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The AFRL IWSLT 2020 Systems: Work-From-Home Edition

机译:AFRL IWSLT 2020系统:在家工作版

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This report summarizes the Air Force Research Laboratory (AFRL) submission to the offline spoken language translation (SLT) task as part of the IWSLT 2020 evaluation campaign. As in previous years, we chose to adopt the cascade approach of using separate systems to perform speech activity detection, automatic speech recognition, sentence segmentation, and machine translation. All systems were neural based, including a fully-connected neural network for speech activity detection, a Kaldi factorized time delay neural network with recurrent neural network (RNN) language model rescoring for speech recognition, a bidirectional RNN with attention mechanism for sentence segmentation, and transformer networks trained with OpenNMT and Marian for machine translation. Our primary submission yielded BLEU scores of 21.28 on tst2019 and 23.33 ontst2020.
机译:本报告总结了作为IWSLT 2020评估活动一部分的空军研究实验室(AFRL)向脱机口语翻译(SLT)任务提交的内容。与往年一样,我们选择采用级联方法,即使用单独的系统来执行语音活动检测,自动语音识别,句子分割和机器翻译。所有系统都是基于神经的,包括用于语音活动检测的全连接神经网络,用于语音识别的带有递归神经网络(RNN)语言模型的Kaldi分解时延神经网络,具有用于句子分割的注意力机制的双向RNN,以及受OpenNMT和Marian培训的变压器网络,用于机器翻译。我们的初次提交在tst2019上获得了21.28的BLEU评分,2020年tst2020上得到了23.33的BLEU评分。

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