Accelerated algorithms for maximum-likelihood image reconstruction are essential for emerging applications such as three-dimensional (3-D) tomography, dynamic tomographic imaging, and other high-dimensional inverse problems. In this paper, we introduce and analyze a class of fast and stable sequential optimization methods for computing maximum-likelihood estimates and study its convergence properties. These methods are based on a proximal point algorithm implemented with the Kullback-Liebler (KL) divergence between posterior densities of the complete data as a proximal penalty function. When the proximal relaxation parameter is set to unity, one obtains the classical expectation-maximization (EM) algorithm. For a decreasing sequence of rela...
The maximum-likelihood (ML) approach in emission tomography provides images with superior noise char...
A robust multisensor fusion approach to use prior information from one sensor data to regularize an ...
5 pagesInternational audienceIn this paper, we propose a probabilistic optimization method, named pr...
SIIMS 2020 - 30 pagesThis paper presents a detailed theoretical analysis of the three stochastic app...
3 figuresThe EM algorithm is a widely used methodology for penalized likelihood estimation. Provable...
International audienceConvex optimization problems involving information measures have been extensiv...
Abstract The aim of the present paper is to give a general method allowing us to devise maximum-like...
We study the variational inference problem of minimizing a regularized Rényi divergence over an expo...
Convex optimization problems involving information mea-sures have been extensively investigated in s...
This paper reviews and compares three maximum likelihood algorithms for transmission tomography. One...
L'objectif de cette thèse est de proposer des méthodes fiables, efficaces et rapides pour minimiser ...
The maximum-likelihood (ML) approach in emission tomography provides images with superior noise char...
Theme 4 - Simulation et optimisation de systemes complexes - Projetis2SIGLEAvailable from INIST (FR)...
37 pages - SIIMS 2020Many imaging problems require solving an inverse problem that is ill-conditione...
This paper studies the regularization of constrained Maximum Likelihood iterative algorithms applied...
The maximum-likelihood (ML) approach in emission tomography provides images with superior noise char...
A robust multisensor fusion approach to use prior information from one sensor data to regularize an ...
5 pagesInternational audienceIn this paper, we propose a probabilistic optimization method, named pr...
SIIMS 2020 - 30 pagesThis paper presents a detailed theoretical analysis of the three stochastic app...
3 figuresThe EM algorithm is a widely used methodology for penalized likelihood estimation. Provable...
International audienceConvex optimization problems involving information measures have been extensiv...
Abstract The aim of the present paper is to give a general method allowing us to devise maximum-like...
We study the variational inference problem of minimizing a regularized Rényi divergence over an expo...
Convex optimization problems involving information mea-sures have been extensively investigated in s...
This paper reviews and compares three maximum likelihood algorithms for transmission tomography. One...
L'objectif de cette thèse est de proposer des méthodes fiables, efficaces et rapides pour minimiser ...
The maximum-likelihood (ML) approach in emission tomography provides images with superior noise char...
Theme 4 - Simulation et optimisation de systemes complexes - Projetis2SIGLEAvailable from INIST (FR)...
37 pages - SIIMS 2020Many imaging problems require solving an inverse problem that is ill-conditione...
This paper studies the regularization of constrained Maximum Likelihood iterative algorithms applied...
The maximum-likelihood (ML) approach in emission tomography provides images with superior noise char...
A robust multisensor fusion approach to use prior information from one sensor data to regularize an ...
5 pagesInternational audienceIn this paper, we propose a probabilistic optimization method, named pr...