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首页> 外文期刊>Australasian physical & engineering sciences in medicine >Automatic snoring sounds detection from sleep sounds based on deep learning
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Automatic snoring sounds detection from sleep sounds based on deep learning

机译:根据深度学习,自动打喷嚏声音检测睡眠声音

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摘要

Snoring is a typical characteristic of obstructive sleep apnea hypopnea syndrome (OSAHS) and can be used for its diagnosis. The purpose of this paper is to develop an automatic snoring detection algorithm for classifying snore and non-snore sound segments, which have been segmented from a whole-night sleep sound signal using a spectral entropy method, based on convolutional neural network (CNN) descriptors extracted from audio maps. For each sound segment, the time-domain waveform, spectrum, spectrogram, Mel-spectrogram and CQT-spectrogram are calculated. Two classifiers are applied to classify sound segments into either snore or non-snore classes. The first classifier is referred to as CNNs-DNNs and combines CNNs and deep neural networks (DNNs), and the second classifier is referred to as CNNs-LSTMs-DNNs and consists of CNNs, Long and Short memory networks (LSTMs) and DNNs. The results show that the Mel-spectrogram can better reflect the differences between snore and non-snore sound segments for the five maps extracted in this study. Furthermore, the deep spectrum features extracted from CNNs-LSTMs-DNNs using Mel-spectrogram are well suited to this task. The results indicate that the method developed in this study could be used for a portable sleep monitoring device.
机译:打鼾是阻塞性睡眠呼吸暂停症综合征(OSAHS)的典型特征,可用于其诊断。本文的目的是开发一种用于分类打鼾和非打鼾声音段的自动打鼾检测算法,该段使用频谱熵方法从全夜睡眠声音信号进行分割,基于卷积神经网络(CNN)描述符从音频贴图中提取。对于每个声音段,计算时域波形,频谱,频谱图,熔点谱图和CQT谱图。应用两个分类器以将声音分类为打鼾或非打鼾类。第一分类器被称为CNNS-DNN并将CNN和深神经网络(DNN)组合,第二分类器被称为CNNS-LSTMS-DNN,并且由CNN,长和短存储网络(LSTMS)和DNN组成。结果表明,熔点谱图可以更好地反映该研究中提取的五种地图的鼾声和非打鼾声音区段之间的差异。此外,使用Mel-SpectRogro从CNNS-LSTMS-DNN中提取的深频谱特征非常适合于此任务。结果表明本研究中开发的方法可用于便携式睡眠监控设备。

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