共线性对线性和非线性光谱混合分析的影响

Xuehong Chen, Jin Chen, X. Jia, Jin Wu
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引用次数: 16

摘要

在过去的几十年里,人们研究了线性和非线性光谱混合分析,以获得混合像元中光谱纯材料的分数。然而,光谱解混中的共线性问题一直没有得到足够的重视。定量分析和详细的仿真结果表明,非线性模型中引入的端元(包括虚端元)之间的高度相关性会使高斯噪声膨胀,从而对解混误差产生很大影响。虽然通常选择具有低相关性的独特光谱作为真端元,但由它们的乘积项形成的虚端元可以与其他端元高度相关。因此,我们发现,与线性模型相比,非线性模型通常更容易出现共线性问题,当高斯噪声较高时,尽管非线性模型的建模能力较高,但其表现可能不如预期。进行了实验来说明其效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Impact of collinearity on linear and nonlinear spectral mixture analysis
Linear and nonlinear spectral mixture analysis has been studied for deriving the fractions of spectrally pure materials in a mixed pixel in the past decades. However, not much attention has been given to the collinearity problem in spectral unmixing. In this paper, quantitative analysis and detailed simulations are provided which show that the high correlation between the endmembers, including the virtual endmembers introduced in a nonlinear model, has a strong impact on unmixing errors through inflating the Gaussian noise. While distinctive spectra with low correlations are often selected as true endmembers, the virtual endmembers formed by their product terms can be highly correlated with others. Therefore, it is found that a nonlinear model generally suffers the collinearity problem more in comparison with a linear model and may not perform as expected when the Gaussian noise is high, despite its higher modeling power. Experiments were conducted to illustrate the effects.
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