Research on Acoustic Feature Extraction of Crying for Early Screening of Children with Autism

K. Wu, Chao Zhang, Xiao-pei Wu, De Wu, Xia Niu
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引用次数: 7

Abstract

In the field of early diagnosis of autism children, the current method is mainly based on doctors' clinical observation and experience with the assistance of some quantitive indexes. In this paper, we propose to use acoustic features of crying sound for the early diagnosis of autistic children. Four acoustic features extraction methods (wavelet decomposition coefficient, DWT-MFCC, MFCC and LPCC) and two machine leaning-based classifiers (SVM, CNN) are applied to the crying sounds of autism children aged 2 to 3 years old. Comparison experiments show that MFCC features with SVM and CNN achieved the highest recognition rate, while DWT-MFCC exhibited the most stable performance in the case of five different SNRs. And it also can be seen from the experiments that the convergence speed of MFCC and DWT-MFCC features with CNN is approximately the same. Our research may ultimately help doctors diagnose autism in young children from a speech signal processing perspective.
哭声声特征提取用于自闭症儿童早期筛查的研究
在自闭症儿童早期诊断领域,目前的方法主要是根据医生的临床观察和经验,辅以一些定量指标。在本文中,我们提出利用哭声的声学特征对自闭症儿童进行早期诊断。将4种声学特征提取方法(小波分解系数、DWT-MFCC、MFCC和LPCC)和2种基于机器学习的分类器(SVM、CNN)应用于2 ~ 3岁自闭症儿童的哭泣声。对比实验表明,在5种不同信噪比情况下,MFCC特征与SVM和CNN的识别率最高,而DWT-MFCC表现出最稳定的性能。从实验中也可以看出,MFCC和DWT-MFCC特征对CNN的收敛速度大致相同。我们的研究可能最终帮助医生从语音信号处理的角度诊断幼儿自闭症。
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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