Detection of COVID-19 from speech signal using bio-inspired based cepstral features

作者:

Highlights:

• Extraction and analysis of the cepstral features used in speech recognition. The optimization of the conversion scale in the frequency domain, and the frequency range of filter bank using the bio-inspired technique to facilitate COVID-19 detection.

• Identification of the best possible sound patterns during coughing, breathing, and voiced sounds to efficiently detect COVID-19.

• Application of the speech enhancement schemes for the improvement in the classification performance.

• Use of the Adaptive Synthetic Sampling Approach for Imbalanced Learning to remove the class imbalance in the database and to evaluate properly the various performance measures of the proposed classifier.

• Using the same classifier, comparison of the detection performance of the proposed cepstral features as inputs with different existing cepstral features employing two separate standard databases.

• Demonstration of overall 5% enhancement in detection performance compared to that of other four existing features based method.

摘要

•Extraction and analysis of the cepstral features used in speech recognition. The optimization of the conversion scale in the frequency domain, and the frequency range of filter bank using the bio-inspired technique to facilitate COVID-19 detection.•Identification of the best possible sound patterns during coughing, breathing, and voiced sounds to efficiently detect COVID-19.•Application of the speech enhancement schemes for the improvement in the classification performance.•Use of the Adaptive Synthetic Sampling Approach for Imbalanced Learning to remove the class imbalance in the database and to evaluate properly the various performance measures of the proposed classifier.•Using the same classifier, comparison of the detection performance of the proposed cepstral features as inputs with different existing cepstral features employing two separate standard databases.•Demonstration of overall 5% enhancement in detection performance compared to that of other four existing features based method.

论文关键词:Bio-inspired computing,COVID19,Speech signal

论文评审过程:Received 10 December 2020, Revised 9 April 2021, Accepted 18 April 2021, Available online 24 April 2021, Version of Record 30 April 2021.

论文官网地址:https://doi.org/10.1016/j.patcog.2021.107999