A Gaussian mixture classifier model to differentiate respiratory symptoms using phonated /ɑː/ sounds

TitleA Gaussian mixture classifier model to differentiate respiratory symptoms using phonated /ɑː/ sounds
Publication TypeConference Paper
Year of Publication2022
AuthorsBT B, Hee H.I., Ming C., Lin Y., Priyadarshinee P., Clarke C.J., Herremans D., Chen J.M.
Conference NameThe 18th Australasian International Conference on Speech Science and Technology (SST)
Date Published12/2022
PublisherASSTA
Conference LocationCanberra, Australia
Abstract

An audio-based classification model that differentiates between healthy vs pathological respiratory symptoms using acoustic features extracted from phonated /ɑː/ sounds is presented. For this, a new dataset of phonated /ɑː/ sounds, together with a clinician’s diagnosis, was compiled and a Gaussian Mixture Model (GMM) using Mel-Frequency Cepstral Coefficients (MFCCs) classifier was used. Despite no significant differences in mean values of the fundamental and formant frequency (F0, F1, F2, and F3) distribution for /ɑː/ sounds retrieved from healthy vs pathological populations, our /ɑː/ sound model trained using MFCCs resulted in an accuracy of 81.92% when compared against clinician’s diagnosis.

URLhttps://sst2022.com/a-gaussian-mixture-classifier-model-to-differentiate-respiratory-symptoms-using-phonated-a%cb%90-sounds/
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