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Preconditioned Iterative Methods for Algebraic Systems from Multiplicative Half-Quadratic Regularization Image Restorations

机译:乘半二次正则化图像复原的代数系统预处理迭代方法

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摘要

Image restoration is often solved by minimizing an energy function consisting of a data-fidelity term and a regularization term. A regularized convex term can usually preserve the image edges well in the restored image. In this paper, we consider a class of convex and edge-preserving regularization functions, I.e., multiplicative half-quadratic regularizations, and we use the Newton method to solve the correspondingly reduced systems of nonlinear equations. At each Newton iterate, the preconditioned conjugate gradient method, incorporated with a constraint preconditioner, is employed to solve the structured Newton equation that has a symmetric positive definite coefficient matrix.The igenvalue bounds of the preconditioned matrix are deliberately derived, which can be used to estimate the convergence speed of the preconditioned conjugate gradient method. We use experimental results to demonstrate that this new approach is efficient,and the effect of image restoration is r0easonably well.
机译:图像恢复通常通过最小化由数据保真度项和正则项构成的能量函数来解决。正则化的凸项通常可以在恢复的图像中很好地保留图像边缘。在本文中,我们考虑了一类凸和保留边的正则化函数,即乘法半二次正则化,并使用牛顿法来求解非线性方程组的相应约简系统。在每个牛顿迭代中,采用预处理的共轭梯度方法和约束预处理器来求解具有对称正定系数矩阵的结构化牛顿方程,并刻意推导预处理矩阵的特征值界,可用于估计预处理共轭梯度法的收敛速度。我们使用实验结果证明了这种新方法是有效的,并且图像恢复的效果是合理的。

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