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An endmember extraction algorithm for hyperspectral imagery based on kernel orthogonal subspace projection

机译:基于内核正交子空间投影的超光图象的终点提取算法

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Endmember extraction is a key step of spectral unmixing. In order to extract endmembers more precisely from nonlinear mixed hyperspcetral imagery, an unsupervised kernel-based orthogonal subspace projection (UKOSP) technique is proposed in this paper. Without considering the noise, the maximal pixel vector in the imagery would be regarded as an endmember, then was removed the effect of it by kernel orthogonal subspace projection method to get another orthogonal imagery. Experimental results of simulated and real data prove that the proposed UKOSP approach outperforms the linear endmember extraction algorithms such as vertex component analysis and unsupervised kernel-based orthogonal subspace projection.
机译:EndMember提取是光谱解密的关键步骤。为了更精确地从非线性混合的超薄图像更精确地提取终端用,本文提出了一种无监督的基于内核的正交子空间投影(UKOSP)技术。在不考虑噪声的情况下,图像中的最大像素向量将被视为终点,然后通过内核正交子空间投影方法删除它的效果以获得另一个正交图像。模拟和实际数据的实验结果证明,建议的UKOSP方法优于线性终端补充算法,如顶点分量分析和无监督基于内核的正交子空间投影。

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