The wavelet analysis is a powerful tool for analyzing and detecting features of signals characterized by time-dependent statistical properties, as biomedical signals. The identification and the analysis of the components of these signals in the time–frequency domain, give meaningful information about the physiological mechanisms that govern them. This article presents the results of the wavelet analysis applied to the a-wave component of the human electroretinogram. In order to deepen and improve our knowledge about the behavior of the early photoreceptoral response, including the possible activation of interactions and correlations among the photoreceptors, we have detected and identified the stable time–frequency components of the a-wave,...
The study investigates the electrooculograph (EOG) signals of eye movement patterns. The behaviours ...
The study investigates the electrooculograph (EOG) signals of eye movement patterns. The behaviours ...
Abstract: Problem statement: The time frequency analysis of non-stationary signals has been the cons...
The wavelet analysis is a powerful tool for analyzing and detecting features of signals characterize...
The electroretinogram (ERG) is a powerful clinical technique used in clinics around the world to dia...
Electroretinagram (ERG) is the recording of electrical activity of retinal cells elicited by light s...
Feature detection of biomedical signals is crucial for deepening our knowledge of the physiological ...
Most biomedical signals are non-stationary. The knowledge of their frequency content and temporal di...
A comparison among different techniques for human ERG signals processing and classification ( Artic...
The electroretinogram (ERG) is composed of slow (i.e., a-, b-waves) and fast (i.e., oscillatory pote...
The a-wave is one of the main issues of research in the field of ocular electrophysiology, since it ...
The time frequency analysis of non-stationary signals has been the considerable research effort in r...
Copyright © 2014 Mathieu Gauvin et al.This is an open access article distributed under theCreativeCo...
In this study, we describe the identification electroencephalography (EOG) signals of eye movement p...
Wavelet transform (WT) is one of the favored tools for analyzing the biomedical signals. This study ...
The study investigates the electrooculograph (EOG) signals of eye movement patterns. The behaviours ...
The study investigates the electrooculograph (EOG) signals of eye movement patterns. The behaviours ...
Abstract: Problem statement: The time frequency analysis of non-stationary signals has been the cons...
The wavelet analysis is a powerful tool for analyzing and detecting features of signals characterize...
The electroretinogram (ERG) is a powerful clinical technique used in clinics around the world to dia...
Electroretinagram (ERG) is the recording of electrical activity of retinal cells elicited by light s...
Feature detection of biomedical signals is crucial for deepening our knowledge of the physiological ...
Most biomedical signals are non-stationary. The knowledge of their frequency content and temporal di...
A comparison among different techniques for human ERG signals processing and classification ( Artic...
The electroretinogram (ERG) is composed of slow (i.e., a-, b-waves) and fast (i.e., oscillatory pote...
The a-wave is one of the main issues of research in the field of ocular electrophysiology, since it ...
The time frequency analysis of non-stationary signals has been the considerable research effort in r...
Copyright © 2014 Mathieu Gauvin et al.This is an open access article distributed under theCreativeCo...
In this study, we describe the identification electroencephalography (EOG) signals of eye movement p...
Wavelet transform (WT) is one of the favored tools for analyzing the biomedical signals. This study ...
The study investigates the electrooculograph (EOG) signals of eye movement patterns. The behaviours ...
The study investigates the electrooculograph (EOG) signals of eye movement patterns. The behaviours ...
Abstract: Problem statement: The time frequency analysis of non-stationary signals has been the cons...