COVID-19 Mask Detection
Keywords:
Abstract
Coronavirus disease (COVID-19) has become a pub- lic health issue around the world. The COVID-19 pandemic has quickly impacted our daily lives, affecting global market. Wearing a face mask for protection has become part of a new lifestyle. Many public service providers may soon need clients to wear masks correctly in order to use their services. detecting face masks has become extremely important in aiding worldwide society.Wearing a face mask has been scientifically confirmed to be the most efficient way to combat the infection. The goal of this work is to create a face mask detector that can be utilized by authorities to establish COVID-19 pandemic action plans. In this research paper we suggested a method that successfully detects the face in the image and then determines whether or not it is covered by a mask.
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