The study of a time-frequency image is often the method of choice to address key issues in cognitive electrophysiology. The quality of the time-frequency representation is crucial for the extraction of robust and relevant features, thus leading to the demand for highly performing spectral estimators. We consider a stochastic model, known as Locally Stationary Processes, based on the modulation in time of a stationary covariance function. The flexibility of the model makes it suitable for a wide range of time-varying signals, in particular EEG signals. Previous works provided the theoretical expression of the mean-square error optimal kernel for the computation of the Wigner-Ville spectrum. The introduction of a novel inference method for th...
This paper investigates the use of linear dynamic models (LDMs) to improve classification of single-...
Coherence is a widely used measure for characterizing linear dependence between a pair of signals. F...
Time-frequency (TF) signal analysis and processing techniques provide adequate tools to investigate ...
This thesis considers statistical methods for non-stationary signals, specifically stochastic modell...
This paper illustrates the improvement in accuracy of classification for electroencephalogram (EEG) ...
A previously proposed model for non-stationary signals is extended in this contribution. The model c...
Locally Stationary Processes (LSPs) in Silverman’s sense, defined by the modulation in time of a sta...
This thesis handles time frequency analysis of EEG signals measured on participants performing the s...
This paper treats estimation of the Wigner-Ville spectrum (WVS) of Gaussian continuous-time stochast...
This paper investigates the multiple windows of the mean squared error optimal time-frequency kernel...
Journal PaperCurrent theories of a time-varying spectrum of a nonstationary process all involve, eit...
International audienceMathematical modeling is a powerful tool that enables researchers to describe ...
This thesis focuses on statistical methods for non-stationary signals. The methods considered or dev...
A number of stochastic models and statistical tests are synthesised to develop a general framework f...
The general spatiotemporal covariance matrix of the background noise in MEG/EEG signals is huge. To ...
This paper investigates the use of linear dynamic models (LDMs) to improve classification of single-...
Coherence is a widely used measure for characterizing linear dependence between a pair of signals. F...
Time-frequency (TF) signal analysis and processing techniques provide adequate tools to investigate ...
This thesis considers statistical methods for non-stationary signals, specifically stochastic modell...
This paper illustrates the improvement in accuracy of classification for electroencephalogram (EEG) ...
A previously proposed model for non-stationary signals is extended in this contribution. The model c...
Locally Stationary Processes (LSPs) in Silverman’s sense, defined by the modulation in time of a sta...
This thesis handles time frequency analysis of EEG signals measured on participants performing the s...
This paper treats estimation of the Wigner-Ville spectrum (WVS) of Gaussian continuous-time stochast...
This paper investigates the multiple windows of the mean squared error optimal time-frequency kernel...
Journal PaperCurrent theories of a time-varying spectrum of a nonstationary process all involve, eit...
International audienceMathematical modeling is a powerful tool that enables researchers to describe ...
This thesis focuses on statistical methods for non-stationary signals. The methods considered or dev...
A number of stochastic models and statistical tests are synthesised to develop a general framework f...
The general spatiotemporal covariance matrix of the background noise in MEG/EEG signals is huge. To ...
This paper investigates the use of linear dynamic models (LDMs) to improve classification of single-...
Coherence is a widely used measure for characterizing linear dependence between a pair of signals. F...
Time-frequency (TF) signal analysis and processing techniques provide adequate tools to investigate ...