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Mai Ho'om\=auna i ka 'Ai: Language Models Improve Automatic Speech Recognition in Hawaiian

Authors :
Chaparala, Kaavya
Zarrella, Guido
Fischer, Bruce Torres
Kimura, Larry
Jones, Oiwi Parker
Publication Year :
2024

Abstract

In this paper we address the challenge of improving Automatic Speech Recognition (ASR) for a low-resource language, Hawaiian, by incorporating large amounts of independent text data into an ASR foundation model, Whisper. To do this, we train an external language model (LM) on ~1.5M words of Hawaiian text. We then use the LM to rescore Whisper and compute word error rates (WERs) on a manually curated test set of labeled Hawaiian data. As a baseline, we use Whisper without an external LM. Experimental results reveal a small but significant improvement in WER when ASR outputs are rescored with a Hawaiian LM. The results support leveraging all available data in the development of ASR systems for underrepresented languages.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2404.03073
Document Type :
Working Paper