Title of article :
Face mask detection methods and techniques: A review
Author/Authors :
Mohammed Ali, Firas Amer Department of Computer Science - College of Science - University of Baghdad, Baghdad, Iraq , Al-Tamimi, Mohammed S. H. Department of Computer Science - College of Science - University of Baghdad, Baghdad, Iraq
Pages :
13
From page :
3811
To page :
3823
Abstract :
Corona virus sickness has become a big public health issue in 2019. Because of its contact-transparent characteristics, it is rapidly spreading. The use of a face mask is among the most efficient methods for preventing the transmission of the Covid-19 virus. Wearing the face mask alone can cut the chance of catching the virus by over 70%. Consequently, World Health Organization (WHO) advised wearing masks in crowded places as precautionary measures. Because of the incorrect use of facial masks, illnesses have spread rapidly in some locations. To solve this challenge, we needed a reliable mask monitoring system. Numerous government entities are attempting to make wearing a face mask mandatory; this process can be facilitated by using face mask detection software based on AI and image processing techniques. For face detection, helmet detection, and mask detection, the approaches mentioned in the article utilize Machine learning, Deep learning, and many other approaches. It will be simple to distinguish between persons having masks and those who are not having masks using all of these ways. The effectiveness of mask detectors must be improved immediately. In this article, we will explain the techniques for face mask detection with a literature review and drawbacks for each technique.
Keywords :
Corona virus disease 2019 , Face mask detection , CNN , YOLO , Object Detection
Journal title :
International Journal of Nonlinear Analysis and Applications
Serial Year :
2022
Record number :
2714371
Link To Document :
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