Classifying Speech of ASD Affected and Normal Children Using Acoustic Features

Abhijit Mohanta, V. K. Mittal
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引用次数: 6

Abstract

Children affected with autism spectrum disorder (ASD) produce speech that consists of distinctive acoustic patterns, as compared to normal children. Hence, acoustic analyses can help classifying speech of ASD affected children from that of normal children. In this study, the aim is to identify those discriminating characteristics of speech production that help classification between speech of children with ASD and normal children. Two separate datasets were recorded for this study: the English speech of children affected with ASD and the English speech of normal children. Comparative analyses of acoustic features derived for both datasets are carried out. Changes in the speech production characteristics are examined in three parts. Firstly, changes in the excitation source features F0 and strength of excitation (SoE) are analyzed. Secondly, changes in the vocal tract filter features the formants (F1 to F5) and dominant frequencies (FD1, FD2) are analyzed. Thirdly, changes in the combined source-filter features signal energy and zero-crossing rate are analyzed. Different combinations of the feature sets are then classified using three different classifiers for validation of results: SVM, KNN and ensemble classifiers. Performance evaluation is carried using different combinations of features sets and classifiers. Results up to 97.1% are obtained for classification accuracy between speech of ASD affected children and normal children, using a combination of feature set with SVM classifier. The results are better than other similar few studies. This study should be helpful in developing an automated system for identffying ASD speech, in future.
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用声学特征对ASD患儿和正常儿童的言语进行分类
与正常儿童相比,患有自闭症谱系障碍(ASD)的儿童产生的语言由独特的声学模式组成。因此,声学分析有助于将ASD患儿的语言与正常儿童的语言进行分类。在本研究中,目的是识别那些有助于区分自闭症儿童和正常儿童的言语产生的区别特征。本研究记录了两个独立的数据集:自闭症儿童的英语语言和正常儿童的英语语言。对两个数据集的声学特征进行了比较分析。语音产生特征的变化分为三个部分。首先,分析了励磁源特征F0和励磁强度SoE的变化。其次,分析了声道滤波器特征共振峰(F1 ~ F5)和主导频率(FD1、FD2)的变化。第三,分析了源-滤波器组合特征、信号能量和过零率的变化。然后使用三种不同的分类器对特征集的不同组合进行分类,以验证结果:SVM、KNN和集成分类器。使用不同的特征集和分类器组合进行性能评估。结果表明,将特征集与SVM分类器相结合,ASD患儿与正常儿童的语音分类准确率可达97.1%。结果优于其他同类少数研究。本研究将有助于未来自闭症语音识别自动化系统的开发。
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