We consider the problem of multiclass adaptive classification for brain-computer interfaces and propose the use of multiclass pooled mean linear discriminant analysis (MPMLDA), a multiclass generalization of the adaptation rule introduced by Vidaurre, Kawanabe, von Bunau, Blankertz, and Muller (2010) for the binary class setting. Using publicly available EEG data sets and tangent space mapping (Barachant, Bonnet, Congedo, & Jutten, 2012) as a feature extractor, we demonstrate that MPMLDA can significantly outperform state-of-the-art multiclass static and adaptive methods. Furthermore, efficient learning rates can be achieved using data from different subjects
Common Spatial Pattern (CSP) is one of the most widespread methods for Brain-Computer Interfaces (BC...
There is a growing interest in the study of signal processing and machine learning methods, which ma...
Many Brain-computer Interfaces (BCI) use bandpower estimates with more or less subject-specific opti...
We consider the problem of multi-class adaptive classification for brain computer in-terfaces and pr...
We introduce a multi-step machine learning approach and use it to classify data from EEG-based brain...
This paper examines the performance of four classifiers for Brain Computer Interface (BCI) systems b...
Various adaptation techniques have been proposed to address the non-stationarity issue faced by elec...
There is a step of significant difficulty experienced by brain-computer interface (BCI) users when g...
The brain-computer interface (BCI) has drawn much interest for its broad potential in clinical appli...
There is a growing interest in the study of signal processing and machine learning methods, which ma...
The latest inclination of classifying the Electroencephalographic dataset using machine learning met...
International audienceObjective: Most current Electroencephalography (EEG)-based Brain-Computer Inte...
A major challenge in EEG-based brain-computer interfaces (BCIs) is the intersession nonstationarity ...
Due to the non-stationarity of electroencephalogram (EEG) signals, online training and adaptation is...
Proceeding of: 2010 IEEE World Congress in Computational Intelligence (WCCI 2010), Barcelona, Spain,...
Common Spatial Pattern (CSP) is one of the most widespread methods for Brain-Computer Interfaces (BC...
There is a growing interest in the study of signal processing and machine learning methods, which ma...
Many Brain-computer Interfaces (BCI) use bandpower estimates with more or less subject-specific opti...
We consider the problem of multi-class adaptive classification for brain computer in-terfaces and pr...
We introduce a multi-step machine learning approach and use it to classify data from EEG-based brain...
This paper examines the performance of four classifiers for Brain Computer Interface (BCI) systems b...
Various adaptation techniques have been proposed to address the non-stationarity issue faced by elec...
There is a step of significant difficulty experienced by brain-computer interface (BCI) users when g...
The brain-computer interface (BCI) has drawn much interest for its broad potential in clinical appli...
There is a growing interest in the study of signal processing and machine learning methods, which ma...
The latest inclination of classifying the Electroencephalographic dataset using machine learning met...
International audienceObjective: Most current Electroencephalography (EEG)-based Brain-Computer Inte...
A major challenge in EEG-based brain-computer interfaces (BCIs) is the intersession nonstationarity ...
Due to the non-stationarity of electroencephalogram (EEG) signals, online training and adaptation is...
Proceeding of: 2010 IEEE World Congress in Computational Intelligence (WCCI 2010), Barcelona, Spain,...
Common Spatial Pattern (CSP) is one of the most widespread methods for Brain-Computer Interfaces (BC...
There is a growing interest in the study of signal processing and machine learning methods, which ma...
Many Brain-computer Interfaces (BCI) use bandpower estimates with more or less subject-specific opti...