基于多波段光谱熵的婴儿啼哭特征识别系统

Mahmoud Mansouri Jam, H. Sadjedi
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引用次数: 10

摘要

婴儿啼哭是一种多模态行为,它包含了很多关于婴儿的信息,尤其是关于婴儿健康的信息。本文提出了一种新的婴儿哭声分析方法,利用婴儿哭声的Mel频率多波段熵提取来识别疼痛婴儿和正常婴儿两类婴儿。在信号处理阶段,我们进行了消噪、滤波、预强化等预处理。在进行傅里叶变换后,将谱熵作为信号的单个特征进行计算。在分类阶段,通过训练人工神经网络,识别正确率达到66.9%。为了增强结果,我们使用了Mel滤波器组。每个子带的熵构成下一个特征向量的元素。我们使用主成分分析法对最近的特征向量进行降维。经过人工神经网络训练后,正确率提高到88.5%。因此,增强多波段谱熵可以提高显著性校正率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A System for Detecting of Infants with Pain from Normal Infants Based on Multi-band Spectral Entropy by Infant's Cry Analysis
Infant cry is a multimodal behavior that contains a lot of information about the infant, particularly, information about the health of the infant. In this paper a new feature in infant cry analysis is presented for recognition two groups: infants with pain and normal infants, by Mel frequency multi-band entropy extraction from infant's cry. In signal processing stage we made pre-processing included silence elimination, filtering, pre-emphasizing. After taking Fourier transform, spectral entropy was computed as single feature of signal. In classifying stage, by training artificial neural network, correction rate of recognition was obtained 66.9%. In order to enhancement in results, we used Mel filter bank. Entropy of each sub-band constitutes elements of next feature vector. We used PCA analysis for reducing in dimension of the recent feature vector. After ANN training, correction rate improved to 88.5%. So multiband spectral entropy enhanced results in salient correction rate.
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