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Regularization,Bayesian Inference,and Machine Learning Methods for Inverse Problems
Authors:Ali Mohammad-Djafari
Institution:1.Laboratoire des Signaux et Système, CNRS, CentraleSupélec-University Paris Saclay, 91192 Gif-sur-Yvette, France;2.International Science Consulting and Training (ISCT), 91440 Bures-sur-Yvette, France;3.Scientific Leader of Shanfeng Company, Shaoxing 312352, China
Abstract:Classical methods for inverse problems are mainly based on regularization theory, in particular those, that are based on optimization of a criterion with two parts: a data-model matching and a regularization term. Different choices for these two terms and a great number of optimization algorithms have been proposed. When these two terms are distance or divergence measures, they can have a Bayesian Maximum A Posteriori (MAP) interpretation where these two terms correspond to the likelihood and prior-probability models, respectively. The Bayesian approach gives more flexibility in choosing these terms and, in particular, the prior term via hierarchical models and hidden variables. However, the Bayesian computations can become very heavy computationally. The machine learning (ML) methods such as classification, clustering, segmentation, and regression, based on neural networks (NN) and particularly convolutional NN, deep NN, physics-informed neural networks, etc. can become helpful to obtain approximate practical solutions to inverse problems. In this tutorial article, particular examples of image denoising, image restoration, and computed-tomography (CT) image reconstruction will illustrate this cooperation between ML and inversion.
Keywords:inverse problems  regularization  Bayesian inference  machine learning  artificial intelligence  Gauss–  Markov–  Potts  Variational Bayesian Approach (VBA)  physics-informed ML
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