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Joint Bayesian Endmember Extraction and Linear Unmixing for Hyperspectral Imagery

机译:高光谱影像的联合贝叶斯端元提取和线性分解

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摘要

This paper studies a fully Bayesian algorithm for endmember extraction and abundance estimation for hyperspectral imagery. Each pixel of the hyperspectral image is decomposed as a linear combination of pure endmember spectra following the linear mixing model. The estimation of the unknown endmember spectra is conducted in a unified manner by generating the posterior distribution of abundances and endmember parameters under a hierarchical Bayesian model. This model assumes conjugate prior distributions for these parameters, accounts for nonnegativity and fulladditivity constraints, and exploits the fact that the endmember proportions lie on a lower dimensional simplex. A Gibbs sampler is proposed to overcome the complexity of evaluating the resulting posterior distribution. This sampler generates samples distributed according to the posterior distribution and estimates the unknown parameters using these generated samples. The accuracy of the joint Bayesian estimator is illustrated by simulations conducted on synthetic and real AVIRIS images.
机译:本文研究了用于高光谱图像端成员提取和丰度估计的完全贝叶斯算法。按照线性混合模型,将高光谱图像的每个像素分解为纯端成员谱的线性组合。在层次贝叶斯模型下,通过生成丰度和末端成员参数的后验分布,以统一的方式估算未知的末端成员光谱。该模型假定这些参数的共轭先验分布,考虑了非负性和全加性约束,并利用了端成员比例位于较低维单纯形上的事实。建议使用Gibbs采样器来克服评估后验分布的复杂性。该采样器生成根据后验分布分布的样本,并使用这些生成的样本来估计未知参数。通过对合成和真实AVIRIS图像进行的模拟来说明联合贝叶斯估计量的准确性。

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