Abstract

Our previous studies demonstrated that it is possible to perform the classification of both simulated pressed and actual vocally fatigued voice productions versus vocally healthy productions through the pattern recognition of sEMG signals obtained from subjects’ anterior neck. In these studies, the commonly accepted Vocal Fatigue Index factor 1 (VFI-1) was used for the ground-truth labeling of normal versus vocally fatigued voice productions. Through recent experiments, other factors with potential effects on classification were also studied, such as sEMG signal normalization, and data imbalance—i.e., the large difference between the number of vocally healthy subjects and of those with vocal fatigue. Therefore, in this paper, we present a much improved classification method derived from an extensive study of the effects of such extrinsic factors on the classification of vocal fatigue. The study was performed on a large number of sEMG signals from 88 vocally healthy and fatigued subjects including student teachers and teachers and it led to important conclusions on how to optimize a machine learning approach for the early detection of vocal fatigue.

Highlights

  • Vocal fatigue is a leading vocal symptom among teachers that, if evolving into a chronic voice disorder, can threaten a teacher’s career [1]

  • We addressed the problem of data imbalance to improve the classification of vocal fatigue

  • We addressed some of the most critical challenges for adopting machine learning to detect vocal fatigue

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Summary

Introduction

Vocal fatigue is a leading vocal symptom among teachers that, if evolving into a chronic voice disorder, can threaten a teacher’s career [1]. Teachers with a history of voice problems as student teachers and early career teachers are at the highest risk of developing a voice disorder [2,3]. To fill a gap in the assessment of vocal fatigue, the Vocal Fatigue Index (VFI) [5] has been developed to determine self-reported levels of vocal fatigue in three factors related to tiredness of voice and the avoidance of voice use, physical discomfort with voice use, and the improvement of symptoms with rest. Vocal fatigue is related to perceived vocal effort and possible laryngeal muscular and/or tissue fatigue [5]

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