首页> 外文会议>Conference on Advanced Signal Processing Algorithms, Architectures, and Implementations Ⅺ Aug 1-3, 2001, San Diego, USA >Krylov subspace iterative methods for nonsymmetric discrete ill-posed problems in image restoration
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Krylov subspace iterative methods for nonsymmetric discrete ill-posed problems in image restoration

机译:图像复原中非对称离散不适定问题的Krylov子空间迭代方法

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The BiCG and QMR methods are well-known Krylov subspace iterative methods for the solution of linear systems of equations with a large nonsymmetric, nonsingular matrix. However, little is known of the performance of these methods when they are applied to the computation of approximate solutions of linear systems of equations with a matrix of ill-determined rank. Such linear systems are known as linear discrete ill-posed problems. We describe an application of the BiCG and QMR methods to the solution of linear discrete ill-posed problems that arise in image restoration, and compare these methods to the conjugate gradient method applied to the associated normal equations and to total variation-penalized Tikhonov regularization.
机译:BiCG和QMR方法是众所周知的Krylov子空间迭代方法,用于求解具有大的非对称,非奇异矩阵的线性方程组。但是,当将这些方法应用于具有不确定矩阵的方程组线性系统的近似解的计算时,对这些方法的性能知之甚少。这种线性系统被称为线性离散不适定问题。我们描述了BiCG和QMR方法在图像恢复中出现的线性离散不适定问题的解决方案中的应用,并将这些方法与应用于相关法线方程的共轭梯度法和总变化惩罚的Tikhonov正则化进行了比较。

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