Using general sound descriptors for early autism detection

Seyyed Hamid R. Ebrahimi Motlagh, H. Moradi, H. Pouretemad
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引用次数: 12

Abstract

Early detection of autism is crucial for successfully dealing with it and reduce/eliminate its effects. In other words, early treatment can make a big difference in the lives of many children with this disorder. Consequently, in this study the pattern recognition algorithms are used to determine the unique features of the voice of autistic children to distinguish between the autistic children and normal children between ages 2 and 3. These descriptors extract various audio features such as temporal features, energy features, harmonic features, perceptual and spectral features. Two feature selection methods are used and the results are compared. One method is based on comparing the effect of using all of a group features together and another method compares the effect of using features one by one. The selected features are used to classify selected children into autistic and non-autistic ones. The results show 96.17 percent accuracy. After feature selection, we classified data using S.V.M classifier for recognizing two types of input data.
使用一般声音描述符进行早期自闭症检测
早期发现自闭症对于成功治疗和减少/消除其影响至关重要。换句话说,早期治疗可以对许多患有这种疾病的儿童的生活产生重大影响。因此,本研究使用模式识别算法来确定自闭症儿童声音的独特特征,以区分自闭症儿童和2 - 3岁的正常儿童。这些描述符提取各种音频特征,如时间特征、能量特征、谐波特征、感知特征和频谱特征。采用了两种特征选择方法,并对结果进行了比较。一种方法是基于比较使用所有一组特征的效果,另一种方法是逐个比较使用特征的效果。选择的特征用于将选定的儿童分为自闭症儿童和非自闭症儿童。结果显示准确率为96.17%。在特征选择之后,我们使用S.V.M分类器对两类输入数据进行识别。
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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