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Nonlinearity Detection in Hyperspectral Images Using a Polynomial Post-Nonlinear Mixing Model

机译:使用多项式后非线性混合模型的高光谱图像非线性检测

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This paper studies a nonlinear mixing model for hyperspectral image unmixing and nonlinearity detection. The proposed model assumes that the pixel reflectances are nonlinear functions of pure spectral components contaminated by an additive white Gaussian noise. These nonlinear functions are approximated by polynomials leading to a polynomial post-nonlinear mixing model. We have shown in a previous paper that the parameters involved in the resulting model can be estimated using least squares methods. A generalized likelihood ratio test based on the estimator of the nonlinearity parameter is proposed to decide whether a pixel of the image results from the commonly used linear mixing model or from a more general nonlinear mixing model. To compute the test statistic associated with the nonlinearity detection, we propose to approximate the variance of the estimated nonlinearity parameter by its constrained Cramér–Rao bound. The performance of the detection strategy is evaluated via simulations conducted on synthetic and real data. More precisely, synthetic data have been generated according to the standard linear mixing model and three nonlinear models from the literature. The real data investigated in this study are extracted from the Cuprite image, which shows that some minerals seem to be nonlinearly mixed in this image. Finally, it is interesting to note that the estimated abundance maps obtained with the post-nonlinear mixing model are in good agreement with results obtained in previous studies.
机译:本文研究了用于高光谱图像分解和非线性检测的非线性混合模型。所提出的模型假设像素反射率是被加性白高斯噪声污染的纯光谱成分的非线性函数。这些非线性函数由多项式近似,从而得出多项式后非线性混合模型。我们在先前的论文中已经表明,可以使用最小二乘法来估计结果模型中涉及的参数。提出了一种基于非线性参数估计量的广义似然比测试,以判定图像的像素是由常用的线性混合模型还是由更为通用的非线性混合模型得出。为了计算与非线性检测相关的测试统计量,我们建议通过受约束的Cramér-Rao边界来近似估计非线性参数的方差。通过对合成和真实数据进行的仿真评估检测策略的性能。更准确地说,已经根据标准线性混合模型和文献中的三个非线性模型生成了合成数据。本研究中调查的真实数据是从Cuprite图像中提取的,这表明某些矿物似乎在该图像中非线性混合。最后,有趣的是,使用非线性后混合模型获得的估计丰度图与先前研究中获得的结果高度吻合。

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