National audienceThe microstate model describes EEG signals as series of topographies remaining stable during several tens of milliseconds and associated to brain states. The proposed generalization in this paper is based on an overcomplete model allowing several states to be active simultaneously. A dictionary learning algorithm with a temporal regularization is proposed to extract these states. The representation effectiveness of both models is compared on artificial and real signals for the extraction of the evoked potential P300.Le modèle des micro-états décrit les signaux EEG par des suites de topographies associées à des états cérébraux demeurant stables durant quelques dizaines de millisecondes. La généralisation proposée dans cet ar...
We present an open-source Python package to compute information-theoretical quantities for electroen...
International audienceThe simultaneous analysis of multiple recordings of neuronal electromagnetic a...
Sparse signal recovery and dictionary learning methods have found a vast number of applications incl...
National audienceThe microstate model describes EEG signals as series of topographies remaining stab...
National audienceThis paper focuses on spatially regularized overcomplete dictionary decompositions ...
The electroencephalography measures the brain activity by recording variations of the electric field...
International audienceThis article addresses the issue of representing electroencephalographic (EEG)...
Understanding the full complexity of the brain has been a challenging research project for decades, ...
In this work, we present a multichannel EEG decomposition model based on an adaptive topographic tim...
International audienceWe present a method for decomposing MEG or EEG data (channel x time x trials) ...
The electrocardiogram (ECG) was the first biomedical signal for which digital signal processing tech...
In the context of pre-surgical evaluation of epileptic patients, SEEG signals constitute a valuable ...
A brain-computer interface (BCI) translates the human's brain signals to give a second chance to neu...
Summarization: We present a novel synergistic methodology for the spatio-temporal analysis of single...
We present an open-source Python package to compute information-theoretical quantities for electroen...
We present an open-source Python package to compute information-theoretical quantities for electroen...
International audienceThe simultaneous analysis of multiple recordings of neuronal electromagnetic a...
Sparse signal recovery and dictionary learning methods have found a vast number of applications incl...
National audienceThe microstate model describes EEG signals as series of topographies remaining stab...
National audienceThis paper focuses on spatially regularized overcomplete dictionary decompositions ...
The electroencephalography measures the brain activity by recording variations of the electric field...
International audienceThis article addresses the issue of representing electroencephalographic (EEG)...
Understanding the full complexity of the brain has been a challenging research project for decades, ...
In this work, we present a multichannel EEG decomposition model based on an adaptive topographic tim...
International audienceWe present a method for decomposing MEG or EEG data (channel x time x trials) ...
The electrocardiogram (ECG) was the first biomedical signal for which digital signal processing tech...
In the context of pre-surgical evaluation of epileptic patients, SEEG signals constitute a valuable ...
A brain-computer interface (BCI) translates the human's brain signals to give a second chance to neu...
Summarization: We present a novel synergistic methodology for the spatio-temporal analysis of single...
We present an open-source Python package to compute information-theoretical quantities for electroen...
We present an open-source Python package to compute information-theoretical quantities for electroen...
International audienceThe simultaneous analysis of multiple recordings of neuronal electromagnetic a...
Sparse signal recovery and dictionary learning methods have found a vast number of applications incl...