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A Kernel Spatial Complexity-Based Nonlinear Unmixing Method of Hyperspectral Imagery

机译:基于核空间复杂度的高光谱图像非线性分解方法

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In the hyperspectral analysis, the spatial correlation information is potentially valuable for hyperspectral unmixing. In this paper, we propose a new model, denoted "kernel spatial complexity-based nonnegative matrix factorization" (KSCNMF), to unmix the nonlinear mixed data. The method is derived in the feature space, which is kernelized in terms of the kernel functions in order to avoid explicit computation in the high-dimension feature space. In the algorithm, input data are implicitly mapped into a high-dimensional feature space by a nonlinear mapping, which is associated with a kernel function. As a result the high order relationships and more useful features between the spectral data can be exploited. Experimental results based on a set of simulated data and a real hyperspectral image demonstrate that the proposed method for decomposition of nonlinear mixed pixels has excellent performance.
机译:在高光谱分析中,空间相关信息对于高光谱解混可能具有潜在的价值。在本文中,我们提出了一个称为“基于核空间复杂度的非负矩阵分解”(KSCNMF)的新模型,以对非线性混合数据进行分解。该方法在特征空间中派生,该特征空间根据内核函数进行了内核化,以避免在高维特征空间中进行显式计算。在该算法中,输入数据通过与内核函数相关联的非线性映射隐式映射到高维特征空间。结果,可以利用光谱数据之间的高阶关系和更有用的特征。基于一组模拟数据和真实的高光谱图像的实验结果表明,所提出的非线性混合像素分解方法具有出色的性能。

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