An analytic wavelet transform, based on Hilbert wavelet pairs, is applied to bivariate time-varying spectral estimation for neurophysiological time series. Under the assumption of an underlying block stationary process, both single-trial and ensemble studies are amenable to this method. A bootstrap procedure, which samples with replacement blocks centered around the events of interest, is proposed to identify time points for which the event-averaged magnitude squared coherence is non-zero. Clinical data sets are used to compare the wavelet-based technique with the classical Fourier-based spectral measures and highlight its ability to detect time-varying coherence and phase properties
Background. Today, when most processes and phenomena have a periodic structure that is not always ho...
In this study, wavelet transforms and FFT methods, which transform method is better for spectral ana...
Wavelets provide the flexibility to analyse stochastic processes at different scales. Here, we apply...
An analytic wavelet transform, based on Hilbert wavelet pairs, is applied to bivariate time-varying ...
An analytic wavelet transform, based on Hilbert wavelet pairs, is applied to bivariate time-varying ...
A method of single-trial coherence analysis is presented, through the application of continuous mult...
Wavelet analysis has become an emerging method in a wide range of applications with non-stationary d...
The study of the correlations that may exist between neurophysiological signals is at the heart of m...
Various time-frequency methods have been used to study time-varying properties of non-stationary neu...
The study of the correlations that may exist between neurophysiological signals is at the heart of m...
The study of the correlations that may exist between neurophysiological signals is at the heart of m...
Intrinsic wavelet transforms and denoising methods are introduced for the purpose of time-varying Fo...
The functional integration between the different parts of the brain is usually quanti¿ed through a m...
A method of single-trial coherence analysis is presented, through the application of continuous mult...
This paper develops a method for estimating the spectrum of a stationary process using time series t...
Background. Today, when most processes and phenomena have a periodic structure that is not always ho...
In this study, wavelet transforms and FFT methods, which transform method is better for spectral ana...
Wavelets provide the flexibility to analyse stochastic processes at different scales. Here, we apply...
An analytic wavelet transform, based on Hilbert wavelet pairs, is applied to bivariate time-varying ...
An analytic wavelet transform, based on Hilbert wavelet pairs, is applied to bivariate time-varying ...
A method of single-trial coherence analysis is presented, through the application of continuous mult...
Wavelet analysis has become an emerging method in a wide range of applications with non-stationary d...
The study of the correlations that may exist between neurophysiological signals is at the heart of m...
Various time-frequency methods have been used to study time-varying properties of non-stationary neu...
The study of the correlations that may exist between neurophysiological signals is at the heart of m...
The study of the correlations that may exist between neurophysiological signals is at the heart of m...
Intrinsic wavelet transforms and denoising methods are introduced for the purpose of time-varying Fo...
The functional integration between the different parts of the brain is usually quanti¿ed through a m...
A method of single-trial coherence analysis is presented, through the application of continuous mult...
This paper develops a method for estimating the spectrum of a stationary process using time series t...
Background. Today, when most processes and phenomena have a periodic structure that is not always ho...
In this study, wavelet transforms and FFT methods, which transform method is better for spectral ana...
Wavelets provide the flexibility to analyse stochastic processes at different scales. Here, we apply...