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Approximate maximum likelihood hyperparameter estimation for Gibbs priors

机译:Gibbs先验的近似最大似然超参数估计

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The parameters of the prior, the hyperparameters, play an important role in Bayesian image estimation. Of particular importance for the case of Gibbs priors is the global hyperparameter, /spl beta/, which multiplies the Hamiltonian. Here we consider maximum likelihood (ML) estimation of /spl beta/ from incomplete data, i.e., problems in which the image, which is drawn from a Gibbs prior, is observed indirectly through some degradation or blurring process. Important applications include image restoration and image reconstruction from projections. Exact ML estimation of /spl beta/ from incomplete data is intractable for most image processing. Here we present an approximate ML estimator that is computed simultaneously with a maximum a posteriori (MAP) image estimate. The algorithm is based on a mean field approximation technique through which multidimensional Gibbs distributions are approximated by a separable function equal to a product of one-dimensional (1-D) densities. We show how this approach can be used to simplify the ML estimation problem. We also show how the Gibbs-Bogoliubov-Feynman (GBF) bound can be used to optimize the approximation for a restricted class of problems. We present the results of a Monte Carlo study that examines the bias and variance of this estimator when applied to image restoration.
机译:先验的参数,超参数,在贝叶斯图像估计中起重要作用。对于吉布斯先验而言,尤为重要的是全局超参数/ spl beta /,它乘以哈密顿量。在这里,我们考虑从不完整的数据对/ spl beta /的最大似然(ML)估计,即通过某些降级或模糊过程间接观察到从Gibbs先验图像中提取的图像的问题。重要的应用包括图像恢复和从投影图像重建。对于大多数图像处理来说,从不完整的数据对/ spl beta /进行精确的ML估计是很困难的。在这里,我们提出了一个近似的ML估计量,它是与最大后验(MAP)图像估计量同时计算的。该算法基于平均场近似技术,通过该技术,多维Gibbs分布由等于一维(1-D)密度乘积的可分离函数近似。我们展示了如何使用这种方法来简化ML估计问题。我们还将展示Gibbs-Bogoliubov-Feynman(GBF)界线如何用于优化有限类问题的近似。我们介绍了蒙特卡洛研究的结果,该研究检查了该估计量应用于图像恢复时的偏差和方差。

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