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Digital enhancement of pronunciation assessment: Automated speech recognition and human ratersDigital enhancement of pronunciation assessment: Automated speech recognition and human raters

Other Titles
Digital enhancement of pronunciation assessment: Automated speech recognition and human raters
Authors
김미란
Issue Date
Jun-2023
Publisher
한국음성학회
Keywords
English pronunciation assessment; automated speech recognition; digital tools; Whisper; text-to-speech (TTS); speech-to-text (STT); word error rate
Citation
말소리와 음성과학, v.15, no.2, pp 13 - 20
Pages
8
Indexed
KCI
Journal Title
말소리와 음성과학
Volume
15
Number
2
Start Page
13
End Page
20
URI
https://scholarworks.gnu.ac.kr/handle/sw.gnu/59919
DOI
10.13064/KSSS.2023.15.2.013
ISSN
2005-8063
2586-5854
Abstract
This study explores the potential of automated speech recognition (ASR) in assessing English learners’ pronunciation. We employed ASR technology, acknowledged for its impartiality and consistent results, to analyze speech audio files, including synthesized speech, both native-like English and Korean-accented English, and speech recordings from a native English speaker. Through this analysis, we establish baseline values for the word error rate (WER). These were then compared with those obtained for human raters in perception experiments that assessed the speech productions of 30 first-year college students before and after taking a pronunciation course. Our sub-group analyses revealed positive training effects for Whisper, an ASR tool, and human raters, and identified distinct human rater strategies in different assessment aspects, such as proficiency, intelligibility, accuracy, and comprehensibility, that were not observed in ASR. Despite such challenges as recognizing accented speech traits, our findings suggest that digital tools such as ASR can streamline the pronunciation assessment process. With ongoing advancements in ASR technology, its potential as not only an assessment aid but also a self-directed learning tool for pronunciation feedback merits further exploration.
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