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Probabilistic computational method in image restoration based on statistical-mechanical technique

机译:基于统计力学技术的图像复原概率计算方法

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An image restoration can be often formulated as a energy minimization problem. When an energy function is expressed by using the hamiltonian of a classical spin system only with finite range interactions, the probabilistic model, which is described in the form of Gibbs distribution for the energy function, can be regarded as a Markov random field (MRF) model. In the MRF model, we have to determine not only the minimum-energy configuration but also hyper-parameters. We have a constrained optimization and a maximum likelihood (ML) estimation as mathematical frameworks to determine the hyperparameters. In this paper, some probabilistic computational methods for the search of minimum-energy configuration and the estimation of hyperparameters are proposed in the standpoint of statistical-mechanics. We summarize the mathematical framework of probabilistic computational method based on the constrained optimization and reformulate the framework of ML estimation as a hyperparameter estimation method at a finite temperature in the standpoint of the constrained optimization. The probabilistic computational algorithms for natural image restorations are con-structed from the mean-field approximation, mean-field annealing (MFA), iterative conditional modes (ICM) and cluster zero-temperature process (CZTP).
机译:图像恢复通常可以表述为能量最小化问题。当仅通过具有有限范围相互作用的经典自旋系统的哈密顿量表示能量函数时,以吉布斯分布形式描述的概率模型可以被视为马尔可夫随机场(MRF)模型。在MRF模型中,我们不仅要确定最小能量配置,还要确定超参数。我们具有约束优化和最大似然(ML)估计作为确定超参数的数学框架。本文从统计力学的角度提出了一些寻找最小能量构型和估计超参数的概率计算方法。我们总结了基于约束优化的概率计算方法的数学框架,并从约束优化的角度将ML估计的框架重新构造为有限温度下的超参数估计方法。自然图像恢复的概率计算算法由平均场近似,平均场退火(MFA),迭代条件模式(ICM)和簇零温度过程(CZTP)构成。

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