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The HW-TSC's Offline Speech Translation Systems for IWSLT 2021 Evaluation

9 August 2021
Minghan Wang
Yuxia Wang
Chang Su
Jiaxin Guo
Yingtao Zhang
Yujiao Liu
M. Zhang
Shimin Tao
Xingshan Zeng
Liangyou Li
Hao Yang
Ying Qin
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Abstract

This paper describes our work in participation of the IWSLT-2021 offline speech translation task. Our system was built in a cascade form, including a speaker diarization module, an Automatic Speech Recognition (ASR) module and a Machine Translation (MT) module. We directly use the LIUM SpkDiarization tool as the diarization module. The ASR module is trained with three ASR datasets from different sources, by multi-source training, using a modified Transformer encoder. The MT module is pretrained on the large-scale WMT news translation dataset and fine-tuned on the TED corpus. Our method achieves 24.6 BLEU score on the 2021 test set.

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