Automatic speech and singing classification in ambulatory recordings for normal and disordered voices

  • Ortiz A
  • Toles L
  • Marks K
  • et al.
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Abstract

Ambulatory voice monitoring is a promising tool for investigating phonotraumatic vocal hyperfunction (PVH), associated with the development of vocal fold lesions. Since many patients with PVH are professional vocalists, a classifier was developed to better understand phonatory mechanisms during speech and singing. Twenty singers with PVH and 20 matched healthy controls were monitored with a neck-surface accelerometer–based ambulatory voice monitor. An expert-labeled ground truth data set was used to train a logistic regression on 15 subject-pairs with fundamental frequency and autocorrelation peak amplitude as input features. Overall classification accuracy of 94.2% was achieved on the held-out test set.

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APA

Ortiz, A. J., Toles, L. E., Marks, K. L., Capobianco, S., Mehta, D. D., Hillman, R. E., & Van Stan, J. H. (2019). Automatic speech and singing classification in ambulatory recordings for normal and disordered voices. The Journal of the Acoustical Society of America, 146(1), EL22–EL27. https://doi.org/10.1121/1.5115804

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