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Binary partition tree-based local spectral unmixing

机译:基于二进制分区的本地光谱解密

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摘要

The linear mixing model (LMM) is a widely used methodology for the spectral unmixing (SU) of hyperspectral data. In this model, hyperspectral data is formed as a linear combination of spectral signatures corresponding to macroscopically pure materials (endmembers), weighted by their fractional abundances. Some of the drawbacks of the LMM are the presence of multiple mixtures and the spectral variability of the endmembers due to illumination and atmospheric effects. These issues appear as variations of the spectral conditions of the image along its spatial domain. However, these effects are not so severe locally and could be at least mitigated by working in smaller regions of the image. The proposed local SU works over a partition of the image, performing the spectral unmixing locally in each region of the partition. In this work, we first introduce the general local SU methodology, then we propose an implementation of the local SU based on a binary partition tree representation of the hyperspectral image and finally we give an experimental validation of the approach using real data.
机译:线性混合模型(LMM)是高光谱数据的光谱解密(SU)的广泛使用的方法。在该模型中,高光谱数据形成为与宏观纯材料(终端)相对应的光谱签名的线性组合,由其分数丰富加权。 LMM的一些缺点是由于照明和大气效应导致多种混合物和终端的光谱变异性。这些问题显示为沿其空间域的图像的光谱条件的变化。然而,这些效果在本地不是那么严重,并且可以通过在图像的较小区域中工作至少可以减轻。所提出的本地SU在图像的分区上工作,在分区的每个区域中本地执行局部地执行频谱。在这项工作中,我们首先介绍了一般的本地SU方法,然后我们提出了基于HyperSpectral图像的二进制分区树表示的本地SU的实现,最后我们提供了使用真实数据的方法的实验验证。

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