Abstract—We present a novel statistically-based discretization paradigm and derive a class of maximum a posteriori (MAP) estimators for solving ill-conditioned linear inverse problems. We are guided by the theory of sparse stochastic processes, which specifies continuous-domain signals as solutions of linear stochastic differential equations. Accordingly, we show that the class of admissible priors for the discretized version of the signal is confined to the family of infinitely divisible distributions. Our estimators not only cover the well-studied methods of Tikhonov and `1-type regularizations as particular cases, but also open the door to a broader class of sparsity-promoting regularization schemes that are typically nonconvex. We provi...
International audienceBayesian approach has become a commonly used method for inverse problems arisi...
International audienceBayesian approach has become a commonly used method for inverse problems arisi...
In this paper, we aim at recovering an unknown signal x0 from noisy L1measurements y=Phi*x0+w, where...
Abstract — We present a novel statistically-based discretization paradigm and derive a class of maxi...
We present a novel statistically-based discretization paradigm and derive a class of maximum a poste...
We propose a novel statistical formulation of the image-reconstruction problem from noisy linear mea...
Conference of 2014 24th IEEE International Workshop on Machine Learning for Signal Processing, MLSP ...
International audienceRegularization and Bayesian inference based methods have been successfully app...
We present a statistical framework to benchmark the performance of neural-network-based reconstructi...
International audienceRegularization and Bayesian inference based methods have been successfully app...
Conference of 2014 24th IEEE International Workshop on Machine Learning for Signal Processing, MLSP ...
International audienceRegularization and Bayesian inference based methods have been successfully app...
We consider continuous-time sparse stochastic processes from which we have only a finite number of n...
We consider the inverse problem of recovering an unknown functional parameter u in a separable Banac...
International audienceBayesian approach has become a commonly used method for inverse problems arisi...
International audienceBayesian approach has become a commonly used method for inverse problems arisi...
International audienceBayesian approach has become a commonly used method for inverse problems arisi...
In this paper, we aim at recovering an unknown signal x0 from noisy L1measurements y=Phi*x0+w, where...
Abstract — We present a novel statistically-based discretization paradigm and derive a class of maxi...
We present a novel statistically-based discretization paradigm and derive a class of maximum a poste...
We propose a novel statistical formulation of the image-reconstruction problem from noisy linear mea...
Conference of 2014 24th IEEE International Workshop on Machine Learning for Signal Processing, MLSP ...
International audienceRegularization and Bayesian inference based methods have been successfully app...
We present a statistical framework to benchmark the performance of neural-network-based reconstructi...
International audienceRegularization and Bayesian inference based methods have been successfully app...
Conference of 2014 24th IEEE International Workshop on Machine Learning for Signal Processing, MLSP ...
International audienceRegularization and Bayesian inference based methods have been successfully app...
We consider continuous-time sparse stochastic processes from which we have only a finite number of n...
We consider the inverse problem of recovering an unknown functional parameter u in a separable Banac...
International audienceBayesian approach has become a commonly used method for inverse problems arisi...
International audienceBayesian approach has become a commonly used method for inverse problems arisi...
International audienceBayesian approach has become a commonly used method for inverse problems arisi...
In this paper, we aim at recovering an unknown signal x0 from noisy L1measurements y=Phi*x0+w, where...