In this article, we present an adaptive classifier for BCI based on a mixture of Gaussian (moG) model of the features and a dynamical Bayesian model of the class means. We apply this approach to feedback data from the Berlin Brain- Computer Interface (BBCI). The proposed model can improve the classification performance by compensating for substantial changes of EEG signals between training and feedback sessions as well as for gradual nonstationarity in the feedback sessions
The latest inclination of classifying the Electroencephalographic dataset using machine learning met...
Motor imagery is a common control strategy in EEG-based brain-computer interfaces (BCIs). However, v...
AbstractBrain Computer Interfacing (BCI) also called Brain Machine Interfacing (BMI)) is a challengi...
This paper proposes the use of variational Kalman filtering as an inference technique for adaptive c...
This paper proposes the use of variational Kalman filtering as an inference technique for adaptive c...
Adaptive classification is a key function of Brain Computer Interfacing (BCI) systems. This paper pr...
Adaptive classification is a key function of Brain Computer Interfacing (BCI) systems. This paper pr...
The current study introduces an adaptive Bayesian learning scheme which discriminates between left h...
Abstract — This paper suggests a probabilistic treatment of the signal processing part of a brain co...
This paper suggests a probabilistic treatment of the signal processing part of a brain computer inte...
International audienceThe purpose of this thesis is to explore ways to improve Electroencephalograph...
In the first project, we propose a Bayesian generative model to fit the probability distribution of ...
Riechmann H, Finke A. Semi-Supervised Neural Gas for Adaptive Brain-Computer Interfaces. In: ESANN ...
International audienceThere are numerous possibilities and motivations for an adaptive BCI, which ma...
We propose an adaptive classification method for the Brain Computer Interfaces (BCI) which uses Inte...
The latest inclination of classifying the Electroencephalographic dataset using machine learning met...
Motor imagery is a common control strategy in EEG-based brain-computer interfaces (BCIs). However, v...
AbstractBrain Computer Interfacing (BCI) also called Brain Machine Interfacing (BMI)) is a challengi...
This paper proposes the use of variational Kalman filtering as an inference technique for adaptive c...
This paper proposes the use of variational Kalman filtering as an inference technique for adaptive c...
Adaptive classification is a key function of Brain Computer Interfacing (BCI) systems. This paper pr...
Adaptive classification is a key function of Brain Computer Interfacing (BCI) systems. This paper pr...
The current study introduces an adaptive Bayesian learning scheme which discriminates between left h...
Abstract — This paper suggests a probabilistic treatment of the signal processing part of a brain co...
This paper suggests a probabilistic treatment of the signal processing part of a brain computer inte...
International audienceThe purpose of this thesis is to explore ways to improve Electroencephalograph...
In the first project, we propose a Bayesian generative model to fit the probability distribution of ...
Riechmann H, Finke A. Semi-Supervised Neural Gas for Adaptive Brain-Computer Interfaces. In: ESANN ...
International audienceThere are numerous possibilities and motivations for an adaptive BCI, which ma...
We propose an adaptive classification method for the Brain Computer Interfaces (BCI) which uses Inte...
The latest inclination of classifying the Electroencephalographic dataset using machine learning met...
Motor imagery is a common control strategy in EEG-based brain-computer interfaces (BCIs). However, v...
AbstractBrain Computer Interfacing (BCI) also called Brain Machine Interfacing (BMI)) is a challengi...