EEG connectivity measures could provide a new type of feature space for inferring a subject's intention in Brain-Computer Interfaces (BCIs). However, very little is known on EEG connectivity patterns for BCIs. In this study, EEG connectivity during motor imagery (MI) of the left and right is investigated in a broad frequency range across the whole scalp by combining Beamforming with Transfer Entropy and taking into account possible volume conduction effects. Observed connectivity patterns indicate that modulation intentionally induced by MI is strongest in the gamma-band, i.e., above 35 Hz. Furthermore, modulation between MI and rest is found to be more pronounced than between MI of different hands. This is in contrast to results on MI obta...
International audienceNon-invasive Brain-Computer Interfaces (BCIs) can exploit the ability of subje...
International audienceNon-invasive Brain-Computer Interfaces (BCIs) can exploit the ability of subje...
The understanding of the neurophysiological mechanisms responsible for performing motor imagery (MI)...
EEG connectivity measures could provide a new type of feature space for inferring a subjectamp;amp;l...
EEG connectivity measures could provide a new type of feature space for inferring a subject’s intent...
Motor Imagery BCI systems have a high rate of users that are not capable of modulating their brain a...
Performance of motor imagery (MI)-based brain computer interfaces (BCIs) highly depends on the extra...
This study aims to explore modulation of the connectivity pattern when people perform left hand vers...
In brain-computer interfaces (BCI), the detection of different mental states is a key element. In Mo...
International audienceIn the last decade, functional connectivity (FC) has been increasingly adopted...
Motor imagery-based brain-computer interfaces have gained much attention in the past few years. It e...
This review article discusses the definition and implementation of brain-computer interface (BCI) sy...
Hands motor imagery (MI) has been reported to alter synchronization patterns amongst neurons, yieldi...
Background and Objective: While machine learning approaches have led to tremendous advances in brain...
International audienceNon-invasive Brain-Computer Interfaces (BCIs) can exploit the ability of subje...
International audienceNon-invasive Brain-Computer Interfaces (BCIs) can exploit the ability of subje...
The understanding of the neurophysiological mechanisms responsible for performing motor imagery (MI)...
EEG connectivity measures could provide a new type of feature space for inferring a subjectamp;amp;l...
EEG connectivity measures could provide a new type of feature space for inferring a subject’s intent...
Motor Imagery BCI systems have a high rate of users that are not capable of modulating their brain a...
Performance of motor imagery (MI)-based brain computer interfaces (BCIs) highly depends on the extra...
This study aims to explore modulation of the connectivity pattern when people perform left hand vers...
In brain-computer interfaces (BCI), the detection of different mental states is a key element. In Mo...
International audienceIn the last decade, functional connectivity (FC) has been increasingly adopted...
Motor imagery-based brain-computer interfaces have gained much attention in the past few years. It e...
This review article discusses the definition and implementation of brain-computer interface (BCI) sy...
Hands motor imagery (MI) has been reported to alter synchronization patterns amongst neurons, yieldi...
Background and Objective: While machine learning approaches have led to tremendous advances in brain...
International audienceNon-invasive Brain-Computer Interfaces (BCIs) can exploit the ability of subje...
International audienceNon-invasive Brain-Computer Interfaces (BCIs) can exploit the ability of subje...
The understanding of the neurophysiological mechanisms responsible for performing motor imagery (MI)...