TL;DR
This paper introduces a language-independent, automatic method for assessing vowel articulation in dysarthric speech, reducing manual effort and maintaining high correlation with expert ratings across multiple languages.
Contribution
It presents a novel automatic pipeline that detects corner vowels without prior language or content knowledge, enabling efficient and reliable vowel articulation assessment in PD speech.
Findings
High correlation between automatic and manual features
Comparable correlation with expert ratings
Validated across Finnish, Spanish, and English datasets
Abstract
Imprecise vowel articulation can be observed in people with Parkinson's disease (PD). Acoustic features measuring vowel articulation have been demonstrated to be effective indicators of PD in its assessment. Standard clinical vowel articulation features of vowel working space area (VSA), vowel articulation index (VAI) and formants centralization ratio (FCR), are derived the first two formants of the three corner vowels /a/, /i/ and /u/. Conventionally, manual annotation of the corner vowels from speech data is required before measuring vowel articulation. This process is time-consuming. The present work aims to reduce human effort in clinical analysis of PD speech by proposing an automatic pipeline for vowel articulation assessment. The method is based on automatic corner vowel detection using a language universal phoneme recognizer, followed by statistical analysis of the formant data.…
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