2023
DOI: 10.1109/access.2023.3317236
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Fine-Tuning Self-Supervised Learning Models for End-to-End Pronunciation Scoring

Ahmed I. Zahran,
Aly A. Fahmy,
Khaled T. Wassif
et al.

Abstract: Automatic pronunciation assessment models are regularly used in language learning applications. Common methodologies for pronunciation assessment use feature-based approaches, such as the Goodness-of-Pronunciation (GOP) approach, or deep learning speech recognition models to perform speech assessment. With the rise of transformers, pre-trained self-supervised learning (SSL) models have been utilized to extract contextual speech representations, showing improvements in various downstream tasks. In this study, w… Show more

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