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Theoretical Perspectives on Deep Learning Methods in Inverse Problems

Jonathan Scarlett, Reinhard Heckel, Miguel R. D. Rodrigues, Paul Hand, Yonina C. Eldar

2022IEEE Journal on Selected Areas in Information Theory32 citationsDOI

Abstract

In recent years, there have been significant advances in the use of deep learning methods in inverse problems such as denoising, compressive sensing, inpainting, and super-resolution. While this line of works has predominantly been driven by practical algorithms and experiments, it has also given rise to a variety of intriguing theoretical problems. In this paper, we survey some of the prominent theoretical developments in this line of works, focusing in particular on generative priors, untrained neural network priors, and unfolding algorithms. In addition to summarizing existing results in these topics, we highlight several ongoing challenges and open problems.

Topics & Concepts

InpaintingPrior probabilityComputer scienceInverse problemGenerative grammarArtificial intelligenceVariety (cybernetics)Deep learningMachine learningImage (mathematics)MathematicsBayesian probabilityMathematical analysisSparse and Compressive Sensing TechniquesImage and Signal Denoising MethodsModel Reduction and Neural Networks
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