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Robust hyperspectral data unmixing with spatial and spectral regularized NMF

机译:坚固的高光谱数据,无差异的空间和光谱正则化NMF

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This paper considers the problem of unsupervised hyperspectral data unmixing under the linear spectral mixing model assumption (LSMM). The aim is to recover both end member spectra and abundances fractions. The problem is ill-posed and needs some additional information to be solved. We consider here the Non-negative Matrix Factorization (NMF), which is degenerated on its own, but has the advantage of low complexity and the ability to easily include physical constraints. In addition with abundances sum-to-one constraint, we propose to introduce relevant information within spatial and spectral regularization for the NMF, derived from the analysis of the hyperspectral data. We use an alternate projected gradient to minimize the regularized error reconstruction function. This algorithm, called MDMD-NMF for Minimum Spectral Dispersion Maximum Spatial Dispersion NMF, allows to simultaneously estimate the number of end members, the abundances fractions, and accurately recover more than 10 end members without any pure pixel in the scene.
机译:本文考虑了在线性光谱混合模型假设(LSMM)下的无监督高光谱数据解密的问题。目的是恢复终端成员谱和丰度分数。问题是弊病的,需要解决一些额外的信息。我们考虑这里的非负矩阵分解(NMF),它是自身退化的,但具有低复杂性和容易包括物理限制的能力的优点。除了丰富的总和的约束之外,我们建议在源自高光谱数据分析中引入NMF的空间和光谱正则化内的相关信息。我们使用备用投影梯度来最小化正则化误差重建功能。该算法称为最小光谱色散最大空间色散NMF的MDMD-NMF,允许同时估计最终构件的数量,丰度分数,并准确地恢复超过10个以上的端部件而没有场景中的任何纯素的像素。

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