FEATURE SELECTION FOR ARABIC MISPRONUNCIATION DETECTION BASED ON SEQUENTIAL FLOATING FORWARD SELECTION AND DATA MINING CLASSIFIERS

M. Maqsood
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Abstract

Feature selection process is used to reduce the feature vector length and identify thediscriminative features. Many acoustic-phonetic features including Mel-Frequency CepstralCoefficient (MFCC), Energy, Pitch, Zero-crossing, spectrum were tested individually for Arabicmispronunciation detection using three classifiers; Random Forest, Bayesian classifier, and BaggedSupport Vector Machine (SVM). The results for Bagged SVM were better than the other twoclassifiers. Top three individual features with highest accuracies were identified for each isolatedArabic consonant. To validate the results, a modified form of Sequential Floating Forward Selection(SFFS) process was used. Results showed that MFCC along with its first and second derivatives,energy, spectrum, and zero-crossing were the most suitable acoustic features for Arabicmispronunciation detection system. The proposed approach provided an average accuracy of 94.9%which was better than the previous best 92.95% for Arabic consonants.
基于顺序浮动前向选择和数据挖掘分类器的阿拉伯语发音错误检测特征选择
特征选择过程用于减少特征向量长度并识别判别特征。使用三种分类器分别测试了多种声学-语音特征,包括Mel-Frequency CepstralCoefficient (MFCC)、Energy、Pitch、Zero-crossing、spectrum。随机森林,贝叶斯分类器和BaggedSupport Vector Machine (SVM)。Bagged SVM的分类结果优于其他两种分类器。对于每个独立的阿拉伯辅音,识别出准确率最高的前三个独立特征。为了验证结果,使用了一种改进形式的顺序浮动前向选择(SFFS)过程。结果表明,MFCC及其一阶导数、二阶导数、能量、频谱和过零是最适合用于阿拉伯语误发音检测系统的声学特征。提出的方法对阿拉伯辅音的平均准确率为94.9%,优于先前的最佳准确率92.95%。
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