SMA中的最终成员变异性引起的误差。涵盖大量端成员的光谱库可以解释端成员的可变性,但同时也会降低计算效率。因此,有效的终端成员选择方案来优化库对于实现MESMA至关重要。在这项研究中,我们提出了一种基于向量长度的末端成员选择方法。利用光谱的矢量长度间隔将土地覆盖类别的光谱划分为子集,并从这些子集中导出代表性的末端成员。与可用的最终成员平均RMSE(EAR)方法相比,我们的方法提高了最终成员选择的计算效率。使用分别来自地面参考多边形和中分辨率成像光谱仪(MODIS)图像的光谱库进一步评估了方法的准确性。使用不同光谱库的结果表明,与新方法结合使用的MESMA的效果比EAR方法略好,Kappa系数从0.75提高到0.78。使用MODIS图像测试映射比例,并且基于矢量长度的代表性光谱通过2端成员模型成功建模了MODIS像素的90%以上的光谱。

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