Electroencephalogram data used in the domain of brain-computer interfaces typically has subpar signal-to-noise ratio and data acquisition is expensive. An effective and commonly used classifier to discriminate event-related potentials is the linear discriminant analysis which, however, requires an estimate of the feature distribution. While this information is provided by the feature covariance matrix its large number of free parameters calls for regularization approaches like Ledoit-Wolf shrinkage. Assuming that the noise of event-related potential recordings is not time-locked, we propose to decouple the time component from the covariance matrix of event-related potential data in order to further improve the estimates of the covariance ma...
We present results from single-trial analyses conducted on Electroencephalography (EEG) data recorde...
International audienceObjective: Electroencephalography signals are recorded as a multidimensional d...
International audienceThis paper proposes a strategy to handle missing data for the classification o...
Analyzing brain states that correspond to event related potentials (ERPs) on a single trial basis is...
The usability of EEG-based visual brain–computer interfaces (BCIs) based on event-related potentials...
Linear discriminant analysis (LDA) is a commonly-used fea-ture extraction technique. For matrix-vari...
Abstract—Linear discriminant analysis (LDA) is the most commonly used classification method for sing...
We introduce a multi-step machine learning approach and use it to classify data from EEG-based brain...
This paper provides a new classification method of covariance matrices exploiting the t-Wishart dist...
International audienceThis paper proposes a new method for constructing and selecting of discriminan...
Among the numerous methods used to analyze neuroimaging data, Linear Discriminant Analysis (LDA) is ...
We introduce a novel beamforming approach for estimating event-related potential (ERP) source time s...
Using stepwise discriminant analysis (SWDA), single-trial event-related potentials (ERPs) were class...
International audienceBrain-Computer Interfaces (BCI) translate variations in the Electroencephalogr...
BACKGROUND Deep learning has revolutionized the field of computer vision, where convolutional neu...
We present results from single-trial analyses conducted on Electroencephalography (EEG) data recorde...
International audienceObjective: Electroencephalography signals are recorded as a multidimensional d...
International audienceThis paper proposes a strategy to handle missing data for the classification o...
Analyzing brain states that correspond to event related potentials (ERPs) on a single trial basis is...
The usability of EEG-based visual brain–computer interfaces (BCIs) based on event-related potentials...
Linear discriminant analysis (LDA) is a commonly-used fea-ture extraction technique. For matrix-vari...
Abstract—Linear discriminant analysis (LDA) is the most commonly used classification method for sing...
We introduce a multi-step machine learning approach and use it to classify data from EEG-based brain...
This paper provides a new classification method of covariance matrices exploiting the t-Wishart dist...
International audienceThis paper proposes a new method for constructing and selecting of discriminan...
Among the numerous methods used to analyze neuroimaging data, Linear Discriminant Analysis (LDA) is ...
We introduce a novel beamforming approach for estimating event-related potential (ERP) source time s...
Using stepwise discriminant analysis (SWDA), single-trial event-related potentials (ERPs) were class...
International audienceBrain-Computer Interfaces (BCI) translate variations in the Electroencephalogr...
BACKGROUND Deep learning has revolutionized the field of computer vision, where convolutional neu...
We present results from single-trial analyses conducted on Electroencephalography (EEG) data recorde...
International audienceObjective: Electroencephalography signals are recorded as a multidimensional d...
International audienceThis paper proposes a strategy to handle missing data for the classification o...