2022
DOI: 10.3389/frsip.2022.986293
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COVID-19 respiratory sound analysis and classification using audio textures

Abstract: Since the COVID-19 outbreak, a major scientific effort has been made by researchers and companies worldwide to develop a digital diagnostic tool to screen this disease through some biomedical signals, such as cough, and speech. Joint time–frequency feature extraction techniques and machine learning (ML)-based models have been widely explored in respiratory diseases such as influenza, pertussis, and COVID-19 to find biomarkers from human respiratory system-generated acoustic sounds. In recent years, a variety o… Show more

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Cited by 3 publications
(1 citation statement)
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“…We also assessed the performance of several feature extractors [34]. The LSTM model is utilized to obtain the findings after the MFCC model has been used for feature extraction [35]. The fact that LSTM outperforms a few competing models with an ICBHI score of 74% after being pitted against them shows the power of the LSTM-based framework in lung sound data pre-processing [2,30].…”
Section: Related Work Historymentioning
confidence: 99%
“…We also assessed the performance of several feature extractors [34]. The LSTM model is utilized to obtain the findings after the MFCC model has been used for feature extraction [35]. The fact that LSTM outperforms a few competing models with an ICBHI score of 74% after being pitted against them shows the power of the LSTM-based framework in lung sound data pre-processing [2,30].…”
Section: Related Work Historymentioning
confidence: 99%