Investigation of multilingual deep neural networks for spoken term detection

K. Knill, M. Gales, S. Rath, P. Woodland, Chao Zhang, Shi-Xiong Zhang
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引用次数: 92

Abstract

The development of high-performance speech processing systems for low-resource languages is a challenging area. One approach to address the lack of resources is to make use of data from multiple languages. A popular direction in recent years is to use bottleneck features, or hybrid systems, trained on multilingual data for speech-to-text (STT) systems. This paper presents an investigation into the application of these multilingual approaches to spoken term detection. Experiments were run using the IARPA Babel limited language pack corpora (~10 hours/language) with 4 languages for initial multilingual system development and an additional held-out target language. STT gains achieved through using multilingual bottleneck features in a Tandem configuration are shown to also apply to keyword search (KWS). Further improvements in both STT and KWS were observed by incorporating language questions into the Tandem GMM-HMM decision trees for the training set languages. Adapted hybrid systems performed slightly worse on average than the adapted Tandem systems. A language independent acoustic model test on the target language showed that retraining or adapting of the acoustic models to the target language is currently minimally needed to achieve reasonable performance.
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多语种深度神经网络口语词汇检测研究
开发针对低资源语言的高性能语音处理系统是一个具有挑战性的领域。解决资源缺乏的一种方法是利用来自多种语言的数据。近年来一个流行的方向是在语音到文本(STT)系统中使用多语言数据训练的瓶颈特征或混合系统。本文对这些多语言方法在口语术语检测中的应用进行了研究。实验使用IARPA Babel有限语言包语料库(~10小时/语言),使用4种语言进行初始多语言系统开发和额外的目标语言。通过在Tandem配置中使用多语言瓶颈特性获得的STT收益也适用于关键字搜索(KWS)。通过将语言问题合并到训练集语言的串联GMM-HMM决策树中,观察到STT和KWS的进一步改进。适应混合系统的平均表现略差于适应串联系统。对目标语言进行的独立于语言的声学模型测试表明,为了达到合理的性能,目前最少需要对声学模型进行再训练或适应目标语言。
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