初始化非负矩阵分解的改进独立分量分析:一种高光谱图像解混方法

D. Benachir, S. Hosseini, Y. Deville, M. S. Karoui, A. Hameurlain
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引用次数: 6

摘要

高光谱解混包括从混合像元光谱中识别出场景中的一组纯成分光谱(端元)和每个像元的一组丰度分数。大多数线性盲源分离技术都是基于独立分量分析(ICA)或非负矩阵分解(NMF)。仅使用这些技术中的一种并不能解决解混问题,分别是因为不同成分的丰度分数之间的统计依赖性和NMF结果的非唯一性。为了克服这个问题,我们提出了一种称为ModifICA-NMF的无监督解混方法(它代表了ICA的修改版本,然后是NMF)。考虑一个理想的情况,一个高光谱图像组合了(M-1)个统计独立的源图像,以及由于和一约束而依赖于它们的第m个图像。我们改进的ICA首先估计这些(M-1)源和相关的混合系数,然后导出剩余的源和系数,同时也消除了BSS尺度的不确定性。在实际情况下,上述(M-1)源可能有些依赖。我们改进的ICA方法只能得到近似的数据。然后将这些值用作NMF方法的初始值,该方法对它们进行细化。我们的测试表明,这种联合modifICA-NMF方法显着优于考虑的经典方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modified independent component analysis for initializing non-negative matrix factorization: An approach to hyperspectral image unmixing
Hyperspectral unmixing consists of identifying, from mixed pixel spectra, a set of pure constituent spectra (endmembers) in a scene and a set of abundance fractions for each pixel. Most linear blind source separation (BSS) techniques are based on Independent Component Analysis (ICA) or Non-Negative Matrix Factorization (NMF). Using only one of these techniques does not resolve the unmixing problem because of, respectively, the statistical dependence between the abundance fractions of the different constituents and the non-uniqueness of the NMF results. To overcome this issue, we propose an unsupervised unmixing approach called ModifICA-NMF (which stands for modified version of ICA followed by NMF). Consider the ideal case of a hyperspectral image combining (M-1) statistically independent source images, and an Mth image depending on them due to the sum-to-one constraint. Our modified ICA first estimates these (M-1) sources and associated mixing coefficients, then derives the remaining source and coefficients, while it also removes the BSS scale indeterminacy. In real conditions, the above (M-1) sources may be somewhat dependent. Our modified ICA method then only yields approximate data. These are then used as the initial values of an NMF method, which refines them. Our tests show that this joint modifICA-NMF approach significantly outperforms the considered classical methods.
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