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Waah: Infants Cry Classification of Physiological State Based on Audio Features

机译:Waah:基于音频特征的婴儿对生理状态的哭泣分类

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摘要

Crying is one of the means by which they express their emotional, psychological and physiological states. This paper investigates if audio features specifically the Mel Frequency Cepstral Coefficient (MFCC) & Linear Prediction Cepstral Coefficient (LPCC) are enough to classify the infants' physiological states such as hunger, pain and discomfort. To determine these physiological states, we recorded the cry of some infants who were immunized. The data for hunger and discomfort were recorded in the infants' house. The results showed that the audio features can classify an infant's physiological state. We used three classification algorithms, Decision Tree (J48), Neural Network and Support Vector Machine in developing the infant physiological model. To evaluate the performance of the infant physiological state model, Precision, Recall and F-measure were used as performance metrics. We found out that Decision Tree and Multilayer Perceptron performed better for the given dataset with correctly classified instances ranging from 87.64% to 90.80 with an overall kappa statistic ranging from 0.47 - 0.64.
机译:哭泣是他们表达情绪,心理和生理状态的一种方式。本文研究了音频特征,尤其是梅尔频率倒谱系数(MFCC)和线性预测倒谱系数(LPCC)是否足以对婴儿的生理状态(例如饥饿,疼痛和不适)进行分类。为了确定这些生理状态,我们记录了一些被免疫的婴儿的哭声。饥饿和不适的数据记录在婴儿房中。结果表明,音频特征可以对婴儿的生理状态进行分类。在开发婴儿生理模型时,我们使用了三种分类算法:决策树(J48),神经网络和支持向量机。为了评估婴儿生理状态模型的性能,将Precision,Recall和F-measure用作性能指标。我们发现,决策树和多层感知器在给定数据集的正确分类实例范围从87.64%到90.80的情况下表现更好,总体kappa统计范围在0.47-0.64之间。

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