Phoneme Recognition through Fine Tuning of Phonetic Representations: a Case Study on Luhya Language Varieties
Models pre-trained on multiple languages have shown significant promise for improving speech recognition, particularly for low-resource languages. In this work, we focus on phoneme recognition using Allosaurus, a method for multilingual recognition based on phonetic annotation, which incorporates ph...
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Zusammenfassung: | Models pre-trained on multiple languages have shown significant promise for
improving speech recognition, particularly for low-resource languages. In this
work, we focus on phoneme recognition using Allosaurus, a method for
multilingual recognition based on phonetic annotation, which incorporates
phonological knowledge through a language-dependent allophone layer that
associates a universal narrow phone-set with the phonemes that appear in each
language. To evaluate in a challenging real-world scenario, we curate phone
recognition datasets for Bukusu and Saamia, two varieties of the Luhya language
cluster of western Kenya and eastern Uganda. To our knowledge, these datasets
are the first of their kind. We carry out similar experiments on the dataset of
an endangered Tangkhulic language, East Tusom, a Tibeto-Burman language variety
spoken mostly in India. We explore both zero-shot and few-shot recognition by
fine-tuning using datasets of varying sizes (10 to 1000 utterances). We find
that fine-tuning of Allosaurus, even with just 100 utterances, leads to
significant improvements in phone error rates. |
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DOI: | 10.48550/arxiv.2104.01624 |