End-to-End Speech Translation of Arabic to English Broadcast News

Fethi Bougares, Salim Jouili
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Abstract

Speech translation (ST) is the task of directly translating acoustic speech signals in a source language into text in a foreign language. ST task has been addressed, for a long time, using a pipeline approach with two modules : first an Automatic Speech Recognition (ASR) in the source language followed by a text-to-text Machine translation (MT). In the past few years, we have seen a paradigm shift towards the end-to-end approaches using sequence-to-sequence deep neural network models. This paper presents our efforts towards the development of the first Broadcast News end-to-end Arabic to English speech translation system. Starting from independent ASR and MT LDC releases, we were able to identify about 92 hours of Arabic audio recordings for which the manual transcription was also translated into English at the segment level. These data was used to train and compare pipeline and end-to-end speech translation systems under multiple scenarios including transfer learning and data augmentation techniques.
阿拉伯语到英语广播新闻的端到端语音翻译
语音翻译(ST)是将源语言中的声学语音信号直接翻译成外语文本的任务。长期以来,使用两个模块的流水线方法解决了ST任务:首先是源语言的自动语音识别(ASR),然后是文本到文本的机器翻译(MT)。在过去的几年中,我们已经看到使用序列到序列深度神经网络模型的端到端方法的范式转变。本文介绍了我们为开发首个广播新闻端到端阿拉伯语到英语语音翻译系统所做的努力。从独立的ASR和MT LDC版本开始,我们能够识别出大约92小时的阿拉伯语录音,这些录音的手动转录也在片段级别上被翻译成英语。这些数据用于在多种场景下训练和比较管道和端到端语音翻译系统,包括迁移学习和数据增强技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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