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Lung sounds classification using convolutional neural networks

机译:使用卷积神经网络对肺音进行分类

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摘要

Lung sounds convey relevant information related to pulmonary disorders, and to evaluate patients with pulmonary conditions, the physician or the doctor uses the traditional auscultation technique. However, this technique suffers from limitations. For example, if the physician is not well trained, this may lead to a wrong diagnosis. Moreover, lung sounds are non-stationary, complicating the tasks of analysis, recognition, and distinction. This is why developing automatic recognition systems can help to deal with these limitations. In this paper, we compare three machine learning approaches for lung sounds classification. The first two approaches are based on the extraction of a set of handcrafted features trained by three different classifiers (support vector machines, k-nearest neighbor, and Gaussian mixture models) while the third approach is based on the design of convolutional neural networks (CNN). In the first approach, we extracted the 12 MFCC coefficients from the audio files then calculated six MFCCs statistics. We also experimented normalization using zero mean and unity variance to enhance accuracy. In the second approach, the local binary pattern (LBP) features are extracted from the visual representation of the audio files (spectrograms). The features are normalized using whitening. The dataset used in this work consists of seven classes (normal, coarse crackle, fine crackle, monophonic wheeze, polyphonic wheeze, squawk, and stridor). We have also experimentally tested dataset augmentation techniques on the spectrograms to enhance the ultimate accuracy of the CNN. The results show that CNN outperformed the handcrafted feature based classifiers. (C) 2018 Elsevier B.V. All rights reserved.
机译:肺音传达与肺部疾病有关的相关信息,并且为了评估患有肺部疾病的患者,医师或医生会使用传统的听诊技术。但是,该技术存在局限性。例如,如果医师未受过良好训练,则可能导致错误的诊断。而且,肺音是不稳定的,这使分析,识别和区分的任务变得复杂。这就是为什么开发自动识别系统可以帮助解决这些限制的原因。在本文中,我们比较了三种机器学习方法对肺音的分类。前两种方法是基于由三个不同分类器(支持向量机,k最近邻和高斯混合模型)训练的一组手工特征的提取,而第三种方法是基于卷积神经网络(CNN)的设计)。在第一种方法中,我们从音频文件中提取了12个MFCC系数,然后计算了6个MFCC统计数据。我们还使用零均值和单位方差进行了归一化实验,以提高准确性。在第二种方法中,从音频文件(频谱图)的视觉表示中提取局部二进制模式(LBP)特征。使用美白对功能进行归一化。在这项工作中使用的数据集包括七个类别(普通,粗裂纹,细裂纹,单音,微音,poly音,str声和大水str)。我们还对频谱图进行了实验性的数据集扩充技术测试,以提高CNN的最终准确性。结果表明,CNN优于基于手工特征的分类器。 (C)2018 Elsevier B.V.保留所有权利。

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