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Simultaneous image restoration and hyperparameter estimation by a cumulant analysis

机译:通过累积量分析同时进行图像恢复和超参数估计

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Abstract: Hyperparameter estimation for incomplete data in Markov Random Field image restoration is investigated. Assuming linear dependence of energies wrt hyperparameters framework, we use a classical cumulant expansion technique for Maximum Likelihood estimation of hyperparameters of the prior, pixel regularization probability density function. The particular case where the prior potential is an homogenous function of pixels is fully analyzed. This approach is then extended to an explicit joint boundary-pixel process aimed to preserve discontinuities. A generalized stochastic gradient (GSG) algorithm with a fast sampling technique is devised aiming to achieve simultaneous hyperparameter estimation, pixel and boundary restoration. Image restoration performances of posterior mean performed during GSG convergence and of simulated annealing performed after GSG convergence are compared experimentally. Results and perspectives are given. !20
机译:摘要:研究了马尔可夫随机场图像恢复中不完整数据的超参数估计。假设能量与超参数框架的线性相关性,我们使用经典的累积量展开技术对现有像素正则化概率密度函数的超参数进行最大似然估计。充分分析了先验电势是像素的均匀函数的特定情况。然后将此方法扩展到旨在保留不连续性的显式联合边界像素处理。设计了一种具有快速采样技术的广义随机梯度(GSG)算法,旨在实现同步的超参数估计,像素和边界恢复。实验比较了GSG收敛过程中后均值和GSG收敛后模拟退火后的图像恢复性能。给出了结果和观点。 !20

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