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Minimum endmember-wise distance constrained Nonnegative Matrix Factorization for Spectral Mixture Analysis of hyperspectral images

机译:高光谱图像的光谱混合分析的最小端成员距离约束非负矩阵分解

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Nonnegative Matrix Factorization (NMF) and its extensions have gained lots of attentions in Spectral Mixture Analysis (SMA) since they can handle highly mixed hyperspectral pixels in an unsupervised way. In order to overcome the non-uniqueness problem in NMF, a minimum endmember-wise distance constraint (MewDC), which optimizes endmember spectra as compact as possible, is imposed for satisfying unmixing results. The proposed constraint works similar to minimum volume constraint (MVC). However, the dimension reduction step and numerical instability problems in MVC can be avoided. As a result, a minimum endmember-wise distance constrained NMF (MewDC-NMF) algorithm is proposed to extract endmembers and estimate their corresponding fractional abundance simultaneously. Both synthetic and real hyperspectral data experiments have demonstrate the effectiveness of the proposed MewDC-NMF algorithm.
机译:非负矩阵分解(NMF)及其扩展在光谱混合分析(SMA)中引起了很多关注,因为它们可以以无监督的方式处理高度混合的高光谱像素。为了克服NMF中的非唯一性问题,为了满足分解结果的要求,对端部成员之间的最小距离约束(MewDC)进行了优化,以使其尽可能紧凑。建议的约束类似于最小体积约束(MVC)。但是,可以避免MVC中的尺寸减小步骤和数值不稳定性问题。结果,提出了一种最小的端成员距离约束NMF(MewDC-NMF)算法,以提取端成员并同时估计其相应的分数丰度。合成的和真实的高光谱数据实验都证明了所提出的MewDC-NMF算法的有效性。

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