Time-frequency analysis-based method for application of infant cry classification

J. Saraswathy, M. Hariharan, W. Khairunizam, J. Sarojini, S. Yaacob
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引用次数: 3

Abstract

Automatic infant cry classification is one of the significant studies under medical engineering, adopting the medical and engineering techniques for the classification of diverse physical and physiological states of the infants. This paper proposes a new investigation of time-frequency (t-f)-based signal processing technique using wavelet packet spectrum (wpspectrum) for classification of newborn cry signals. The study was initialised with the extraction of a cluster of t-f features from the generated t-f matrix of recorded cry signals using wpspectrum by extending time-domain and frequency-domain features to the joint t-f domain. In accordance, conventional features such as mel-frequency cepstral coefficients (MFCCs) and linear prediction coefficients (LPCs) were also extracted in order to compare the performance of the suggested t-f approach. Probabilistic neural network (PNN) and general regression neural network (GRNN) were used in classification. The proposed methodology was implemented to classify different sets of infant cry signals and the best empirical result of above 99% was reported.
基于时频分析的婴儿哭声分类方法的应用
婴儿啼哭自动分类是医学工程领域的重要研究之一,它采用医学和工程技术对婴儿的多种生理和生理状态进行分类。本文提出了一种基于时频(t-f)的信号处理技术,利用小波包谱(wpspectrum)对新生儿啼哭信号进行分类。通过将时域和频域特征扩展到联合t-f域,使用wpspectrum从记录的呼叫信号生成的t-f矩阵中提取一组t-f特征,从而初始化了该研究。此外,还提取了mel-frequency倒谱系数(MFCCs)和线性预测系数(LPCs)等常规特征,以比较建议的t-f方法的性能。采用概率神经网络(PNN)和广义回归神经网络(GRNN)进行分类。将所提出的方法应用于婴儿啼哭信号的分类,并获得了99%以上的最佳实证结果。
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