Data-driven approaches to inverse problems
Journal:
arXiv
Published Date:
Jun 13, 2025
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 utilizes highly over-parameterized models, typically deep neural
networks, which are adapted to specific inverse problems using carefully
selected training data. Current approaches that follow this new paradigm
distinguish themselves through solution accuracy paired with computational
efficiency that was previously inconceivable.
These notes offer an introduction to this data-driven paradigm for inverse
problems. The first part of these notes will provide an introduction to inverse
problems, discuss classical solution strategies, and present some applications.
The second part will delve into modern data-driven approaches, with a
particular focus on adversarial regularization and provably convergent linear
plug-and-play denoisers. Throughout the presentation of these methodologies,
their theoretical properties will be discussed, and numerical examples will be
provided. The lecture series will conclude with a discussion of open problems
and future perspectives in the field.