This paper is concerned with detecting the presence of switching behavior in experimentally obtained posturographic data sets by means of a novel algorithm that is based on a combination of wavelet analysis and Hilbert transform. As a test-bed for the algorithm, we first use a switched model of human balance control during quiet standing with known switching behavior in four distinct configurations. We obtain a time-frequency representation of a signal generated by our model system. We are then able to detect manifestations of discontinuities (switchings) in the signal as spiking behavior. The frequency of switchings, measured by means of our algorithm and detected in our models systems, agrees with the frequency of spiking behavior found i...
This paper investigates the application of the Hilbert spectrum (HS), which is a recent tool for the...
The continuous Morlet wavelet transform was used for the analysis of the time-frequency pattern of s...
Linear Time Invariant (LTI) processes can be modelled by means of Auto-Regressive Moving Average (AR...
An analytic wavelet transform, based on Hilbert wavelet pairs, is applied to bivariate time-varying ...
The functions of the brain and cardiovascular system incorporate oscillatory processes at several ti...
An analytic wavelet transform, based on Hilbert wavelet pairs, is applied to bivariate time-varying ...
The preservation of stability and body coordination in humans is assured by the correct working of t...
grantor: University of TorontoThis thesis explores the analysis and modeling of sensori-m...
Human locomotion is controlled by the dynamic interaction between the human brain and spinal cord. A...
We investigated change point detection (CPD) in time series composed of harmonic functions driven by...
International audienceOne of the challenges in analyzing neuronal activity is to correlate discrete ...
The previous study of eyes potential behavior was carried out using Fourier Transform which is found...
International audienceAfter knee or ankle injury, Freeman has proposed a rehabilitation program cons...
This paper analyses a wavelet that arises in the study of myoclonic seizures. The wavelet comes abou...
This book examines theoretical and applied aspects of wavelet analysis in neurophysics, describing i...
This paper investigates the application of the Hilbert spectrum (HS), which is a recent tool for the...
The continuous Morlet wavelet transform was used for the analysis of the time-frequency pattern of s...
Linear Time Invariant (LTI) processes can be modelled by means of Auto-Regressive Moving Average (AR...
An analytic wavelet transform, based on Hilbert wavelet pairs, is applied to bivariate time-varying ...
The functions of the brain and cardiovascular system incorporate oscillatory processes at several ti...
An analytic wavelet transform, based on Hilbert wavelet pairs, is applied to bivariate time-varying ...
The preservation of stability and body coordination in humans is assured by the correct working of t...
grantor: University of TorontoThis thesis explores the analysis and modeling of sensori-m...
Human locomotion is controlled by the dynamic interaction between the human brain and spinal cord. A...
We investigated change point detection (CPD) in time series composed of harmonic functions driven by...
International audienceOne of the challenges in analyzing neuronal activity is to correlate discrete ...
The previous study of eyes potential behavior was carried out using Fourier Transform which is found...
International audienceAfter knee or ankle injury, Freeman has proposed a rehabilitation program cons...
This paper analyses a wavelet that arises in the study of myoclonic seizures. The wavelet comes abou...
This book examines theoretical and applied aspects of wavelet analysis in neurophysics, describing i...
This paper investigates the application of the Hilbert spectrum (HS), which is a recent tool for the...
The continuous Morlet wavelet transform was used for the analysis of the time-frequency pattern of s...
Linear Time Invariant (LTI) processes can be modelled by means of Auto-Regressive Moving Average (AR...