基于二元粒子群算法的婴儿窒息哭声识别特征选择

A. Zabidi, W. Mansor, Yoot Khuan Lee, I. Yassin, R. Sahak
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引用次数: 17

摘要

婴儿窒息哭声信号具有明显的模式,可以用人工神经网络等模式分类器进行识别。研究了基于二元粒子群算法的婴儿哭声特征选择对多层感知器(MLP)分类器从哭泣信号中区分健康婴儿和窒息婴儿性能的影响。通过MFCC分析进行特征提取。采用不同数量的系数组合来检验MLP分类器的性能。结果表明,BPSO有助于提高MLP分类器的分类精度,同时减少了计算量。当使用26个MFCC滤波器组、14个选定的MFC系数和5个隐藏节点时,MLP分类准确率最高,达到95.07%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Binary Particle Swarm Optimization for selection of features in the recognition of infants cries with asphyxia
The infant cry signals with asphyxia have distinct patterns which can be recognized using pattern classifiers such as Artificial Neural Network (ANN). This study investigates the effect of selecting infant cry features using the Binary Particle Swarm Optimization on the performance of Multilayer Perceptron (MLP) classifier in discriminating between healthy and infants with asphyxia from cry signals. The feature extraction process was performed by MFCC analysis. The MLP classifier performance was examined using various combination of number of coefficients. It was found that the BPSO helps to enhance the classification accuracy of MLP classifier while reducing the computational load. The highest MLP classification accuracy achieved was 95.07%, which was obtained when 26 MFCC filter banks, 14 selected MFC coefficients and 5 hidden nodes were used.
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