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INVESTIGATION OF MULTILINGUAL DEEP NEURAL NETWORKS FOR SPOKEN TERM DETECTION

机译:多语种深度神经网络进行语言检测

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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.
机译:用于低资源语言的高性能语音处理系统的开发是一个具有挑战性的区域。解决缺乏资源的一种方法是利用来自多种语言的数据。近年来一项流行的方向是使用瓶颈功能或混合系统,在多语种数据上培训,用于语音到文本(STT)系统。本文介绍了对这些多语言方法进行说话术语检测的调查。使用IARPA Babel Limited Langet Cotor(〜10小时/语言)进行实验,具有4种用于初始多语言系统开发的语言和额外的举行目标语言。通过使用串联配置中的多语言瓶颈功能来实现的STT增益也适用于关键字搜索(KWS)。通过将语言问题纳入串联GMM-HMM决策树的训练套装语言来观察STT和KW的进一步改进。适应的混合系统平均比适应的串联系统更差。目标语言的语言独立的声学模型测试显示,目前需要对目标语言进行再培训或调整声学模型,以实现合理的性能。

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