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Robust Minimum Volume Simplex Analysis for Hyperspectral Unmixing

机译:高光谱解混的鲁棒最小体积单形分析

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Most blind hyperspectral unmixing methods exploit convex geometry properties of hyperspectral data. The minimum volume simplex analysis (MVSA) is one of such methods, which, as many others, estimates the minimum volume (MV) simplex where the measured vectors live. MVSA was conceived to circumvent the matrix factorization step often implemented by MV-based algorithms and also to cope with outliers, which compromise the results produced by MV algorithms. Inspired by the recently proposed robust MV enclosing simplex (RMVES) algorithm, we herein introduce the robust MVSA (RMVSA), which is a version of MVSA robust to noise. As in RMVES, the robustness is achieved by employing chance constraints, which control the volume of the resulting simplex. RMVSA differs, however, substantially from RMVES in the way optimization is carried out. In this paper, we develop a linearization relaxation of the nonlinear chance constraints, which can greatly lighten the computational complex of chance constraint problems. The effectiveness of RMVSA is illustrated by comparing its performance with the state of the art.
机译:大多数盲高光谱分解方法利用高光谱数据的凸几何特性。最小体积单形分析(MVSA)是这样的一种方法,与许多其他方法一样,它估计了所测矢量所在的最小体积(MV)单形。 MVSA旨在规避通常由基于MV的算法执行的矩阵分解步骤,并且还可以应对离群值,从而影响了MV算法产生的结果。受最近提出的鲁棒MV封闭单形(RMVES)算法的启发,我们在此引入了鲁棒MVSA(RMVSA),它是对噪声鲁棒的MVSA的一种版本。与RMVES中一样,鲁棒性是通过采用机会约束来实现的,机会约束控制了所得单纯形的数量。但是,RMVSA与RMVES的区别在于执行优化的方式。在本文中,我们开发了非线性机会约束的线性化松弛,可以大大减轻机会约束问题的计算复杂度。通过将RMVSA的性能与现有技术进行比较来说明其有效性。

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