Abstract

Vocal acoustic analysis is becoming a useful tool for the classification and recognition of laryngological pathologies. This technique enables a non-invasive and low-cost assessment of voice disorders, allowing a more efficient, fast, and objective diagnosis. In this work, ANN and SVM were experimented on to classify between dysphonic/control and vocal cord paralysis/control. A vector was made up of 4 jitter parameters, 4 shimmer parameters, and a harmonic to noise ratio (HNR), determined from 3 different vowels at 3 different tones, with a total of 81 features. Variable selection and dimension reduction techniques such as hierarchical clustering, multilinear regression analysis and principal component analysis (PCA) was applied. The classification between dysphonic and control was made with an accuracy of 100% for female and male groups with ANN and SVM. For the classification between vocal cords paralysis and control an accuracy of 78,9% was achieved for female group with SVM, and 81,8% for the male group with ANN.

Highlights

  • Vocal Acoustic Analysis is often used for voice disorders assessment and diagnose (Bielamowicz et al, 1996; Brockmann-Bauser, 2011; Pylypowich, & Duff, 2016; Salhi, Mourad, & Cherif, 2010; Teixeira & Fernandes, 2015)

  • The classification between dysphonic and control was made with an accuracy of 100% for female and male groups with Artificial Neural Network (ANN) and Support Vector Machine (SVM)

  • An ANN and the SVM were used for the classification task

Read more

Summary

Introduction

Vocal Acoustic Analysis is often used for voice disorders assessment and diagnose (Bielamowicz et al, 1996; Brockmann-Bauser, 2011; Pylypowich, & Duff, 2016; Salhi, Mourad, & Cherif, 2010; Teixeira & Fernandes, 2015). The advantage of such techniques relies on the non-invasive character of the exam when compared with current practice in medicine, for example, laryngoscopy or stroboscopic exams (Brockmann-Bauser, 2011).

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call