首页> 外文期刊>Geoscience and Remote Sensing Letters, IEEE >Nonlinear Spectral Mixture Analysis for Hyperspectral Imagery in an Unknown Environment
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Nonlinear Spectral Mixture Analysis for Hyperspectral Imagery in an Unknown Environment

机译:未知环境中高光谱影像的非线性光谱混合分析

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Nonlinear spectral mixture analysis for hyperspectral imagery is investigated without prior information about the image scene. A simple but effective nonlinear mixture model is adopted, where the multiplication of each pair of endmembers results in a virtual endmember representing multiple scattering effect during pixel construction process. The analysis is followed by linear unmixing for abundance estimation. Due to a large number of nonlinear terms being added in an unknown environment, the following abundance estimation may contain some errors if most of the endmembers do not really participate in the mixture of a pixel. We take advantage of the developed endmember variable linear mixture model (EVLMM) to search the actual endmember set for each pixel, which yields more accurate abundance estimation in terms of smaller pixel reconstruction error, smaller residual counts, and more pixel abundances satisfying sum-to-one and nonnegativity constraints.
机译:在没有有关图像场景的先验信息的情况下,对高光谱图像的非线性光谱混合分析进行了研究。采用简单但有效的非线性混合模型,其中每对端构件的相乘导致一个虚拟端构件代表像素构建过程中的多重散射效果。分析之后进行线性分解,以进行丰度估算。由于在未知环境中添加了许多非线性项,因此如果大多数末端成员未真正参与像素的混合,则以下丰度估计可能会包含一些错误。我们利用开发的端成员可变线性混合模型(EVLMM)来搜索每个像素的实际端成员集,这会以较小的像素重构误差,较小的残差计数和更多的满足要求的像素丰度来产生更准确的丰度估计。 -一和非负约束。

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