The amplitude and latency of single-trial EEG/MEG signals may provide valuable information concerning human brain functioning. In this article we propose a new method to reliably estimate single-trial amplitude and latency of EEG/MEG signals. The advantages of the method are fourfold. First, no a-priori specified template function is required. Second, the method allows for multiple signals that may vary independently in amplitude and/or latency. Third, the method is less sensitive to noise as it models data with a parsimonious set of basis functions. Finally, the method is very fast since it is based on an iterative linear least squares algorithm. A simulation study shows that the method yields reliable estimates under different levels of l...
International audienceExtracting information from multitrial magnetoencephalography or electroenceph...
A maximum-likelihood-based algorithm is presented for reducing the effects of spatially colored nois...
The general spatiotemporal covariance matrix of the background noise in MEG/EEG signals is huge. To ...
The amplitude and latency of single-trial EEG/MEG signals may provide valuable information concernin...
The amplitude and latency of single-trial EEG/MEG signals may provide valuable information concernin...
Both amplitude and latency of single-trial EEG/MEG recordings provide valuable information regarding...
Both amplitude and latency of single-trial EEG/MEG recordings provide valuable information regarding...
Event-related potentials (ERPs) are usually obtained by averaging thus neglecting the trial-to-trial...
Electroencephalograms (EEGs) measure a brain signal that contains abundant information about the hum...
The standard procedure to determine the brain response from a multitrial evoked magnetoencephalograp...
Objective When extracting information from electromagnetic (EM) brain function through recordings s...
Brain activities related to cognitive functions, such as attention, occur with unknown and variable ...
It is desirable to determine from electroencephalography (EEG) or magnetoencephalography (MEG) the t...
Contains fulltext : 138699pre.pdf (preprint version ) (Open Access)When making sta...
Time-frequency (TF) signal analysis and processing techniques provide adequate tools to investigate ...
International audienceExtracting information from multitrial magnetoencephalography or electroenceph...
A maximum-likelihood-based algorithm is presented for reducing the effects of spatially colored nois...
The general spatiotemporal covariance matrix of the background noise in MEG/EEG signals is huge. To ...
The amplitude and latency of single-trial EEG/MEG signals may provide valuable information concernin...
The amplitude and latency of single-trial EEG/MEG signals may provide valuable information concernin...
Both amplitude and latency of single-trial EEG/MEG recordings provide valuable information regarding...
Both amplitude and latency of single-trial EEG/MEG recordings provide valuable information regarding...
Event-related potentials (ERPs) are usually obtained by averaging thus neglecting the trial-to-trial...
Electroencephalograms (EEGs) measure a brain signal that contains abundant information about the hum...
The standard procedure to determine the brain response from a multitrial evoked magnetoencephalograp...
Objective When extracting information from electromagnetic (EM) brain function through recordings s...
Brain activities related to cognitive functions, such as attention, occur with unknown and variable ...
It is desirable to determine from electroencephalography (EEG) or magnetoencephalography (MEG) the t...
Contains fulltext : 138699pre.pdf (preprint version ) (Open Access)When making sta...
Time-frequency (TF) signal analysis and processing techniques provide adequate tools to investigate ...
International audienceExtracting information from multitrial magnetoencephalography or electroenceph...
A maximum-likelihood-based algorithm is presented for reducing the effects of spatially colored nois...
The general spatiotemporal covariance matrix of the background noise in MEG/EEG signals is huge. To ...