用HOSVD衍生的双谱特征分析正常和病理性婴儿哭声

Anshu Chittora, H. Patil
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引用次数: 3

摘要

本文提出了一种基于双谱的婴儿啼哭特征提取方法。双谱是一类高阶谱分析,双谱计算适用于正常和病理哭声的所有片段。双谱是一个二维(即二维)特征。利用这些双谱特征形成一个张量,然后应用高阶奇异值分解定理(HOSVD)进行特征约简。实验结果表明,支持向量机(SVM)分类器的平均分类准确率为98.94%,而基线特征(即Mel频率反谱系数(MFCC)、感知线性预测系数(PLP)和线性预测系数(LPC)的分类准确率分别为53.99%、63.14%和63.07%。双谱的高分类精度可归因于其捕获信号非线性的能力。
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Analysis of normal and pathological infant cries using bispectrum features derived using HOSVD
In this paper, bispectrum-based feature extraction method is proposed for classification of normal vs. pathological infant cries. Bispectrum is a class of higher order spectral analysis, Bispectrum is computed for all segments of normal as well as pathological cries. Bispectrum is a two-dimensional (i.e., 2-D) feature. A tensor is formed using these bispectrum features and then for feature reduction, higher order singular value decomposition theorem (HOSVD) is applied. Our experimental results show 98.94 % average accuracy of classification with support vector machine (SVM) classifier whereas baseline features, viz., Mel frequency cepstral coefficients (MFCC), perceptual linear prediction coefficients (PLP) and linear prediction coefficients (LPC) gave classification accuracy of 53.99 %, 63.14 % and 63.07 %, respectively. High classification accuracy of bispectrum can be attributed to its ability to capture nonlinearity in the signal.
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