Which utterance types are most suitable to detect hypernasality automatically?

6Citations
Citations of this article
10Readers
Mendeley users who have this article in their library.

Abstract

Featured Application: The results of this study provide key information, both linguistic and technical, to develop a Spanish language hypernasality detection tool which could be used by non-experts and could run on universally available mobile devices. The results may also guide the development of hypernasality detection tools for languages other than Spanish. Abstract: Automatic tools to detect hypernasality have been traditionally designed to analyze sustained vowels exclusively. This is in sharp contrast with clinical recommendations, which consider it necessary to use a variety of utterance types (e.g., repeated syllables, sustained sounds, sentences, etc.) This study explores the feasibility of detecting hypernasality automatically based on speech samples other than sustained vowels. The participants were 39 patients and 39 healthy controls. Six types of utterances were used: counting 1‐to‐10 and repetition of syllable sequences, sustained consonants, sustained vowel, words and sentences. The recordings were obtained, with the help of a mobile app, from Spain, Chile and Ecuador. Multiple acoustic features were computed from each utterance (e.g., MFCC, formant frequency) After a selection process, the best 20 features served to train different classification algorithms. Accuracy was the highest with syllable sequences and also with some words and sentences. Accuracy increased slightly by training the classifiers with between two and three utterances. However, the best results were obtained by combining the results of multiple classifiers. We conclude that protocols for automatic evaluation of hypernasality should include a variety of utterance types. It seems feasible to detect hypernasality automatically with mobile devices.

Cite

CITATION STYLE

APA

Moreno‐torres, I., Lozano, A., Nava, E., & Bermúdez‐de‐alvear, R. (2021). Which utterance types are most suitable to detect hypernasality automatically? Applied Sciences (Switzerland), 11(19). https://doi.org/10.3390/app11198809

Register to see more suggestions

Mendeley helps you to discover research relevant for your work.

Already have an account?

Save time finding and organizing research with Mendeley

Sign up for free