International audienceAlgorithms to solve variational regularization of ill-posed inverse problems usually involve operators that depend on a collection of continuous parameters. When these operators enjoy some (local) regularity, these parameters can be selected using the so-called Stein Unbiased Risk Estimate (SURE). While this selection is usually performed by exhaustive search, we address in this work the problem of using the SURE to efficiently optimize for a collection of continuous parameters of the model. When considering non-smooth regularizers, such as the popular l1-norm corresponding to soft-thresholding mapping, the SURE is a discontinuous function of the parameters preventing the use of gradient descent optimization techniques...
<p>In high-dimensional and/or non-parametric regression problems, regularization (or penalization) i...
Inverse problems and regularization theory is a central theme in contemporary signal processing, whe...
In this work, we construct a risk estimator for hard thresholding which can be used as a basis to so...
International audienceAlgorithms to solve variational regularization of ill-posed inverse problems u...
This paper develops a novel framework to compute a projected Generalized Stein Unbiased Risk Estimat...
This paper discusses the properties of certain risk estimators that recently regained popularity for...
This paper discusses the properties of certain risk estimators recently proposed to choose regulariz...
This paper discusses the properties of certain risk estimators that recently regained popularity for...
In this paper, we propose a rigorous derivation of the expression of the projected Generalized Stein...
In this paper, we aim at recovering an unknown signal x0 from noisy L1measurements y=Phi*x0+w, where...
International audiencePenalized least squares are widely used in signal and image processing. Yet, i...
This thesis is concerned with recovery guarantees and sensitivity analysis of variational regulariza...
This thesis is concerned with recovery guarantees and sensitivity analysis of variational regulariza...
The generalized and smooth James-Stein thresholding functions link and extend the thresholding funct...
International audienceTo estimate a low rank matrix from noisy observations, truncated singular valu...
<p>In high-dimensional and/or non-parametric regression problems, regularization (or penalization) i...
Inverse problems and regularization theory is a central theme in contemporary signal processing, whe...
In this work, we construct a risk estimator for hard thresholding which can be used as a basis to so...
International audienceAlgorithms to solve variational regularization of ill-posed inverse problems u...
This paper develops a novel framework to compute a projected Generalized Stein Unbiased Risk Estimat...
This paper discusses the properties of certain risk estimators that recently regained popularity for...
This paper discusses the properties of certain risk estimators recently proposed to choose regulariz...
This paper discusses the properties of certain risk estimators that recently regained popularity for...
In this paper, we propose a rigorous derivation of the expression of the projected Generalized Stein...
In this paper, we aim at recovering an unknown signal x0 from noisy L1measurements y=Phi*x0+w, where...
International audiencePenalized least squares are widely used in signal and image processing. Yet, i...
This thesis is concerned with recovery guarantees and sensitivity analysis of variational regulariza...
This thesis is concerned with recovery guarantees and sensitivity analysis of variational regulariza...
The generalized and smooth James-Stein thresholding functions link and extend the thresholding funct...
International audienceTo estimate a low rank matrix from noisy observations, truncated singular valu...
<p>In high-dimensional and/or non-parametric regression problems, regularization (or penalization) i...
Inverse problems and regularization theory is a central theme in contemporary signal processing, whe...
In this work, we construct a risk estimator for hard thresholding which can be used as a basis to so...