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PCA method for automated detection of mispronounced words

机译:用于自动检测误像性词的PCA方法

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This paper presents a method for detecting mispronunciations with the aim of improving Computer Assisted Language Learning (CALL) tools used by foreign language learners. The algorithm is based on Principle Component Analysis (PCA). It is hierarchical with each successive step refining the estimate to classify the test word as being either mispronounced or correct. Preprocessing before detection, like normalization and time-scale modification, is implemented to guarantee uniformity of the feature vectors input to the detection system. The performance using various features including spectrograms and Mel-Frequency Cepstral Coefficients (MFCCs) are compared and evaluated. Best results were obtained using MFCCs, achieving up to 99% accuracy in word verification and 93% in native/non-native classification. Compared with Hidden Markov Models (HMMs) which are used pervasively in recognition application, this particular approach is computational efficient and effective when training data is limited.
机译:本文介绍了一种检测误用的方法,目的是改善外语学习者使用的计算机辅助语言学习(呼叫)工具。该算法基于原理分量分析(PCA)。它是分层的,每个连续的步骤炼制估计,以将测试单词分类为错误分散或更正。在检测之前预处理,例如归一化和时间尺度修改,以确保输入到检测系统的特征向量的均匀性。比较和评估使用包括谱图和熔融频率谱系数(MFCC)的各种特征的性能。使用MFCC获得最佳结果,在Word验证中获得高达99%的准确性,而且在本机/非本地分类中的93%。与隐藏的马尔可夫模型(HMMS)相比,普遍存在识别应用中,这种特定方法是在训练数据有限时计算有效且有效的。

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