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Spectral Unmixing with Sparsity and Structuring Constraints

机译:具有稀疏性和结构性约束的光谱解密

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This paper addresses the linear spectral unmixing problem, by incorporating different constraints that may be of interest in order to cope with spectral variability: sparsity (few nonzero abundances), group exclusivity (at most one nonzero abundance within subgroups of endmembers) and significance (non-zero abundances must exceed a threshold). We show how such problems can be solved exactly with mixed-integer programming techniques. Numerical simulations show that solutions can be computed for problems of limited, yet realistic, complexity, with improved estimation performance over existing methods, but with higher computing time.
机译:本文通过纳入可能感兴趣的不同约束来解决线性光谱解密问题,以应对频谱可变性:稀疏性(少数非零丰富),群体排除率(在终点的亚组中最多的非零丰富)和意义(非-Zero丰富必须超过阈值)。我们展示了如何用混合整数编程技术完全解决此类问题。数值模拟表明,可以计算解决方案的有限,现实,复杂性的问题,并通过现有方法提高估计性能,但计算时间越高。

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