Automatic Speech Recognition for Uyghur through Multilingual Acoustic Modeling

LREC 2020 Ayimunishagu AbulimitiTanja Schultz

Low-resource languages suffer from lower performance of Automatic Speech Recognition (ASR) system due to the lack of data. As a common approach, multilingual training has been applied to achieve more context coverage and has shown better performance over the monolingual training (Heigold et al., 2013)... (read more)

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