8siBackground and Objective: The input data distributions of EEG-based BCI systems can change during intra-session transitions due to nonstationarity caused by features covariate shifts, thus compromising BCI performance. We aimed to identify the most robust spatial filtering approach, among most used methods, testing them on calibration dataset, and test dataset recorded 30 min afterwards. In addition, we also investigated if their performance improved after application of Stationary Subspace Analysis (SSA). Methods: We have recorded, in 17 healthy subjects, the calibration set at the beginning of the upper limb motor imagery BCI experiment and testing set separately 30 min afterwards. Both the calibration and test data were pre-processed ...
A brain-computer interface (BCI) provides a new pathway for communication and control through decodi...
When we want to use brain-computer interfaces (BCI) as an input modality for gaming, a short setup p...
Nonstationary learning refers to the process that can learn patterns from data, adapt to shifts, and...
7siThe study reports the performance of stroke patients to operate Motor-Imagery based Brain-Compute...
Non-stationarities in EEG signals coming from electrode artefacts, muscular activity or changes of t...
Abstract: A major challenge in applying machine learning methods to Brain-Computer Interfaces (BCIs)...
A major challenge in applying machine learning methods to Brain-Computer Interfaces (BCIs) is to ove...
EEG single-trial analysis requires methods that are robust against noise and disturbance. In this co...
Electroencephalography signals have very low spatial resolution and electrodes capture signals that ...
We present easy-to-use alternatives to the often-used two-stage Common Spatial Pattern + classifier ...
Article number 8688582n brain–computer interfaces (BCIs), the typical models of the EEG observation...
Research on EEG based brain-computer-interfaces (BCIs) aims at steering devices by thought. Even for...
OBJECTIVE: The performance of brain-computer interfaces (BCIs) based on electroencephalography (EEG)...
Objective. Event Related Potentials (ERPs) reflecting cognitive response to external stimuli, are wi...
A major challenge in EEG-based brain-computer interfaces (BCIs) is the intersession nonstationarity ...
A brain-computer interface (BCI) provides a new pathway for communication and control through decodi...
When we want to use brain-computer interfaces (BCI) as an input modality for gaming, a short setup p...
Nonstationary learning refers to the process that can learn patterns from data, adapt to shifts, and...
7siThe study reports the performance of stroke patients to operate Motor-Imagery based Brain-Compute...
Non-stationarities in EEG signals coming from electrode artefacts, muscular activity or changes of t...
Abstract: A major challenge in applying machine learning methods to Brain-Computer Interfaces (BCIs)...
A major challenge in applying machine learning methods to Brain-Computer Interfaces (BCIs) is to ove...
EEG single-trial analysis requires methods that are robust against noise and disturbance. In this co...
Electroencephalography signals have very low spatial resolution and electrodes capture signals that ...
We present easy-to-use alternatives to the often-used two-stage Common Spatial Pattern + classifier ...
Article number 8688582n brain–computer interfaces (BCIs), the typical models of the EEG observation...
Research on EEG based brain-computer-interfaces (BCIs) aims at steering devices by thought. Even for...
OBJECTIVE: The performance of brain-computer interfaces (BCIs) based on electroencephalography (EEG)...
Objective. Event Related Potentials (ERPs) reflecting cognitive response to external stimuli, are wi...
A major challenge in EEG-based brain-computer interfaces (BCIs) is the intersession nonstationarity ...
A brain-computer interface (BCI) provides a new pathway for communication and control through decodi...
When we want to use brain-computer interfaces (BCI) as an input modality for gaming, a short setup p...
Nonstationary learning refers to the process that can learn patterns from data, adapt to shifts, and...