Data-driven approaches to inverse problems
Carola-Bibiane Sch\"onlieb, Zakhar Shumaylov

TL;DR
This paper introduces data-driven methods, especially deep neural networks, for solving inverse problems, highlighting their accuracy and efficiency compared to classical approaches, with applications across various scientific fields.
Contribution
It provides an overview of modern data-driven approaches to inverse problems, focusing on adversarial regularization and linear plug-and-play denoisers, including their theoretical properties and applications.
Findings
Data-driven methods achieve high solution accuracy.
Deep neural networks enable efficient inverse problem solutions.
Theoretical analysis supports the convergence of proposed methods.
Abstract
Inverse problems are concerned with the reconstruction of unknown physical quantities using indirect measurements and are fundamental across diverse fields such as medical imaging, remote sensing, and material sciences. These problems serve as critical tools for visualizing internal structures beyond what is visible to the naked eye, enabling quantification, diagnosis, prediction, and discovery. However, most inverse problems are ill-posed, necessitating robust mathematical treatment to yield meaningful solutions. While classical approaches provide mathematically rigorous and computationally stable solutions, they are constrained by the ability to accurately model solution properties and implement them efficiently. A more recent paradigm considers deriving solutions to inverse problems in a data-driven manner. Instead of relying on classical mathematical modeling, this approach…
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Taxonomy
TopicsStatistical and numerical algorithms · Gaussian Processes and Bayesian Inference · Reservoir Engineering and Simulation Methods
MethodsFocus
