This thesis explores latent-variable probabilistic models for the analysis and classification of electroenchephalographic (EEG) signals used in Brain Computer Interface (BCI) systems. The first part of the thesis focuses on the use of probabilistic methods for classification. We begin with comparing performance between 'black-box' generative and discriminative approaches. In order to take potential advantage of the temporal nature of the EEG, we use two temporal models: the standard generative hidden Markov model, and the discriminative input-output hidden Markov model. For this latter model, we introduce a novel 'apposite' training algorithm which is of particular benefit for the type of training sequences that we use. We also asses the ad...
This book presents advanced methodologies in two areas related to electroencephalogram (EEG) signals...
Abstract—As there has been a paradigm shift in the learning load from a human subject to a computer,...
This paper examines the performance of four classifiers for Brain Computer Interface (BCI) systems b...
This thesis explores latent-variable probabilistic models for the analysis and classification of ele...
We present an application of Independent Component Analysis (ICA) to the discrimination of mental ta...
In the first project, we propose a Bayesian generative model to fit the probability distribution of ...
We present an application of Independent Component Analysis (ICA) to the discrimination of mental ta...
In this paper we investigate the use of a temporal extension of Independent Component Analysis (ICA)...
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...
A number of stochastic models and statistical tests are synthesised to develop a general framework f...
International audienceAlthough promising, BCIs are still barely used outside laboratories due to the...
In this paper we present a simple and straightforward approach to the problem of single-trial classi...
Classifying electroencephalography (EEG) signals is an important step for proceeding EEG-based brain...
Statistical learning is a set of tools for modeling and understanding complex datasets. It is ...
This book presents advanced methodologies in two areas related to electroencephalogram (EEG) signals...
Abstract—As there has been a paradigm shift in the learning load from a human subject to a computer,...
This paper examines the performance of four classifiers for Brain Computer Interface (BCI) systems b...
This thesis explores latent-variable probabilistic models for the analysis and classification of ele...
We present an application of Independent Component Analysis (ICA) to the discrimination of mental ta...
In the first project, we propose a Bayesian generative model to fit the probability distribution of ...
We present an application of Independent Component Analysis (ICA) to the discrimination of mental ta...
In this paper we investigate the use of a temporal extension of Independent Component Analysis (ICA)...
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...
A number of stochastic models and statistical tests are synthesised to develop a general framework f...
International audienceAlthough promising, BCIs are still barely used outside laboratories due to the...
In this paper we present a simple and straightforward approach to the problem of single-trial classi...
Classifying electroencephalography (EEG) signals is an important step for proceeding EEG-based brain...
Statistical learning is a set of tools for modeling and understanding complex datasets. It is ...
This book presents advanced methodologies in two areas related to electroencephalogram (EEG) signals...
Abstract—As there has been a paradigm shift in the learning load from a human subject to a computer,...
This paper examines the performance of four classifiers for Brain Computer Interface (BCI) systems b...