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Expiratory and Inspiratory Cries Detection Using Different Signals' Decomposition Techniques

机译:使用不同信号的分解技术进行呼气和吸气呼吸探测

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This paper addresses the problem of automatic cry signal segmentation for the purposes of infant cry analysis. The main goal is to automatically detect expiratory and inspiratory phases from recorded cry signals. The approach used in this paper is made up of three stages: signal decomposition, features extraction, and classification. In the first stage, short-time Fourier transform, empirical mode decomposition (EMD), and wavelet packet transform have been considered. In the second stage, various set of features have been extracted, and in the third stage, two supervised learning methods, Gaussian mixture models and hidden Markov models, with four and five states, have been discussed as well. The main goal of this work is to investigate the EMD performance and to compare it with the other standard decomposition techniques. A combination of two and three intrinsic mode functions (IMFs) that resulted from EMD has been used to represent cry signal. The performance of nine different segmentation systems has been evaluated. The experiments for each system have been repeated several times with different training and testing datasets, randomly chosen using a 10-fold cross-validation procedure. The lowest global classification error rates of around 8.9% and 11.06% have been achieved using a Gaussian mixture models classifier and a hidden Markov models classifier, respectively. Among all IMF combinations, the winner combination is IMF3+IMF4+IMF5.
机译:本文解决了婴儿哭分析目的的自动响铃信号分割问题。主要目标是自动检测从录制的响声信号检测到期和吸气阶段。本文中使用的方法由三个阶段组成:信号分解,特征提取和分类。在第一阶段,已经考虑了短时傅里叶变换,经验模式分解(EMD)和小波包变换。在第二阶段,已经提取了各种特征,并且在第三阶段,两种监督学习方法,高斯混合模型和隐藏的马尔可夫模型,还讨论了四个和五个州。这项工作的主要目标是调查EMD性能,并将其与其他标准分解技术进行比较。由EMD产生的两个和三个内在模式功能(IMF)的组合已被用于表示响声信号。已经评估了九种不同分段系统的性能。通过不同的训练和测试数据集重复每个系统的实验,随机选择使用10倍交叉验证程序随机选择。使用高斯混合模型分类器和隐藏的Markov模型分类,已经实现了大约8.9%和11.06%的全局分类误差率约为8.9%和11.06%。在所有IMF组合中,获胜者组合是IMF3 + IMF4 + IMF5。

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