International audienceIn this work we address the problem of solving ill-posed inverse problems in imaging where the prior is a variational autoencoder (VAE). Specifically we consider the decoupled case where the prior is trained once and can be reused for many different log-concave degradation models without retraining. Whereas previous MAP-based approaches to this problem lead to highly non-convex optimization algorithms, our approach computes the joint (space-latent) MAP that naturally leads to alternate optimization algorithms and to the use of a stochastic encoder to accelerate computations. The resulting technique (JPMAP) performs Joint Posterior Maximization using an Autoencoding Prior. We show theoretical and experimental evidence t...
Ill-posed inverse problems are commonplace in biomedical image processing. Their solution typically ...
International audienceBayesian approach has become a commonly used method for inverse problems arisi...
We discuss the possibility to learn a data-driven explicit model correction for inverse problems and...
International audienceIn this work we address the problem of solving ill-posed inverse problems in i...
In this paper we address the problem of solving ill-posed inverse problems in imaging where the prio...
In this work we address the problem of solving ill-posed inverse problems in imaging where the prior...
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...
International audienceWe propose an optimization method coupling a learned denoiser with the untrain...
International audienceBayesian methods to solve imaging inverse problems usually combine an explicit...
Deep Image Prior (DIP) is currently among the most efficient unsupervised deep learning based method...
Inverse problems are at the core of many challenging applications. Variational and learning models p...
International audienceInverse problems in imaging consider the reconstruction of clean images from d...
We propose a novel approach for solving inverse-problems with high-dimensional inputs and an expensi...
37 pages - SIIMS 2020Many imaging problems require solving an inverse problem that is ill-conditione...
Ill-posed inverse problems are commonplace in biomedical image processing. Their solution typically ...
International audienceBayesian approach has become a commonly used method for inverse problems arisi...
We discuss the possibility to learn a data-driven explicit model correction for inverse problems and...
International audienceIn this work we address the problem of solving ill-posed inverse problems in i...
In this paper we address the problem of solving ill-posed inverse problems in imaging where the prio...
In this work we address the problem of solving ill-posed inverse problems in imaging where the prior...
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...
International audienceWe propose an optimization method coupling a learned denoiser with the untrain...
International audienceBayesian methods to solve imaging inverse problems usually combine an explicit...
Deep Image Prior (DIP) is currently among the most efficient unsupervised deep learning based method...
Inverse problems are at the core of many challenging applications. Variational and learning models p...
International audienceInverse problems in imaging consider the reconstruction of clean images from d...
We propose a novel approach for solving inverse-problems with high-dimensional inputs and an expensi...
37 pages - SIIMS 2020Many imaging problems require solving an inverse problem that is ill-conditione...
Ill-posed inverse problems are commonplace in biomedical image processing. Their solution typically ...
International audienceBayesian approach has become a commonly used method for inverse problems arisi...
We discuss the possibility to learn a data-driven explicit model correction for inverse problems and...