End-to-End Simultaneous Speech Translation with Pretraining and Distillation: Huawei Noah’s System for AutoSimTranS 2022

Xingshan Zeng, Pengfei Li, Liangyou Li, Qun Liu
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引用次数: 2

Abstract

This paper describes the system submitted to AutoSimTrans 2022 from Huawei Noah’s Ark Lab, which won the first place in the audio input track of the Chinese-English translation task. Our system is based on RealTranS, an end-to-end simultaneous speech translation model. We enhance the model with pretraining, by initializing the acoustic encoder with ASR encoder, and the semantic encoder and decoder with NMT encoder and decoder, respectively. To relieve the data scarcity, we further construct pseudo training corpus as a kind of knowledge distillation with ASR data and the pretrained NMT model. Meanwhile, we also apply several techniques to improve the robustness and domain generalizability, including punctuation removal, token-level knowledge distillation and multi-domain finetuning. Experiments show that our system significantly outperforms the baselines at all latency and also verify the effectiveness of our proposed methods.
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基于预训练和蒸馏的端到端同步语音翻译:华为Noah的AutoSimTranS系统2022
本文介绍了华为诺亚方舟实验室提交给AutoSimTrans 2022的系统,该系统在汉英翻译任务的音频输入轨道中获得了第一名。我们的系统基于RealTranS,一个端到端同步语音翻译模型。我们通过预训练来增强模型,用ASR编码器初始化声学编码器,用NMT编码器和解码器分别初始化语义编码器和解码器。为了缓解数据的稀缺性,我们进一步利用ASR数据和预训练的NMT模型构建了伪训练语料库,作为一种知识蒸馏。同时,我们还采用了一些技术来提高鲁棒性和领域泛化性,包括标点符号去除、标记级知识蒸馏和多领域微调。实验表明,我们的系统在所有延迟下都明显优于基线,也验证了我们所提出方法的有效性。
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End-to-End Simultaneous Speech Translation with Pretraining and Distillation: Huawei Noah’s System for AutoSimTranS 2022 Findings of the Third Workshop on Automatic Simultaneous Translation BIT-Xiaomi’s System for AutoSimTrans 2022 System Description on Automatic Simultaneous Translation Workshop System Description on Third Automatic Simultaneous Translation Workshop
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