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Dictionary Learning Based Regularization in Quantitative MRI: A Nested Alternating Optimization Framework

Optimization and Control 2025-06-16 v1

Abstract

In this article, we propose a novel regularization method for a class of nonlinear inverse problems that is inspired by an application in quantitative magnetic resonance imaging (qMRI). The latter is a special instance of a general dynamical image reconstruction technique, wherein a radio-frequency pulse sequence gives rise to a time-discrete physics-based mathematical model which acts as a side constraint in our inverse problem. To enhance reconstruction quality, we employ dictionary learning as a data-adaptive regularizer, capturing complex tissue structures beyond handcrafted priors. For computing a solution of the resulting non-convex and non-smooth optimization problem, we alternate between updating the physical parameters of interest via a Levenberg-Marquardt approach and performing several iterations of a dictionary learning algorithm. This process falls under the category of nested alternating optimization schemes. We develop a general overall algorithmic framework whose convergence theory is not directly available in the literature. Global sub-linear and local strong linear convergence in infinite dimensions under certain regularity conditions for the sub-differentials are investigated based on the Kurdyka-Lojasiewicz inequality. Eventually, numerical experiments demonstrate the practical potential and unresolved challenges of the method.

Keywords

Cite

@article{arxiv.2506.11977,
  title  = {Dictionary Learning Based Regularization in Quantitative MRI: A Nested Alternating Optimization Framework},
  author = {Guozhi Dong and Michael Hintermüller and Clemens Sirotenko},
  journal= {arXiv preprint arXiv:2506.11977},
  year   = {2025}
}

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44 pages