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Hyperspectral image unmixing algorithm based on endmember-constrained nonnegative matrix factorization

机译:基于端元约束非负矩阵分解的高光谱图像分解算法

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摘要

The objective function of classical nonnegative matrix factorization (NMF) is non-convexity, which affects the obtaining of optimal solutions. In this paper, we proposed a NMF algorithm, and this algorithm was based on the constraint of endmember spectral correlation minimization and endmember spectral difference maximization. The size of endmember spectral overall-correlation was measured by the correlation function, and correlation function was defined as the sum of the absolute values of every two correlation coefficient between the spectra. In the difference constraint of the endmember spectra, the mutation of matrix trace was slowed down by introducing the natural logarithm function. Combining the image decomposition error with the influences of end-member spectra, in the objective function the projection gradient was used to achieve NMF. The effectiveness of algorithm was verified by the simulated hyperspectral images and real hyperspectral images.
机译:经典非负矩阵分解(NMF)的目标函数是非凸性,这影响了最优解的获得。在本文中,我们提出了一种NMF算法,该算法基于端成员谱相关最小化和端成员谱差最大化的约束。通过相关函数来测量端成员谱整体相关的大小,并将相关函数定义为谱之间每两个相关系数的绝对值之和。在端成员谱的差异约束中,通过引入自然对数函数减慢了基质痕迹的突变。结合图像分解误差和端元光谱的影响,在目标函数中使用投影梯度获得NMF。仿真的高光谱图像和真实的高光谱图像验证了算法的有效性。

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