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Performance comparison of geometric and statistical methods for endmembers extraction in hyperspectral imagery

机译:几何和统计方法在高光谱影像中提取端元的性能比较

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Spectral unmixing decomposes an hyperspectral image into a collection of reflectance spectra of the macroscopic materials present in the scene, called endmembers, and the corresponding abundance fractions of these constituents. The purpose of this paper is to compare the performance of several algorithms that process unsupervised endmember extraction from hyperspectral images in the visible and NIR spectral ranges. After giving an analytical formulation of the observations, two significantly different approaches have been described. The first one exploits convex geometry the problem answers to. The second one is based on statistical principles of Independent Component Analysis, which is a classical resolution of the Blind Source Separation issue. First, the performance of the algorithms are compared on synthetic images and sensibility to noise is studied. Then the best methods are applied on part of a HyMap image.
机译:光谱分解将高光谱图像分解为场景中存在的宏观材料(称为端成员)的反射光谱的集合,以及这些成分的相应丰度分数。本文的目的是比较几种算法的性能,这些算法处理可见光和近红外光谱范围内从高光谱图像中无监督的端元提取。在给出观察结果的分析表述之后,已经描述了两种明显不同的方法。第一个利用了凸凹几何来解决问题。第二个是基于独立成分分析的统计原理,这是盲源分离问题的经典解决方案。首先,在合成图像上比较了算法的性能,并研究了对噪声的敏感性。然后,将最佳方法应用于HyMap图像的一部分。

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