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Adaptive frequency cepstral coefficients for word mispronunciation detection

机译:单词误用检测的自适应频率抗痉挛系数

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Systems based on automatic speech recognition (ASR) technology can provide important functionality in computer assisted language learning applications. This is a young but growing area of research motivated by the large number of students studying foreign languages. Here we propose a Hidden Markov Model (HMM)-based method to detect mispronunciations. Exploiting the specific dialog scripting employed in language learning software, HMMs are trained for different pronunciations. New adaptive features have been developed and obtained through an adaptive warping of the frequency scale prior to computing the cepstral coefficients. The optimization criterion used for the warping function is to maximize separation of two major groups of pronunciations (native and non-native) in terms of classification rate. Experimental results show that the adaptive frequency scale yields a better coefficient representation leading to higher classification rates in comparison with conventional HMMs using Mel-frequency cepstral coefficients.
机译:基于自动语音识别(ASR)技术的系统可以在计算机辅助语言学习应用中提供重要的功能。这是一个年轻但不断增长的研究领域,受到了学习外语的大量学生的动机。在这里,我们提出了一种隐藏的马尔可夫模型(HMM)的基础方法来检测误用。利用语言学习软件中使用的特定对话框脚本,HMMS培训针对不同的发音。通过在计算临时系数之前通过频率尺度的自适应翘曲来开发和获得新的自适应特征。用于翘曲函数的优化标准是在分类率方面最大化两个主要发音(本机和非本机)的分离。实验结果表明,与使用熔融频率谱系数的常规HMM相比,自适应频率尺度产生更好的系数表示,导致较高的分类速率。

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