Abstract- We present a spatio-temporal linear discrimination method for single-trial classification of multi-channel electroencephalography (EEG). No prior information about the characteristics of the neural activity is required—i.e. the algorithm requires no knowledge about the timing and/or spatial distribution of the evoked responses. The algorithm finds a temporal delay/window onset time for each EEG channel and then spatially integrates the channels for each channel-specific onset time. The algorithm can be seen as learning discrimination trajectories defined within the space of EEG channels. We demonstrate the method for detecting auditory evoked neural activity and discrimination of task difficulty in a complex visual-auditory enviro...
We describe our work using linear discrimination of multi-channel electroencephalography for single-...
International audienceBrain-Computer Interfaces (BCI) translate variations in the Electroencephalogr...
We present a method for binary on-line classification of triggered but temporally blurred events tha...
The spatio-temporal oscillations in EEG waves are indicative of sensory and cognitive processing. We...
Conventional analysis of electroencephalography (EEG) and magnetoencephalography (MEG) often relies ...
Conventional analysis of electroencephalography (EEG) and magnetoencephalography (MEG) often relies ...
Conventional analysis of electroencephalography (EEG) and magnetoencephalography (MEG) often relies...
Conventional electroencephalography (EEG) and magnetoencephalography (MEG) analysis often rely on a...
It is shown how two of the most common types of feature mapping used for classification of single tr...
It is well established that multiple EEG channels are required for various brain functionality studi...
This paper presents a new filter for EEG Event-Related Potentials that relies on spatio-temporal fea...
© 2018 IEEE. The classification of brain states using neural recordings such as electroencephalograp...
We develop a novel methodology for the single-trial analysis of multichannel time-varying neuroimagi...
The Primary Objective of this research is to implement an automatic method for selecting the most op...
The common spatial pattern analysis (CSP), a frequently utilized feature extraction method in brain-...
We describe our work using linear discrimination of multi-channel electroencephalography for single-...
International audienceBrain-Computer Interfaces (BCI) translate variations in the Electroencephalogr...
We present a method for binary on-line classification of triggered but temporally blurred events tha...
The spatio-temporal oscillations in EEG waves are indicative of sensory and cognitive processing. We...
Conventional analysis of electroencephalography (EEG) and magnetoencephalography (MEG) often relies ...
Conventional analysis of electroencephalography (EEG) and magnetoencephalography (MEG) often relies ...
Conventional analysis of electroencephalography (EEG) and magnetoencephalography (MEG) often relies...
Conventional electroencephalography (EEG) and magnetoencephalography (MEG) analysis often rely on a...
It is shown how two of the most common types of feature mapping used for classification of single tr...
It is well established that multiple EEG channels are required for various brain functionality studi...
This paper presents a new filter for EEG Event-Related Potentials that relies on spatio-temporal fea...
© 2018 IEEE. The classification of brain states using neural recordings such as electroencephalograp...
We develop a novel methodology for the single-trial analysis of multichannel time-varying neuroimagi...
The Primary Objective of this research is to implement an automatic method for selecting the most op...
The common spatial pattern analysis (CSP), a frequently utilized feature extraction method in brain-...
We describe our work using linear discrimination of multi-channel electroencephalography for single-...
International audienceBrain-Computer Interfaces (BCI) translate variations in the Electroencephalogr...
We present a method for binary on-line classification of triggered but temporally blurred events tha...