TFA-CLSTMNN:基于声音诊断的新型卷积网络

Yuhao He, Xianwei Zheng, Qing Miao
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引用次数: 1

摘要

新冠肺炎全球大流行疫情已成为一场公共危机,威胁着各国人民的生命安全。最近,研究人员开发了通过患者咳嗽录音进行检测的方法。为了提高检测准确率,本文建立了一种新型的基于声音的COVID-19诊断框架,即TFA-CLSTMNN,该框架将记录的咳嗽的时频域特征与注意卷积长短期记忆神经网络相结合。具体来说,我们计算咳嗽数据的Mel-frequency倒频谱系数(MFCC)来提取其时频域特征。然后应用卷积神经网络和注意机制分析时频特征,然后利用长短期记忆神经网络分析数据的MFCC特征。然后可以进行识别和分类,以评估测试样品的阳性或阴性。实验结果表明,提出的TFA-CLSTMNN框架在基于声音的COVID-19诊断中优于基线神经网络,在公开的真实数据集上获得了超过0.95的准确率。
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TFA-CLSTMNN: Novel convolutional network for sound-based diagnosis of COVID-19
The outbreak of the global COVID-19 pandemic has become a public crisis and is threatening human life in every country. Recently, researchers have developed testing methods via patients cough recordings. In order to improve the testing accuracy, in this paper, we establish a novel COVID-19 sound-based diagnosis framework, i.e. TFA-CLSTMNN, which integrates time-frequency domain features of the recorded cough with the Attention-Convolution Long Short-Term Memory Neural Network. Specifically, we calculate the Mel-frequency cepstrum coefficient (MFCC) of the cough data to extract the time-frequency domain features. We then apply the convolutional neural network and the attentional mechanism on the time-frequency features, which is followed by the long short-term memory neural network to analyze the MFCC features of the data. The recognition and classification can be then carried out to evaluate the positiveness or negativeness of the tested samples. Experimental results show that the proposed TFA-CLSTMNN framework outperforms the baseline neural networks in sound-based COVID-19 diagnosis and derives an accuracy over 0.95 on the public real-world datasets.
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