4,465 research outputs found
Voice pathologies : the most comum features and classification tools
Speech pathologies are quite common in society, however the exams that exist are invasive, making them uncomfortable for patients and depending on the experience of the clinician who performs the assessment. Hence the need to develop non-invasive methods, which allow objective and efficient analysis. Taking this need into account in this work, the most promising list of features and classifiers was identified. As features, jitter, shimmer, HNR, LPC, PLP, and MFCC were identified and as classifiers CNN, RNN and LSTM. This study intends to develop a device to support medical decision, however this article already presents the system interface.info:eu-repo/semantics/publishedVersio
Exploiting Nonlinear Recurrence and Fractal Scaling Properties for Voice Disorder Detection
Background: Voice disorders affect patients profoundly, and acoustic tools can potentially measure voice function objectively. Disordered sustained vowels exhibit wide-ranging phenomena, from nearly periodic to highly complex, aperiodic vibrations, and increased "breathiness". Modelling and surrogate data studies have shown significant nonlinear and non-Gaussian random properties in these sounds. Nonetheless, existing tools are limited to analysing voices displaying near periodicity, and do not account for this inherent biophysical nonlinearity and non-Gaussian randomness, often using linear signal processing methods insensitive to these properties. They do not directly measure the two main biophysical symptoms of disorder: complex nonlinear aperiodicity, and turbulent, aeroacoustic, non-Gaussian randomness. Often these tools cannot be applied to more severe disordered voices, limiting their clinical usefulness.

Methods: This paper introduces two new tools to speech analysis: recurrence and fractal scaling, which overcome the range limitations of existing tools by addressing directly these two symptoms of disorder, together reproducing a "hoarseness" diagram. A simple bootstrapped classifier then uses these two features to distinguish normal from disordered voices.

Results: On a large database of subjects with a wide variety of voice disorders, these new techniques can distinguish normal from disordered cases, using quadratic discriminant analysis, to overall correct classification performance of 91.8% plus or minus 2.0%. The true positive classification performance is 95.4% plus or minus 3.2%, and the true negative performance is 91.5% plus or minus 2.3% (95% confidence). This is shown to outperform all combinations of the most popular classical tools.

Conclusions: Given the very large number of arbitrary parameters and computational complexity of existing techniques, these new techniques are far simpler and yet achieve clinically useful classification performance using only a basic classification technique. They do so by exploiting the inherent nonlinearity and turbulent randomness in disordered voice signals. They are widely applicable to the whole range of disordered voice phenomena by design. These new measures could therefore be used for a variety of practical clinical purposes.

