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ASR Error Management Using RNN Based Syllable Prediction for Spoken Dialog Applications

机译:基于RNN的语音对话应用基于音节预测的ASR错误管理

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摘要

We proposed automatic speech recognition (ASR) error management method using recurrent neural network (RNN) based syllable prediction for spoken dialog applications. ASR errors are detected and corrected by syllable prediction. For accurate prediction of a next syllable, we used a current syllable, previous syllable context, and phonetic information of next syllable which is given by ASR error. The proposed method can correct ASR errors only with a text corpus which is used for training of the target application, and it means that the method is independent to the ASR engine. The method is general and can be applied to any speech based application such as spoken dialog systems.
机译:我们针对语音对话应用提出了一种基于基于递归神经网络(RNN)的音节预测的自动语音识别(ASR)错误管理方法。通过音节预测来检测和纠正ASR错误。为了准确预测下一个音节,我们使用了当前音节,上一个音节上下文以及下一个音节的语音信息,这些信息由ASR错误给出。所提出的方法只能使用用于训练目标应用程序的文本语料库来纠正ASR错误,这意味着该方法独立于ASR引擎。该方法是通用的,并且可以应用于任何基于语音的应用,例如口语对话系统。

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