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Bayesian reconstruction of hyperspectral images by using compressed sensing measurements and a local structured prior

机译:通过使用压缩感知测量和局部结构化先验来进行高光谱图像的贝叶斯重建

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This paper introduces a hierarchical Bayesian model for the reconstruction of hyperspectral images using compressed sensing measurements. This model exploits known properties of natural images, promoting the recovered image to be sparse on a selected basis and smooth in the image domain. The posterior distribution of this model is too complex to derive closed form expressions for the estimators of its parameters. Therefore, an MCMC method is investigated to sample this posterior distribution. The resulting samples are used to estimate the unknown model parameters and hyperparameters in an unsupervised framework. The results obtained on real data illustrate the improvement in reconstruction quality when compared to some existing techniques.
机译:本文介绍了一种分层贝叶斯模型,用于使用压缩传感测量来重建高光谱图像。该模型利用自然图像的已知属性,促进恢复的图像在选定的基础上稀疏并在图像域内平滑。该模型的后验分布过于复杂,无法为其参数的估计量得出闭合形式的表达式。因此,研究了MCMC方法以采样该后验分布。所得样本用于估计无监督框架中的未知模型参数和超参数。与某些现有技术相比,在真实数据上获得的结果说明了重建质量的提高。

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