International audienceThe main focus of this work is the estimation of a complex valued signal assumed to have a sparse representation in an uncountable dictionary of signals. The dictionary elements are parameterized by a real-valued vector and the available observations are corrupted with an additive noise. By applying a linearization technique, the original model is recast as a constrained sparse perturbed model. The problem of the computation of the involved multiple parameters is addressed from a nonconvex optimization viewpoint. A cost function is defined including an arbitrary Lipschitz differentiable data fidelity term accounting for the noise statistics, and an l0-like penalty. A proximal algorithm is then employed to solve the res...
We consider a general non-linear model where the signal is a finite mixture of an unknown, possibly ...
Abstract—Complex-valued data play a prominent role in a number of signal and image processing applic...
Parametric signal models are used in a multitude of signal processing applications. This thesis deal...
4pThe main focus of this work is the estimation of a complex valued signal assumed to have a sparse ...
In this paper, we consider the problem of estimating a complex-valued signal having a sparse represe...
International audienceThe main focus of this work is the estimation of a complex valued signal assum...
This thesis is based on nine papers, all concerned with parameter estimation. The thesis aims at sol...
International audienceWe propose a method to reconstruct sparse signals degraded by a nonlinear dist...
This thesis examines sparse statistical modeling on a range of applications in audio modeling, audio...
Many problems in signal processing and statistical inference are based on finding a sparse solution ...
We consider the problem of estimating a signal which has been corrupted with structured noise. When ...
The idea of representing a signal in a classical computing machine has played a central role in the ...
We propose a new sparse model construction method aimed at maximizing a model’s generalisation capab...
We consider a general non-linear model where the signal is a finite mixture of an unknown, possibly ...
Sparsity-based estimation techniques deal with the problem of retrieving a data vector from an under...
We consider a general non-linear model where the signal is a finite mixture of an unknown, possibly ...
Abstract—Complex-valued data play a prominent role in a number of signal and image processing applic...
Parametric signal models are used in a multitude of signal processing applications. This thesis deal...
4pThe main focus of this work is the estimation of a complex valued signal assumed to have a sparse ...
In this paper, we consider the problem of estimating a complex-valued signal having a sparse represe...
International audienceThe main focus of this work is the estimation of a complex valued signal assum...
This thesis is based on nine papers, all concerned with parameter estimation. The thesis aims at sol...
International audienceWe propose a method to reconstruct sparse signals degraded by a nonlinear dist...
This thesis examines sparse statistical modeling on a range of applications in audio modeling, audio...
Many problems in signal processing and statistical inference are based on finding a sparse solution ...
We consider the problem of estimating a signal which has been corrupted with structured noise. When ...
The idea of representing a signal in a classical computing machine has played a central role in the ...
We propose a new sparse model construction method aimed at maximizing a model’s generalisation capab...
We consider a general non-linear model where the signal is a finite mixture of an unknown, possibly ...
Sparsity-based estimation techniques deal with the problem of retrieving a data vector from an under...
We consider a general non-linear model where the signal is a finite mixture of an unknown, possibly ...
Abstract—Complex-valued data play a prominent role in a number of signal and image processing applic...
Parametric signal models are used in a multitude of signal processing applications. This thesis deal...