We investigated change point detection (CPD) in time series composed of harmonic functions driven by Gaussian noise (in EEGs, in particular) and proposed a method of moving average filters in conjunction with wavelet transform. Numerical simulations showed that CPD runs over 90% within the frequency band <40 Hz. This means that detection of structural change points is almost guaranteed in the respective cases. The mean absolute error (MAE) as a measure of performance of the method was below 5%. The method is rather robust against noise. It has been demonstrated that CPD is possible at the noise amplitude exceeding 25% of the amplitude of harmonic functions. In application of the proposed method on the signals, CPD appeared in 74% of the ana...
An analytic wavelet transform, based on Hilbert wavelet pairs, is applied to bivariate time-varying ...
This paper is concerned with detecting the presence of switching behavior in experimentally obtained...
Wavelet packet decomposition is used to investigate the time-varying characteristics of clinical EEG...
This paper describes adaptive time frequency analysis of EEG signals, both in theory as well as in p...
Change point detection is a critical analysis in various scientific fields such as finance, medicine...
International audienceThis paper is aimed at presenting the two main classes of nonstationary signal...
In this study, wavelet transforms and FFT methods, which transform method is better for spectral ana...
Abstract This paper considers the problem of change-point detection for noisy data. Estimation of si...
Bio-medical signal processing is one of the most important techniques of multichannel sensor network...
: In order to define and analyse patterns of activity within the human electroencephalogram (EEG) on...
EEG analysis is used as a tool for medical diagnosis of various diseases related to brain like epile...
The thesis provides novel procedures in the statistical field of change point detection in time seri...
An analytic wavelet transform, based on Hilbert wavelet pairs, is applied to bivariate time-varying ...
International audienceThis paper considers the problem of change-point detection for noisy data. Est...
This paper considers the general problem of detecting change in non-stationary signals using feature...
An analytic wavelet transform, based on Hilbert wavelet pairs, is applied to bivariate time-varying ...
This paper is concerned with detecting the presence of switching behavior in experimentally obtained...
Wavelet packet decomposition is used to investigate the time-varying characteristics of clinical EEG...
This paper describes adaptive time frequency analysis of EEG signals, both in theory as well as in p...
Change point detection is a critical analysis in various scientific fields such as finance, medicine...
International audienceThis paper is aimed at presenting the two main classes of nonstationary signal...
In this study, wavelet transforms and FFT methods, which transform method is better for spectral ana...
Abstract This paper considers the problem of change-point detection for noisy data. Estimation of si...
Bio-medical signal processing is one of the most important techniques of multichannel sensor network...
: In order to define and analyse patterns of activity within the human electroencephalogram (EEG) on...
EEG analysis is used as a tool for medical diagnosis of various diseases related to brain like epile...
The thesis provides novel procedures in the statistical field of change point detection in time seri...
An analytic wavelet transform, based on Hilbert wavelet pairs, is applied to bivariate time-varying ...
International audienceThis paper considers the problem of change-point detection for noisy data. Est...
This paper considers the general problem of detecting change in non-stationary signals using feature...
An analytic wavelet transform, based on Hilbert wavelet pairs, is applied to bivariate time-varying ...
This paper is concerned with detecting the presence of switching behavior in experimentally obtained...
Wavelet packet decomposition is used to investigate the time-varying characteristics of clinical EEG...