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Hyperparameter estimation using hyperpriors for hierarchical Bayesian image restoration from partially known blurs

机译:使用超优先级进行超参数估计,以从部分已知的模糊图像中恢复贝叶斯图像

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Abstract: In this paper we examine the problem of estimating the hyperparameters in image restoration when the point-spread function (PSF) of the degradation system is partially known. For this problem the PSF is assumed to be the sum of a known deterministic and an unknown random component. In this paper two iterative algorithms are proposed that simultaneously restor the image and estimate the hyperparameters of the restoration filter using hyperprior. These algorithms are based on evidence analysis within the hierarchical Bayesian framework. This work was motivated by the observation that it is not possible to simultaneously estimate all the necessary hyperparameters for this problem without any prior knowledge about them. More specifically, we observed in our previous work that we cannot estimate accurately at the same time the hyperparameters and thus facilitate this estimation problem. The proposed iterative algorithms can be derived in the discrete Fourier transform domain, therefore, they are computationally efficient even for large images. Numerical experiments are presented where the benefits of introducing hyperpriors are demonstrated. !28
机译:摘要:在本文中,我们研究了当退化系统的点扩散函数(PSF)是部分已知的情况下估计图像恢复中超参数的问题。对于此问题,假定PSF为已知确定性和未知随机分量之和。本文提出了两种迭代算法,它们可以同时还原图像并使用超优先级估计还原滤波器的超参数。这些算法基于分层贝叶斯框架内的证据分析。这项工作是出于以下观察的动机,即在没有任何先验知识的情况下不可能同时估计该问题的所有必要超参数。更具体地说,我们在先前的工作中观察到,我们无法同时准确估计超参数,从而促进了这一估计问题。所提出的迭代算法可以在离散傅立叶变换域中导出,因此,即使对于大图像,它们的计算效率也很高。提出了数值实验,其中证明了引入超优先级的好处。 !28

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