International audienceSource localization in electroencephalography has received an increasing amount of interest in the last decade. Solving the underlying ill-posed inverse problem usually requires choosing an appropriate regularization. The usual l2 norm has been considered and provides solutions with low computational complexity. However, in several situations, realistic brain activity is believed to be focused in a few focal areas. In these cases, the l2 norm is known to overestimate the activated spatial areas. One solution to this problem is to promote sparse solutions for instance based on the l1 norm that are easy to handle with optimization techniques. In this paper, we consider the use of an l0 + l1 norm to enforce sparse source ...
Source localization in EEG represents a high dimensional inverse problem, which is severely ill-pose...
International audienceEstimators based on non-convex sparsity-promoting penalties were shown to yiel...
This paper describes new approaches to the inverse M/EEG problem incorporating a penalty favoring sp...
International audienceSource localization in electroencephalography has received an increasing amoun...
International audienceThis paper deals with EEG source localization. The aim is to perform spatially...
This paper deals with EEG source localization. The aim is to perform spatially coherent focal locali...
International audienceIn this paper, we propose a hierarchical Bayesian model approximating the ℓ20 ...
International audienceIn this paper, we propose a hierarchical Bayesian model approximating the ℓ20 ...
In this paper, we propose a hierarchical Bayesian model approximating the ℓ20 mixed-norm regularizat...
We propose a new method for EEG source localization. An efficient solution to this problem requires ...
Distributed linear solutions of the EEG source localization problem are used routinely. Here we desc...
M/EEG mechanisms allow determining changes in the brain activity, which is useful in diagnosing brai...
Distributed linear solutions of the EEG source localisation problem are used routinely. In contrast ...
Localizing the sources of electrical activity in the brain from electroencephalographic (EEG) data i...
The brain source localization information is used to diagnose various brain disorders such as epile...
Source localization in EEG represents a high dimensional inverse problem, which is severely ill-pose...
International audienceEstimators based on non-convex sparsity-promoting penalties were shown to yiel...
This paper describes new approaches to the inverse M/EEG problem incorporating a penalty favoring sp...
International audienceSource localization in electroencephalography has received an increasing amoun...
International audienceThis paper deals with EEG source localization. The aim is to perform spatially...
This paper deals with EEG source localization. The aim is to perform spatially coherent focal locali...
International audienceIn this paper, we propose a hierarchical Bayesian model approximating the ℓ20 ...
International audienceIn this paper, we propose a hierarchical Bayesian model approximating the ℓ20 ...
In this paper, we propose a hierarchical Bayesian model approximating the ℓ20 mixed-norm regularizat...
We propose a new method for EEG source localization. An efficient solution to this problem requires ...
Distributed linear solutions of the EEG source localization problem are used routinely. Here we desc...
M/EEG mechanisms allow determining changes in the brain activity, which is useful in diagnosing brai...
Distributed linear solutions of the EEG source localisation problem are used routinely. In contrast ...
Localizing the sources of electrical activity in the brain from electroencephalographic (EEG) data i...
The brain source localization information is used to diagnose various brain disorders such as epile...
Source localization in EEG represents a high dimensional inverse problem, which is severely ill-pose...
International audienceEstimators based on non-convex sparsity-promoting penalties were shown to yiel...
This paper describes new approaches to the inverse M/EEG problem incorporating a penalty favoring sp...