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Blind Hyperspectral Unmixing Using an Extended Linear Mixing Model to Address Spectral Variability

机译:使用扩展线性混合模型解决光谱变异的盲高光谱解混

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Spectral unmixing is one of the main research topics in hyperspectral imaging. It can be formulated as a source separation problem, whose goal is to recover the spectral signatures of the materials present in the observed scene (called endmembers) as well as their relative proportions (called fractional abundances), and this for every pixel in the image. A linear mixture model (LMM) is often used for its simplicity and ease of use, but it implicitly assumes that a single spectrum can be completely representative of a material. However, in many scenarios, this assumption does not hold, since many factors, such as illumination conditions and intrinsic variability of the endmembers, induce modifications on the spectral signatures of the materials. In this paper, we propose an algorithm to unmix hyperspectral data using a recently proposed extended LMM. The proposed approach allows a pixelwise spatially coherent local variation of the endmembers, leading to scaled versions of reference endmembers. We also show that the classic nonnegative least squares, as well as other approaches to tackle spectral variability can be interpreted in the framework of this model. The results of the proposed algorithm on two different synthetic datasets, including one simulating the effect of topography on the measured reflectance through physical modelling, and on two real data sets, show that the proposed technique outperforms other methods aimed at addressing spectral variability, and can provide an accurate estimation of endmember variability along the scene because of the scaling factors estimation.
机译:光谱分解是高光谱成像的主要研究主题之一。可以将其表述为源分离问题,其目标是恢复所观察场景中存在的材质(称为末端成员)及其相对比例(称为分数丰度)的光谱特征,并针对图像中的每个像素进行恢复。 。线性混合模型(LMM)出于其简单性和易用性而经常被使用,但是它隐含地假设单个光谱可以完全代表一种材料。但是,在许多情况下,此假设不成立,因为许多因素(例如照明条件和端构件的固有变异性)会导致材料光谱特征的改变。在本文中,我们提出了一种使用最近提出的扩展LMM取消混合高光谱数据的算法。所提出的方法允许端构件的像素方向在空间上相干的局部变化,从而导致参考端构件的缩放版本。我们还表明,可以在此模型的框架中解释经典的非负最小二乘法以及其他解决频谱变异性的方法。该算法在两个不同的合成数据集上的结果(包括一个通过物理建模模拟地形对测得的反射率的影响)以及在两个真实数据集上的结果表明,该算法优于旨在解决光谱可变性的其他方法,并且可以由于比例因子估计,因此可以提供沿场景的端构件可变性的准确估计。

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