Tone error detection of continuous Mandarin speech for L2 learners based on TAM-BLSTM

Yizhi Wu, Tong Guan
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Abstract

To effectively help second language (L2) Chinese learners to produce tones correctly in computer assisted language learning (CALL), tone recognition of continuous speech is necessary. Because of the complex tone variation in continuous speech, this paper proposed TAM-BLSTM tone recognition model. Firstly, the generation model, target approximation model (TAM) is used to simulate fundamental frequency (f0) from original f0 contour in the unit of prosodic words, and the TAM parameters for each Chinese character are derived. Then BLSTM model with attention mechanism is set up with input feature of the TAM parameters and basic acoustic features, such as statistical f0 parameters, vowel duration, to solve the problem of tone detection of Mandarin continuous speech. Finally, the trained tone detection model is applied to the tone error detection of the L2 learners. The experimental results with Biaobei corpus show that the accuracy of the feature set combined with TAM parameters is 2.3% higher than that of using basic acoustic features alone, and the overall accuracy of ATT-BLSTM network model is higher than that based on ATT-LSTM.
基于TAM-BLSTM的二语学习者普通话连续语音声调错误检测
为了有效地帮助第二语言学习者在计算机辅助语言学习(CALL)中正确产生声调,有必要对连续语音进行声调识别。针对连续语音中复杂的音调变化,本文提出了TAM-BLSTM音调识别模型。首先,利用生成模型——目标逼近模型(TAM)从原始的f0轮廓以韵律词为单位模拟基频f0,并推导出每个汉字的TAM参数;然后以TAM参数为输入特征,结合统计参数、元音持续时间等基本声学特征,建立具有注意机制的BLSTM模型,解决普通话连续语音的声调检测问题。最后,将训练好的语音检测模型应用于二语学习者的语音错误检测。标贝语料库的实验结果表明,结合TAM参数的特征集的准确率比单独使用基本声学特征的准确率提高2.3%,且ATT-BLSTM网络模型的整体准确率高于基于ATT-LSTM的网络模型。
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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