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The Lagrange method for the regularization of discrete ill-posed problems

机译:离散不适定问题正则化的Lagrange方法

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In many science and engineering applications, the discretization of linear ill-posed problems gives rise to large ill-conditioned linear systems with the right-hand side degraded by noise. The solution of such linear systems requires the solution of minimization problems with one quadratic constraint, depending on an estimate of the variance of the noise. This strategy is known as regularization. In this work, we propose a modification of the Lagrange method for the solution of the noise constrained regularization problem. We present the numerical results of test problems, image restoration and medical imaging denoising. Our results indicate that the proposed Lagrange method is effective and efficient in computing good regularized solutions of ill-conditioned linear systems and in computing the corresponding Lagrange multipliers. Moreover, our numerical experiments show that the Lagrange method is computationally convenient. Therefore, the Lagrange method is a promising approach for dealing with ill-posed problems.
机译:在许多科学和工程应用中,线性不适定问题的离散化导致大型不适定线性系统的右手边由于噪声而退化。这种线性系统的解决方案需要具有一个二次约束的最小化问题的解决方案,这取决于噪声方差的估计。此策略称为正则化。在这项工作中,我们提出了Lagrange方法的一种改进方案,用于解决噪声受限的正则化问题。我们提出测试问题,图像恢复和医学成像降噪的数值结果。我们的结果表明,提出的Lagrange方法在计算病态线性系统的良好正则化解以及计算相应的Lagrange乘数方面是有效的。此外,我们的数值实验表明,拉格朗日方法在计算上很方便。因此,拉格朗日方法是一种解决不适定问题的有前途的方法。

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