International audienceSince the seminal work of Venkatakrishnan et al. [82] in 2013, Plug & Play (PnP) methods have become ubiquitous in Bayesian imaging. These methods derive estimators for inverse problems in imaging by combining an explicit likelihood function with a prior that is implicitly defined by an image denoising algorithm. In the case of optimisation schemes, some recent works guarantee the convergence to a fixed point, albeit not necessarily a maximum- a-posteriori Bayesian estimate. In the case of Monte Carlo sampling schemes for general Bayesian computation, to the best of our knowledge there is no known proof of convergence. Algorithm convergence issues aside, there are important open questions regarding whether the underlyi...
International audienceThe Plug-and-Play (PnP) framework makes it possible to integrate advanced imag...
International audienceThe emergence of efficient algorithms in variational and Bayesian frameworks b...
Purpose: To mitigate the problem of noisy parameter maps with high uncertainties by casting paramete...
International audienceSince the seminal work of Venkatakrishnan et al. [82] in 2013, Plug & Play (Pn...
International audienceBayesian methods to solve imaging inverse problems usually combine an explicit...
This thesis is devoted to the study of Plug & Play (PnP) methods applied to inverse problems encount...
Bayesian methods for solving inverse problems are a powerful alternative to classical methods since ...
International audiencePlug-and-Play priors recently emerged as a powerful technique for solving inve...
International audienceThis paper addresses the problem of reconstructing an image from low-count Pos...
Recently, a variety of unrolled networks have been proposed for image reconstruction. These can be i...
Monte Carlo methods are are an ubiquitous tool in modern statistics. Under the Bayesian paradigm, th...
We consider the problem of Bayesian parameter estimation for deep neural networks, which is importan...
Many imaging problems require solving a high-dimensional inverse problem that is ill-conditioned or...
International audienceThe Plug-and-Play (PnP) framework makes it possible to integrate advanced imag...
International audienceThe emergence of efficient algorithms in variational and Bayesian frameworks b...
Purpose: To mitigate the problem of noisy parameter maps with high uncertainties by casting paramete...
International audienceSince the seminal work of Venkatakrishnan et al. [82] in 2013, Plug & Play (Pn...
International audienceBayesian methods to solve imaging inverse problems usually combine an explicit...
This thesis is devoted to the study of Plug & Play (PnP) methods applied to inverse problems encount...
Bayesian methods for solving inverse problems are a powerful alternative to classical methods since ...
International audiencePlug-and-Play priors recently emerged as a powerful technique for solving inve...
International audienceThis paper addresses the problem of reconstructing an image from low-count Pos...
Recently, a variety of unrolled networks have been proposed for image reconstruction. These can be i...
Monte Carlo methods are are an ubiquitous tool in modern statistics. Under the Bayesian paradigm, th...
We consider the problem of Bayesian parameter estimation for deep neural networks, which is importan...
Many imaging problems require solving a high-dimensional inverse problem that is ill-conditioned or...
International audienceThe Plug-and-Play (PnP) framework makes it possible to integrate advanced imag...
International audienceThe emergence of efficient algorithms in variational and Bayesian frameworks b...
Purpose: To mitigate the problem of noisy parameter maps with high uncertainties by casting paramete...