NAIST's Machine Translation Systems for IWSLT 2020 Conversational Speech Translation Task

WS 2020  ·  Ryo Fukuda, Katsuhito Sudoh, Satoshi Nakamura ·

This paper describes NAIST{'}s NMT system submitted to the IWSLT 2020 conversational speech translation task. We focus on the translation disfluent speech transcripts that include ASR errors and non-grammatical utterances. We tried a domain adaptation method by transferring the styles of out-of-domain data (United Nations Parallel Corpus) to be like in-domain data (Fisher transcripts). Our system results showed that the NMT model with domain adaptation outperformed a baseline. In addition, slight improvement by the style transfer was observed.

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