Transcription System Using Automatic Speech Recognition for the Japanese Parliament (Diet)

Tatsuya Kawahara
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引用次数: 15

Abstract

This article describes a new automatic transcription system in the Japanese Parliament which deploys our automatic speech recognition (ASR) technology. To achieve high recognition performance in spontaneous meeting speech, we have investigated an efficient training scheme with minimal supervision which can exploit a huge amount of real data. Specifically, we have proposed a lightly-supervised training scheme based on statistical language model transformation, which fills the gap between faithful transcripts of spoken utterances and final texts for documentation. Once this mapping is trained, we no longer need faithful transcripts for training both acoustic and language models. Instead, we can fully exploit the speech and text data available in Parliament as they are. This scheme also realizes a sustainable ASR system which evolves, i.e. update/re-train the models, only with speech and text generated during the system operation. The ASR system has been deployed in the Japanese Parliament since 2010, and consistently achieved character accuracy of nearly 90%, which is useful for streamlining the transcription process.
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基于自动语音识别的日本国会转录系统
本文介绍了在日本国会部署我们的自动语音识别(ASR)技术的一个新的自动转录系统。为了在即兴会议演讲中获得较高的识别性能,我们研究了一种有效的训练方案,该方案可以利用大量的真实数据,在最小的监督下进行训练。具体来说,我们提出了一种基于统计语言模型转换的轻监督训练方案,该方案填补了口头话语忠实文本与最终文本之间的空白。一旦这个映射被训练,我们就不再需要忠实的转录本来训练声学和语言模型。相反,我们可以充分利用议会中可用的语音和文本数据。该方案还实现了一个可持续的ASR系统,该系统仅使用系统运行过程中生成的语音和文本来更新/重新训练模型。自2010年以来,ASR系统已在日本议会部署,并始终实现近90%的字符准确率,这有助于简化转录过程。
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