Proceedings of the XXth Conference of Open Innovations Association FRUCT (May 2021)

COVID-19 Recognition Based on Patients Coughing and Breathing Patterns Analysis: Deep Learning Approach

  • Lazhar Khriji,
  • Seifeddine Messaoud,
  • Soulef Bouaafia,
  • Amna Maraoui,
  • Ahmed Ammari

DOI
https://doi.org/10.23919/FRUCT52173.2021.9435454
Journal volume & issue
Vol. 29, no. 1
pp. 185 – 191

Abstract

Read online

The World Health Organization has declared that the new Coronavirus disease (Covid-19) has become a pandemic since March 2020. It consists of an emerging viral infection with respiratory swelling that can progress to atypical pneumonia. In fact, experts stress the early detection importance of those infected with COVID-19 virus. In this way, the infected patients will be isolated from others, and then prevent the virus spread. However, prompt assessment of breathing patterns is important for many medical emergencies. We present, in this paper, a deep learning technique-based COVID-19 cough and breath analysis that can recognize positive COVID-19 cases from both negative and healthy COVID-19 cough and breath recorded on smartphones or wearable sensors. Firstly, audio signals, as well as cough and breath, will be preprocessed to remove noise. After that, deep features will be extracted using the deep Long Term Short Memory (LSTM) model. Finally, the recognition step will be performed exploiting extracted audio features. Numerical results prove the efficiency of the proposed deep model in term of high accuracy level and low loss value compared to the other techniques.

Keywords