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Learning dependent sources using mixtures of Dirichlet: Applications on hyperspectral unmixing

机译:使用Dirichlet的混合物学习依赖源:在高光谱上的应用

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This paper is an elaboration of the DECA algorithm [1] to blindly unmix hyperspectral data. The underlying mixing model is linear, meaning that each pixel is a linear mixture of the endmembers signatures weighted by the correspondent abundance fractions. The proposed method, as DECA, is tailored to highly mixed mixtures in which the geometric based approaches fail to identify the simplex of minimum volume enclosing the observed spectral vectors. We resort then to a statitistical framework, where the abundance fractions are modeled as mixtures of Dirichlet densities, thus enforcing the constraints on abundance fractions imposed by the acquisition process, namely non-negativity and constant sum. With respect to DECA, we introduce two improvements: 1) the number of Dirichlet modes are inferred based on the minimum description length (MDL) principle; 2) The generalized expectation maximization (GEM) algorithm we adopt to infer the model parameters is improved by using alternating minimization and augmented Lagrangian methods to compute the mixing matrix. The effectiveness of the proposed algorithm is illustrated with simulated and read data.
机译:本文是阐述了Deca算法[1]以盲目解密的高光谱数据。底层混合模型是线性的,这意味着每个像素是由对应丰度级分加权的终端的线性混合物。作为DECA的提出的方法被定制为高度混合的混合物,其中基于几何的方法无法识别包围观察到的光谱矢量的最小体积的单纯性。我们手段到达统计框架,其中丰度馏分被建模为小小石密度的混合物,从而强制对采集过程施加的丰度级分的约束,即非消极性和恒定总和。关于Deca,我们介绍了两种改进:1)基于最小描述长度(MDL)原则推断的Dirichlet模式的数量; 2)通过使用交替的最小化和增强拉格朗日方法来计算混合矩阵,通过使用交替的最小化和增强的拉格朗日方法来改进我们采用的广义期望最大化(GEM)算法。用模拟和读取数据说明了所提出的算法的有效性。

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