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Data-driven Morozov regularization of inverse problems

Data-driven Morozov regularization of inverse problems

来源:Arxiv_logoArxiv
英文摘要

The solution of inverse problems is crucial in various fields such as medicine, biology, and engineering, where one seeks to find a solution from noisy observations. These problems often exhibit non-uniqueness and ill-posedness, resulting in instability under noise with standard methods. To address this, regularization techniques have been developed to balance data fitting and prior information. Recently, data-driven variational regularization methods have emerged, mainly analyzed within the framework of Tikhonov regularization, termed Network Tikhonov (NETT). This paper introduces Morozov regularization combined with a learned regularizer, termed DD-Morozov regularization. Our approach employs neural networks to define non-convex regularizers tailored to training data, enabling a convergence analysis in the non-convex context with noise-dependent regularizers. We also propose a refined training strategy that improves adaptation to ill-posed problems compared to NETT's original strategy, which primarily focuses on addressing non-uniqueness. We present numerical results for attenuation correction in photoacoustic tomography, comparing DD-Morozov regularization with NETT using the same trained regularizer, both with and without an additional total variation regularizer.

Markus Tiefenthaler、Markus Haltmeier、Richard Kowar

生物科学理论、生物科学方法生物科学研究方法、生物科学研究技术物理学声学工程

Markus Tiefenthaler,Markus Haltmeier,Richard Kowar.Data-driven Morozov regularization of inverse problems[EB/OL].(2023-10-22)[2025-08-02].https://arxiv.org/abs/2310.14290.点此复制

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