Volume 2 , Issue 2 , PP: 45-54, 2021 | Cite this article as | XML | Html | PDF | Full Length Article
Amine Saddik *, Rachid Latif , Abdoullah Bella 1
Doi: https://doi.org/10.54216/JISIoT.020202
ECG signal monitoring is a very important step for patients. Especially for those infected by covid-19. This pandemic has shown that the use of artificial intelligence helps to control the propagation of this virus. Particularly the high spread of this virus influences the number of the infected population. As well as the fact that this virus attacks the respiratory system which influences the cardiac system. Therefore, an ECG signal monitoring is mandatory. Our work presents an overview based on various approaches developed for ECG signal monitoring. These techniques are based on non-contact monitoring approaches. These approaches will help to avoid frequent contact with patients and doctors. As well as non-contact ECG signal monitoring is based on low-cost techniques, which reduces the price compared to other sensors. After the revision, we can conclude that the most suitable solution for heart rate monitoring is based on image processing using RGB cameras. These solutions are accurate, low cost, and protect the doctors.
ECG signal, Artificial intelligence, Covid-19, RGB camera, Heart rate
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