Infant Vocal Tract Development Analysis and Diagnosis by Cry Signals with CNN Age Classification

Chunyan Ji, Yi Pan
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引用次数: 1

Abstract

From crying to babbling and then to speech, infants’ vocal tract goes through anatomic restructuring. In this paper, we propose a non-invasive fast method of using infant cry signals with convolutional neural network (CNN) based age classification to diagnose the abnormality of vocal tract development as early as 4-month age. We study F0, F1, F2, spectrograms of the audio signals and relate them to the postnatal development of infant vocalization. We perform two age classification experiments: vocal tract development experiment and vocal tract development diagnosis experiment. The vocal tract development experiment trained on Baby2020 database discovers the pattern and tendency of the vocal tract changes, and the result matches the anatomical development of the vocal tract. The vocal tract development diagnosis experiment predicts the abnormality of infant vocal tract by classifying the cry signals into younger age category. The diagnosis model is trained on healthy infant cries from Baby2020 database. Cries from other infants in Baby2020 and Baby Chillanto database are used as testing sets. The diagnosis experiment yields 79.20% accuracy on healthy infants, 84.80% asphyxiated infant cries and 91.20% deaf cries are diagnosed as cries younger than 4-month although they are from infants up to 9-month-old. The results indicate the delayed developed cries are associated with abnormal vocal tract development.
基于CNN年龄分类的婴儿声道发育分析与诊断
从哭闹到咿呀学语再到说话,婴儿的声道经历了解剖学上的重构。在本文中,我们提出了一种基于卷积神经网络(CNN)的婴儿哭声信号的无创快速年龄分类方法,用于早在4月龄时诊断声道发育异常。我们研究了声音信号的F0, F1, F2谱图,并将它们与婴儿出生后的发声发育联系起来。我们进行了两个年龄分类实验:声道发育实验和声道发育诊断实验。在Baby2020数据库上训练的声道发育实验发现了声道变化的模式和趋势,结果与声道的解剖发育相吻合。声道发育诊断实验通过对婴儿哭声信号进行低龄分类来预测婴儿声道发育异常。该诊断模型是根据Baby2020数据库中的健康婴儿哭声进行训练的。Baby2020和Baby Chillanto数据库中其他婴儿的哭声被用作测试集。该诊断实验对健康婴儿的准确率为79.20%,对窒息婴儿哭声的准确率为84.80%,对失聪婴儿哭声的准确率为91.20%,尽管这些哭声来自9个月大的婴儿。结果表明,迟发性哭闹与声道发育异常有关。
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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