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Hierarchical Bayesian image restoration from partially known blurs

机译:从部分已知的模糊层次贝叶斯图像恢复

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We examine the restoration problem 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. This problem has been examined before; however, in most previous works the problem of estimating the parameters that define the restoration filters was not addressed. In this paper, two iterative algorithms that simultaneously restore the image and estimate the parameters of the restoration filter are proposed using evidence analysis (EA) within the hierarchical Bayesian framework. We show that the restoration step of the first of these algorithms is in effect almost identical to the regularized constrained total least-squares (RCTLS) filter, while the restoration step of the second is identical to the linear minimum mean square-error (LMMSE) filter for this problem. Therefore, in this paper we provide a solution to the parameter estimation problem of the RCTLS filter. We further provide an alternative approach to the expectation-maximization (EM) framework to derive a parameter estimation algorithm for the LMMSE filter. These iterative algorithms are derived in the discrete Fourier transform (DFT) domain; therefore, they are computationally efficient even for large images. Numerical experiments are presented that test and compare the proposed algorithms.
机译:当退化系统的点扩展函数(PSF)部分已知时,我们研究了恢复问题。对于此问题,假定PSF为已知确定性和未知随机分量之和。这个问题已经被检查过了。然而,在大多数先前的工作中,没有解决估计定义恢复滤波器的参数的问题。在本文中,使用分层贝叶斯框架内的证据分析(EA)提出了两种同时还原图像和估计还原滤波器参数的迭代算法。我们表明,第一种算法的恢复步骤实际上与正则化约束总最小二乘(RCTLS)滤波器几乎相同,而第二种算法的恢复步骤与线性最小均方误差(LMMSE)相同过滤此问题。因此,在本文中,我们为RCTLS滤波器的参数估计问题提供了解决方案。我们进一步为期望最大化(EM)框架提供了一种替代方法,以得出LMMSE滤波器的参数估计算法。这些迭代算法是在离散傅立叶变换(DFT)域中派生的。因此,即使对于大图像,它们的计算效率也很高。数值实验表明了该算法的有效性。

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