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Multilevel methods for discrete ill-posed problems: Application to deblurring.

机译:解决离散不适问题的多级方法:在去模糊中的应用。

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摘要

Discrete ill-posed problems occur frequently in the physical sciences. In this thesis, we present multilevel methods for a particular kind of discrete ill-posed problems, deblurring problems. Multigrid methods are well known as extremely efficient solvers for certain large-scale systems of equations, particularly those that result from the discretizations of partial differential equations and integral equations of the second kind. These have been extensively studied in recent years. However, for ill-posed problems, the classical multigrid approach is not immediately applicable. This work presents new wavelet-based multilevel methods for signal and image restoration problems as well as for blind deconvolution problems. In these methods, we use the orthogonal wavelet transform to define restriction and prolongation operators within a multigrid-type iteration. Specifically, the choice of the Haar wavelet operator has the advantage of preserving matrix structure, such as Toeplitz, between grids, which can be exploited to obtain faster solvers on each level where an edge-preserving Tikhonov regularization is applied. Moreover, when solving a blind deconvolution problem by means of a Structured Total Least Norm formulation, we have again at each level a Structured Total Least Norm problem to solve. We present results that indicate the promise of these approaches for restoration of signals and images with edges as well as restoration of the blurring operator in the case of blind deconvolution problems.
机译:离散不适的问题在物理科学中经常发生。在本文中,我们针对特定类型的离散不适定问题,模糊化问题提出了多级方法。众所周知,对于某些大型方程组,尤其是由第二类偏微分方程和积分方程离散化产生的结果,多网格方法是极其高效的求解器。近年来,对它们进行了广泛的研究。但是,对于不适定的问题,经典的多重网格方法不能立即应用。这项工作为信号和图像恢复问题以及盲反卷积问题提供了基于小波的新的多级方法。在这些方法中,我们使用正交小波变换在多网格类型迭代中定义约束和延长算子。具体而言,选择Haar小波算子的优势在于可以保留网格之间的矩阵结构(例如Toeplitz),可以利用该矩阵结构在应用了保留边缘的Tikhonov正则化的每个级别上获得更快的求解器。此外,当通过结构化总最小范数公式求解盲反卷积问题时,我们在每个级别上都需要再次解决结构化总最小范数问题。我们目前的结果表明,在盲反卷积问题的情况下,使用这些方法恢复具有边缘的信号和图像以及恢复模糊运算符的前景。

著录项

  • 作者

    Espanol, Malena Ines.;

  • 作者单位

    Tufts University.;

  • 授予单位 Tufts University.;
  • 学科 Mathematics.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 138 p.
  • 总页数 138
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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