Performance comparison of lung sound classification using various convolutional neural networks

Gee Yeun Kim, Hyoung‐Gook Kim
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引用次数: 1

Abstract

In the diagnosis of pulmonary diseases, auscultation technique is simpler than the other methods, and lung sounds can be used for predicting the types of pulmonary diseases as well as identifying patients with pulmonary diseases. Therefore, in this paper, we identify patients with pulmonary diseases and classify lung sounds according to their sound characteristics using various convolutional neural networks, and compare the classification performance of each neural network method. First, lung sounds over affected areas of the chest with pulmonary diseases are collected by using a single-channel lung sound recording device, and spectral features are extracted from the collected sounds in time domain and applied to each neural network. As classification methods, we use general, parallel, and residual convolutional neural network, and compare lung sound classification performance of each neural network through experiments.
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不同卷积神经网络对肺音分类的性能比较
在肺部疾病的诊断中,听诊技术比其他方法更简单,肺音可以用于预测肺部疾病的类型以及识别肺部疾病患者。因此,在本文中,我们使用各种卷积神经网络识别肺部疾病患者,并根据他们的声音特征对肺部声音进行分类,并比较每种神经网络方法的分类性能。首先,使用单通道肺部声音记录设备收集肺部疾病胸部影响区域的肺部声音,并从收集的声音中提取时域频谱特征,并将其应用于每个神经网络。作为分类方法,我们使用了通用、并行和残差卷积神经网络,并通过实验比较了每个神经网络的肺部声音分类性能。
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来源期刊
CiteScore
0.60
自引率
50.00%
发文量
1
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