ASR model trained on 6.33 hours of Ikema field data achieves 15% character error rate and reduces transcription time and cognitive load.
Automatic Speech Recognition for Documenting Endangered Languages: Case Study of Ikema Miyakoan
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abstract
Language endangerment poses a major challenge to linguistic diversity worldwide, and technological advances have opened new avenues for documentation and revitalization. Among these, automatic speech recognition (ASR) has shown increasing potential to assist in the transcription of endangered language data. This study focuses on Ikema, a severely endangered Ryukyuan language spoken in Okinawa, Japan, with approximately 1,300 remaining speakers, most of whom are over 60 years old. We present an ongoing effort to develop an ASR system for Ikema based on field recordings. Specifically, we (1) construct a 6.33-hour speech corpus from field recordings, (2) train an ASR model that achieves a character error rate as low as 15%, and (3) evaluate the impact of ASR assistance on the efficiency of speech transcription. Our results demonstrate that ASR integration can substantially reduce transcription time and cognitive load, offering a practical pathway toward scalable, technology-supported documentation of endangered languages.
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Automatic Speech Recognition for Documenting Endangered Languages: Case Study of Ikema Miyakoan
ASR model trained on 6.33 hours of Ikema field data achieves 15% character error rate and reduces transcription time and cognitive load.