Recent advances in machine learning and time series analysis techniques have brought new perspectives to a great number of scientific fields. This thesis contributes applications of such techniques to voice analysis, in an attempt to extract information on the vibration of the vocal folds as such, as well as on the radiated acoustic signal. The data that was analyzed in this work are acoustic recordings, electroglottographic (EGG) signals and transnasal high- speed videoendoscopic images. The data analysis techniques are primarily based on clustering, i.e., grouping of data based on similarity, and sample entropy analysis, i.e., quantifying the degree of irregularity in a given signal. The experiments were conducted so as to provide data fo...
International audienceGlottal closure instant (GCI) estimation is a well-studied topic that plays a ...
Objectives: To confirm the data reported in our previous studies on the analysis of the variability ...
A multichannel dataset comprising high-speed videoendoscopy images, and electroglottography and free...
Recent advances in machine learning and time series analysis techniques have brought new perspective...
The human voice is a product of an intricate biophysical system. The complexity of this system enabl...
Background: Until now, it has been impossible to discriminate a pathology of the vocal folds and, in...
The quantitative analysis of vocal disorders by nonlinear signal processing methods has been extensi...
In a recent study we introduced a new approach for analysis of the electroglottographic (ECG) signal...
International audienceA human vocal production is characterized by the use of different laryngeal me...
Approximate Entropy is a method which provides a model independent nonlinear measure (the index ApEn...
Electrolaryngography (Lx) and electroglottography (EGG) are non-invasive methods used to assess huma...
International audienceElectroglottography is a common method for providing noninvasive measurements ...
International audienceThis paper introduces an original variant of recurrence analysis to quantify t...
Gunnar Rugheimer Prize for Best Poster of PEVOC 13International audienceComplete Vocal Technique (CV...
International audienceGlottal closure instant (GCI) estimation is a well-studied topic that plays a ...
Objectives: To confirm the data reported in our previous studies on the analysis of the variability ...
A multichannel dataset comprising high-speed videoendoscopy images, and electroglottography and free...
Recent advances in machine learning and time series analysis techniques have brought new perspective...
The human voice is a product of an intricate biophysical system. The complexity of this system enabl...
Background: Until now, it has been impossible to discriminate a pathology of the vocal folds and, in...
The quantitative analysis of vocal disorders by nonlinear signal processing methods has been extensi...
In a recent study we introduced a new approach for analysis of the electroglottographic (ECG) signal...
International audienceA human vocal production is characterized by the use of different laryngeal me...
Approximate Entropy is a method which provides a model independent nonlinear measure (the index ApEn...
Electrolaryngography (Lx) and electroglottography (EGG) are non-invasive methods used to assess huma...
International audienceElectroglottography is a common method for providing noninvasive measurements ...
International audienceThis paper introduces an original variant of recurrence analysis to quantify t...
Gunnar Rugheimer Prize for Best Poster of PEVOC 13International audienceComplete Vocal Technique (CV...
International audienceGlottal closure instant (GCI) estimation is a well-studied topic that plays a ...
Objectives: To confirm the data reported in our previous studies on the analysis of the variability ...
A multichannel dataset comprising high-speed videoendoscopy images, and electroglottography and free...