Bayesian approaches are widely used in signal processing applications. In order to derive plausible estimates of original parameters from their distorted observations, they rely on the posterior distribution that incorporates prior knowledge about the unknown parameters as well as informations about the observations. The posterior mean estimator is one of the most commonly used inference rule. However, as the exact posterior distribution is very often intractable, one has to resort to some Bayesian approximation tools to approximate it. In this work, we are mainly interested in two particular Bayesian methods, namely Markov Chain Monte Carlo (MCMC) sampling algorithms and Variational Bayes approximations (VBA).This thesis is made of two pa...
We consider the problem of image restoration/reconstruction where the acquisition system is modeled ...
International audienceMarkov Chain Monte Carlo sampling algorithms are efficient Bayesian tools to e...
International audienceIn this paper we provide an algorithm allowing to solve the variational Bayesi...
Bayesian approaches are widely used in signal processing applications. In order to derive plausible...
In this thesis, our main objective is to develop efficient unsupervised approaches for large dimensi...
Numerous machine learning and signal/image processing tasks can be formulated as statistical inferen...
Numerous machine learning and signal/image processing tasks can be formulated as statistical inferen...
In this paper, a methodology is investigated for signal recovery in the presence of non-Gaussian noi...
Dans le cadre de cette thèse, notre préoccupation principale est de développer des approches non sup...
This thesis deals with Bayesian methods for solving ill-posed inverse problems in imaging with learn...
This thesis deals with Bayesian methods for solving ill-posed inverse problems in imaging with learn...
The dimensionality and ill-posedness often encountered in imaging inverse problems are a challenge f...
International audienceOur aim is to solve a linear inverse problem using various methods based on th...
Many imaging problems require solving a high-dimensional inverse problem that is ill-conditioned or...
Abstract. The connection between Bayesian statistics and the technique of regularization for inverse...
We consider the problem of image restoration/reconstruction where the acquisition system is modeled ...
International audienceMarkov Chain Monte Carlo sampling algorithms are efficient Bayesian tools to e...
International audienceIn this paper we provide an algorithm allowing to solve the variational Bayesi...
Bayesian approaches are widely used in signal processing applications. In order to derive plausible...
In this thesis, our main objective is to develop efficient unsupervised approaches for large dimensi...
Numerous machine learning and signal/image processing tasks can be formulated as statistical inferen...
Numerous machine learning and signal/image processing tasks can be formulated as statistical inferen...
In this paper, a methodology is investigated for signal recovery in the presence of non-Gaussian noi...
Dans le cadre de cette thèse, notre préoccupation principale est de développer des approches non sup...
This thesis deals with Bayesian methods for solving ill-posed inverse problems in imaging with learn...
This thesis deals with Bayesian methods for solving ill-posed inverse problems in imaging with learn...
The dimensionality and ill-posedness often encountered in imaging inverse problems are a challenge f...
International audienceOur aim is to solve a linear inverse problem using various methods based on th...
Many imaging problems require solving a high-dimensional inverse problem that is ill-conditioned or...
Abstract. The connection between Bayesian statistics and the technique of regularization for inverse...
We consider the problem of image restoration/reconstruction where the acquisition system is modeled ...
International audienceMarkov Chain Monte Carlo sampling algorithms are efficient Bayesian tools to e...
International audienceIn this paper we provide an algorithm allowing to solve the variational Bayesi...