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An endmember dissimilarity based Non-negative Matrix Factorization method for hyperspectral unmixing

机译:基于端元相异度的非负矩阵分解方法

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Non-negative Matrix Factorization has recently been proposed for application in the field of hyperspectral imagery. And for hyperspectral unmixing, high mixing degree and signature variability always affect the unmixing accuracy. To solve this, this paper proposed a novelmethod based on NMF to unmix hyperspectral data. Using the low similarity between endmember signatures in hyperspectral image, we proposes a constraint named endmember dissimilarity constraint which employs the spectral information divergence between signatures in the basic NMF to search a set of vectors with least similarity. This is consistent with the endmember property of the hyperspectral image. The minimum volume constraint NMF and the Piecewise Smoothness NMF with Sparseness Constraint are used to evaluate the proposed method in different mixing degree and signature variability. The experimental results in synthetic data shows that the proposed method performs best in higher mixing degree and signature variability than the other two approaches and the real AVIRIS with highly mixing degree data results also demonstrate that the proposed method performs well in identifying highly mixed endmembers.
机译:非负矩阵分解最近已被提出用于高光谱图像领域。对于高光谱解混,高混合度和特征变异性始终会影响解混精度。为了解决这个问题,本文提出了一种基于NMF的新方法来分解高光谱数据。利用高光谱图像中端成员签名之间的低相似性,我们提出了一个名为端成员不相似性约束的约束,该约束利用基本NMF中签名之间的光谱信息差异来搜索一组相似性最小的向量。这与高光谱图像的endmember属性一致。使用最小体积约束NMF和带有稀疏约束的分段平滑NMF来评估所提出的方法在不同混合度和特征变化下的效果。综合数据的实验结果表明,与其他两种方法相比,该方法在混合度和签名可变性方面表现最佳,而具有高度混合度数据的实际AVIRIS结果也表明,该方法在识别高度混合的末端成员方面表现良好。

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