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Application of time-frequency analysis and back-propagation neural network in the lung sound signal recognition

机译:时频分析和背传播神经网络在肺部声音信号识别中的应用

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In the diagnosis of the respiratory diseases, auscultation is a non-invasive and convenient diagnostic method. In the digital auscultation analysis, what method we use to analyze the lung signals which microphone recorded will affect the results of the experiment greatly. The purpose of this study is to use frequency analysis and time-frequency analysis to analyze the six lung sound signals, which are vesicular breath sounds, bronchial breath sounds, crackle, and wheeze. Finally, the study transformed the analysis results into the characteristic images, and put them to the back propagation neural network for training. After that, the study compares the results of the two methods. We also analyze the realistic lung sound signals and simulated lung sound signals, and compare the results finally. First, we use the piezoelectric microphone and data acquisition card NI-PXI 4472B to acquire LS signals, and signals preprocessing. Then we use Visual Signal to analyze the lung sound signals by time-frequency analysis. We also analyze the lung sound signals which are from the auscultation teaching website. Finally we compare the result of two kinds of signals, and assess their similarity and accuracy by the test of back-propagation neural network. According to the result of this study, we found that time-frequency analysis provide much information about the lung signals, and are more suitable as a basis of diagnosis, and increase the recognition rate of the back-propagation neural network.
机译:在呼吸系统疾病的诊断中,听诊是一种非侵入性和方便的诊断方法。在数字听诊分析中,我们使用哪种方法来分析麦克风记录的肺信号会大大影响实验结果。本研究的目的是使用频率分析和时频分析来分析六个肺部声音信号,这些信号是尿道呼吸声,支气管呼吸声,噼啪声和喘息。最后,研究将分析结果转化为特征图像,并将它们放到后部传播神经网络进行训练。之后,研究比较了两种方法的结果。我们还分析了现实的肺部声音信号和模拟肺部声音信号,并最终比较了结果。首先,我们使用压电麦克风和数据采集卡NI-PXI 4472B获取LS信号和信号预处理。然后我们使用视觉信号通过时频分析来分析肺部声音信号。我们还分析了来自Auscultation教学网站的肺部声音信号。最后,我们比较了两种信号的结果,并通过反向传播神经网络的测试来评估它们的相似性和准确性。根据本研究的结果,我们发现时频分析提供了有关肺信号的许多信息,并且更适合作为诊断的基础,并提高背部传播神经网络的识别率。

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