COMPARING ACOUSTIC GLOTTAL FEATURE EXTRACTION METHODS WITH SIMULTANEOUSLY RECORDED HIGH-SPEED VIDEO FEATURES FOR CLINICALLY OBTAINED DATA
Accurate methods for glottal feature extraction include the use of high-speed video imaging (HSVI). There have been previous attempts to extract these features with the acoustic recording. However, none of these methods compare their results with an objective method, such as HSVI. This thesis tests these acoustic methods against a large diverse population of 46 subjects. Two previously studied acoustic methods, as well as one introduced in this thesis, were compared against two video methods, area and displacement for open quotient (OQ) estimation. The area comparison proved to be somewhat ambiguous and challenging due to thresholding effects. The displacement comparison, which is based on glottal edge tracking, proved to be a more robust comparison method than the area. The first acoustic methods OQ estimate had a relatively small average error of 8.90% and the second method had a relatively large average error of -59.05% compared to the displacement OQ. The newly proposed method had a relatively small error of -13.75% when compared to the displacements OQ. There was some success even though there was relatively high error with the acoustic methods, however, they may be utilized to augment the features collected by HSVI for a more accurate glottal feature estimation
Models and analysis of vocal emissions for biomedical applications
This book of Proceedings collects the papers presented at the 3rd International Workshop on Models and Analysis of Vocal Emissions for Biomedical Applications, MAVEBA 2003, held 10-12 December 2003, Firenze, Italy. The workshop is organised every two years, and aims to stimulate contacts between specialists active in research and industrial developments, in the area of voice analysis for biomedical applications. The scope of the Workshop includes all aspects of voice modelling and analysis, ranging from fundamental research to all kinds of biomedical applications and related established and advanced technologies
Framework for data quality in knowledge discovery tasks
Actualmente la explosión de datos es tendencia en el universo digital debido a los
avances en las tecnologías de la información. En este sentido, el descubrimiento
de conocimiento y la minería de datos han ganado mayor importancia debido a
la gran cantidad de datos disponibles. Para un exitoso proceso de descubrimiento
de conocimiento, es necesario preparar los datos. Expertos afirman que la fase de
preprocesamiento de datos toma entre un 50% a 70% del tiempo de un proceso de
descubrimiento de conocimiento.
Herramientas software basadas en populares metodologías para el descubrimiento
de conocimiento ofrecen algoritmos para el preprocesamiento de los datos.
Según el cuadrante mágico de Gartner de 2018 para ciencia de datos y plataformas
de aprendizaje automático, KNIME, RapidMiner, SAS, Alteryx, y H20.ai son las
mejores herramientas para el desucrimiento del conocimiento. Estas herramientas
proporcionan diversas técnicas que facilitan la evaluación del conjunto de datos,
sin embargo carecen de un proceso orientado al usuario que permita abordar los
problemas en la calidad de datos. Adem´as, la selección de las técnicas adecuadas
para la limpieza de datos es un problema para usuarios inexpertos, ya que estos
no tienen claro cuales son los métodos más confiables.
De esta forma, la presente tesis doctoral se enfoca en abordar los problemas
antes mencionados mediante: (i) Un marco conceptual que ofrezca un proceso
guiado para abordar los problemas de calidad en los datos en tareas de descubrimiento
de conocimiento, (ii) un sistema de razonamiento basado en casos
que recomiende los algoritmos adecuados para la limpieza de datos y (iii) una ontología que representa el conocimiento de los problemas de calidad en los datos
y los algoritmos de limpieza de datos. Adicionalmente, esta ontología contribuye
en la representacion formal de los casos y en la fase de adaptación, del sistema de
razonamiento basado en casos.The creation and consumption of data continue to grow by leaps and bounds. Due
to advances in Information and Communication Technologies (ICT), today the
data explosion in the digital universe is a new trend. The Knowledge Discovery
in Databases (KDD) gain importance due the abundance of data. For a successful
process of knowledge discovery is necessary to make a data treatment. The
experts affirm that preprocessing phase take the 50% to 70% of the total time of
knowledge discovery process.
Software tools based on Knowledge Discovery Methodologies offers algorithms
for data preprocessing. According to Gartner 2018 Magic Quadrant for
Data Science and Machine Learning Platforms, KNIME, RapidMiner, SAS, Alteryx
and H20.ai are the leader tools for knowledge discovery. These software
tools provide different techniques and they facilitate the evaluation of data analysis,
however, these software tools lack any kind of guidance as to which techniques
can or should be used in which contexts. Consequently, the use of suitable data
cleaning techniques is a headache for inexpert users. They have no idea which
methods can be confidently used and often resort to trial and error.
This thesis presents three contributions to address the mentioned problems:
(i) A conceptual framework to provide the user a guidance to address data quality
issues in knowledge discovery tasks, (ii) a Case-based reasoning system to
recommend the suitable algorithms for data cleaning, and (iii) an Ontology that
represent the knowledge in data quality issues and data cleaning methods. Also,
this ontology supports the case-based reasoning system for case representation
and reuse phase.Programa Oficial de Doctorado en Ciencia y Tecnología InformáticaPresidente: Fernando Fernández Rebollo.- Secretario: Gustavo Adolfo Ramírez.- Vocal: Juan Pedro Caraça-Valente Hernánde
Models and Analysis of Vocal Emissions for Biomedical Applications
The Models and Analysis of Vocal Emissions with Biomedical Applications (MAVEBA) workshop came into being in 1999 from the particularly felt need of sharing know-how, objectives and results between areas that until then seemed quite distinct such as bioengineering, medicine and singing. MAVEBA deals with all aspects concerning the study of the human voice with applications ranging from the neonate to the adult and elderly. Over the years the initial issues have grown and spread also in other aspects of research such as occupational voice disorders, neurology, rehabilitation, image and video analysis. MAVEBA takes place every two years always in Firenze, Italy
Models and Analysis of Vocal Emissions for Biomedical Applications
The International Workshop on Models and Analysis of Vocal Emissions for Biomedical Applications (MAVEBA) came into being in 1999 from the particularly felt need of sharing know-how, objectives and results between areas that until then seemed quite distinct such as bioengineering, medicine and singing. MAVEBA deals with all aspects concerning the study of the human voice with applications ranging from the neonate to the adult and elderly. Over the years the initial issues have grown and spread also in other aspects of research such as occupational voice disorders, neurology, rehabilitation, image and video analysis. MAVEBA takes place every two years always in Firenze, Italy
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