2024
DOI: 10.1038/s41598-024-64848-1
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Multilingual end-to-end ASR for low-resource Turkic languages with common alphabets

Akbayan Bekarystankyzy,
Orken Mamyrbayev,
Mateus Mendes
et al.

Abstract: To obtain a reliable and accurate automatic speech recognition (ASR) machine learning model, it is necessary to have sufficient audio data transcribed, for training. Many languages in the world, especially the agglutinative languages of the Turkic family, suffer from a lack of this type of data. Many studies have been conducted in order to obtain better models for low-resource languages, using different approaches. The most popular approaches include multilingual training and transfer learning. In this study, … Show more

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