Improving BLSTM RNN based Mandarin speech recognition using accent dependent bottleneck features

Jiangyan Yi, Hao Ni, Zhengqi Wen, J. Tao
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引用次数: 8

Abstract

This paper proposes an approach to perform accent adaptation by using accent dependent bottleneck (BN) features to improve the performance of multi-accent Mandarin speech recognition system. The architecture of the adaptation uses two neural networks. First, deep neural network (DNN) acoustic model acts as a feature extractor which is used to extract accent dependent BN (BN-DNN) features. The input features of the BN-DNN model are MFCC features appended with i-vectors features. Second, bidirectional long short term memory (BLSTM) recurrent neural network (RNN) based acoustic model is used to perform accent-specific adaptation. The input features of the BLSTM RNN model are accent dependent BN features appended with MFCC features. Experiments on RASC863 and CASIA regional accent speech corpus show that the proposed method obtains obvious improvement compared with the BLSTM RNN baseline model.
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基于语音瓶颈特征的BLSTM RNN普通话语音识别改进
本文提出了一种利用口音依赖瓶颈(BN)特征进行口音自适应的方法,以提高多口音普通话语音识别系统的性能。自适应的结构采用两个神经网络。首先,深度神经网络(DNN)声学模型作为特征提取器,用于提取重音相关BN (BN-DNN)特征。BN-DNN模型的输入特征是MFCC特征加上i-vectors特征。其次,采用基于双向长短期记忆(BLSTM)递归神经网络(RNN)的声学模型进行口音自适应。BLSTM RNN模型的输入特征是与重音相关的BN特征加上MFCC特征。在RASC863和CASIA区域口音语音语料库上的实验表明,与BLSTM RNN基线模型相比,该方法得到了明显的改进。
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