Solving inverse problems is central to a variety of important applications, such as biomedical image reconstruction and non-destructive testing. These problems are characterized by the sensitivity of direct solution methods with respect to data perturbations. To stabilize the reconstruction process, regularization methods have to be employed. Well-known regularization methods are based on frame expansions, such as the wavelet-vaguelette (WVD) decomposition, which are well adapted to the underlying signal class and the forward model and allow efficient implementation. However, it is well known that the lack of translational invariance of wavelets and related systems leads to specific artifacts in the reconstruction. To overcome this problem, in this paper we introduce and analyze the concept of translation invariant diagonal frame decomposition (TI-DFD) of linear operators. We prove that a TI-DFD combined with a regularizing filter leads to a convergent regularization method with optimal convergence rates. As illustrative example, we construct a wavelet-based TI-DFD for one-dimensional integration, where we also investigate our approach numerically. The results indicate that filtered TI-DFDs eliminate the typical wavelet artifacts when using standard wavelets and provide a fast, accurate, and stable solution scheme for inverse problems.
翻译:解决反面问题对于生物医学图像重建和非破坏性测试等各种重要应用至关重要,这些问题的特点是对数据扰动直接解决办法的敏感性。为了稳定重建进程,必须采用正规化方法。众所周知的正规化方法基于框架扩张,如波盘-蒸发器(WVD)分解,这些分解非常适合基本信号级和前方模型,并能够有效实施。然而,众所周知,缺乏基于波子和相关系统的翻译变异性导致重建中的具体文物。为了克服这一问题,我们在本文中介绍和分析线性操作员变异双向框架分解(TI-DFD)的概念。我们证明,一个TI-DFD与正常过滤器相结合,可导致一种与最佳汇合率相一致的统合性规范方法。举例说,我们为一维化的集成设计了一个基于波盘的TI-DFD,我们在这里也用数字来调查我们的方法。结果表明,在使用过滤式的TI-DFD方案时,可以快速地消除典型的波质标准。