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多光谱图像中空间和光谱模式的成分分析。II. 熵最小化。

Component analysis of spatial and spectral patterns in multispectral images. II. Entropy minimization.

作者信息

Sasaki K, Kawata S, Minami S

机构信息

Department of Applied Physics, Osaka University, Japan.

出版信息

J Opt Soc Am A. 1989 Jan;6(1):73-9. doi: 10.1364/josaa.6.000073.

Abstract

In Part I [J. Opt. Soc. Am. A 4, 2101 (1987)] of this series, we developed a method for estimating both spatial patterns and spectral curves of components in a multispectral scene. This method does not need spatial and spectral information about the components but only multispread imagery data. The estimation is given as a feasible solution set satisfying the nonnegativity constraint for density and spectral response for all components at all pixels. In this paper, we estimate unique solutions for both the component patterns and the spectra from the feasible solution set. The solution is given by optimizing an entropy minimization criterion. This criterion enhances the spectral or spatial features of individual components. Two experimental results are shown to demonstrate the effectiveness of this method with biological and cytochemical specimens. The limitations of this method for unique pattern estimation are also discussed.

摘要

在本系列的第一部分[《美国光学学会会刊A》4, 2101 (1987)]中,我们开发了一种用于估计多光谱场景中各成分的空间模式和光谱曲线的方法。该方法不需要关于各成分的空间和光谱信息,只需要多散焦图像数据。估计结果以一个可行解集的形式给出,该可行解集满足所有像素处所有成分的密度和光谱响应的非负性约束。在本文中,我们从可行解集中估计各成分模式和光谱的唯一解。该解通过优化熵最小化准则得到。该准则增强了各个成分的光谱或空间特征。给出了两个实验结果,以证明该方法对生物和细胞化学标本的有效性。还讨论了该方法在唯一模式估计方面的局限性。

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