Breaking the Data Barrier: Towards Robust Speech Translation via Adversarial Stability Training

September 25, 2019 ยท Declared Dead ยท ๐Ÿ› International Workshop on Spoken Language Translation

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Authors Qiao Cheng, Meiyuan Fang, Yaqian Han, Jin Huang, Yitao Duan arXiv ID 1909.11430 Category cs.CL: Computation & Language Cross-listed eess.AS Citations 18 Venue International Workshop on Spoken Language Translation Last Checked 4 months ago
Abstract
In a pipeline speech translation system, automatic speech recognition (ASR) system will transmit errors in recognition to the downstream machine translation (MT) system. A standard machine translation system is usually trained on parallel corpus composed of clean text and will perform poorly on text with recognition noise, a gap well known in speech translation community. In this paper, we propose a training architecture which aims at making a neural machine translation model more robust against speech recognition errors. Our approach addresses the encoder and the decoder simultaneously using adversarial learning and data augmentation, respectively. Experimental results on IWSLT2018 speech translation task show that our approach can bridge the gap between the ASR output and the MT input, outperforms the baseline by up to 2.83 BLEU on noisy ASR output, while maintaining close performance on clean text.
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