Correlational Neural Network Based Feature Adaptation in L2 Mispronunciation Detection

Wenwei Dong, Yanlu Xie
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Abstract

Due to the difficulties of collecting and annotating second language (L2) learner’s speech corpus in Computer-Assisted Pronunciation Training (CAPT), traditional mispronunciation detection framework is similar to ASR, it uses speech corpus of native speaker to train neural networks and then the framework is used to evaluate non-native speaker’s pronunciation. Therefore there is a mismatch between them in channels, reading style, and speakers. In order to reduce this influence, this paper proposes a feature adaptation method using Correlational Neural Network (CorrNet). Before training the acoustic model, we use a few unannotated non-native data to adapt the native acoustic feature. The mispronunciation detection accuracy of CorrNet based method has improved 3.19% over un-normalized Fbank feature and 1.74% over bottleneck feature in Japanese speaking Chinese corpus. The results show the effectiveness of the method.
基于相关神经网络特征自适应的二语发音错误检测
由于在计算机辅助发音训练(CAPT)中很难收集和标注第二语言学习者的语音语料库,传统的错误发音检测框架类似于ASR,它使用母语使用者的语音语料库训练神经网络,然后使用该框架来评估非母语使用者的发音。因此,他们在频道、阅读方式和演讲者之间存在不匹配。为了减小这种影响,本文提出了一种基于相关神经网络(cornet)的特征自适应方法。在训练声学模型之前,我们使用少量未标注的非本地数据来适应本地声学特征。在日语汉语语料库中,基于cornet的错误发音检测准确率比未归一化的Fbank特征提高了3.19%,比瓶颈特征提高了1.74%。结果表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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