International audienceThis article addresses the issue of representing electroencephalographic (EEG) signals in an efficient way. While classical approaches use a fixed Gabor dictionary to analyze EEG signals, this article proposes a data-driven method to obtain an adapted dictionary. To reach an efficient dictionary learning, appropriate spatial and temporal modeling is required. Inter-channels links are taken into account in the spatial multivariate model, and shift-invariance is used for the temporal model. Multivariate learned kernels are informative (a few atoms code plentiful energy) and interpretable (the atoms can have a physiological meaning). Using real EEG data, the proposed method is shown to outperform the classical multichanne...
International audienceFrequency-specific patterns of neural activity are traditionally interpreted a...
We develop a novel methodology for the single-trial analysis of multichannel time-varying neuroimagi...
International audienceThis work aims at establishing a relationship between neurophysiological and h...
International audienceThis article addresses the issue of representing electroencephalographic (EEG)...
International audienceElectroencephalography(EEG) and magnetoencephalography (MEG) measure the elect...
International audienceThe simultaneous analysis of multiple recordings of neuronal electromagnetic a...
International audienceDictionary Learning has proven to be a powerful tool for many image processing...
International audienceSignals obtained from magneto- or electroencephalography (M/EEG) are very nois...
National audienceThe microstate model describes EEG signals as series of topographies remaining stab...
With the fast development of wearable healthcare systems, compressed sensing (CS) has been proposed ...
Graph attention networks (GATs) based architectures have proved to be powerful at implicitly learnin...
International audienceIn the context of brain–computer interfacing based on motor imagery, we propos...
The neuroimaging community heavily relies on statistical inference to explain measured brain activit...
International audienceFrequency-specific patterns of neural activity are traditionally interpreted a...
We develop a novel methodology for the single-trial analysis of multichannel time-varying neuroimagi...
International audienceThis work aims at establishing a relationship between neurophysiological and h...
International audienceThis article addresses the issue of representing electroencephalographic (EEG)...
International audienceElectroencephalography(EEG) and magnetoencephalography (MEG) measure the elect...
International audienceThe simultaneous analysis of multiple recordings of neuronal electromagnetic a...
International audienceDictionary Learning has proven to be a powerful tool for many image processing...
International audienceSignals obtained from magneto- or electroencephalography (M/EEG) are very nois...
National audienceThe microstate model describes EEG signals as series of topographies remaining stab...
With the fast development of wearable healthcare systems, compressed sensing (CS) has been proposed ...
Graph attention networks (GATs) based architectures have proved to be powerful at implicitly learnin...
International audienceIn the context of brain–computer interfacing based on motor imagery, we propos...
The neuroimaging community heavily relies on statistical inference to explain measured brain activit...
International audienceFrequency-specific patterns of neural activity are traditionally interpreted a...
We develop a novel methodology for the single-trial analysis of multichannel time-varying neuroimagi...
International audienceThis work aims at establishing a relationship between neurophysiological and h...