Facial Mask Detection and Alert System

Arpita Mashyal, Basavaraj Chougula, Sukanya Kobal, Harshala Gopal Bajantri, Veeresh
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引用次数: 2

Abstract

COVID-19 (declared pandemic by WHO) caused by unique virus called coronavirus has been spreading unceasingly, and causing a global health crisis. This has forced governments around the world to take blockade measures to prevent the spread of the virus. The majority of sectors of development is effected due to COVID-19. To lessen the spread of this caused disease good number of preventive measures is considered and one of them is covering with mask in crowded sites. This is also declared to be one of the effective methods according to WHO (World Health Organization). Reports indicate that wearing facemasks while at work, in public places, manufacturing setup reduces the risk of transmission. As a solution, an efficient and economical approach of using deep learning allows to create a safe environment in a manufacturing setup and public places. The system proposed within this project, restricts the unease spread of coronavirus by differentiating individuals with and without mask in public places that is being tracked through Live feed cameras. If an individual not covered with a mask is found, the respective staff is instructed with a message, and an alert sound message to “ Wear the mask” is given to the person. The dataset which is collected from different sources comprises the images of individuals covering with masks and not covering with masks. This will be used to train the deep learning architecture.
面具检测和警报系统
由新型冠状病毒引起的新型冠状病毒感染症(COVID-19,世界卫生组织宣布的大流行病毒)正在不断扩散,引发了全球性的健康危机。这迫使世界各国政府采取封锁措施,以防止病毒的传播。大多数发展部门都受到新冠肺炎的影响。为了减少这种疾病的传播,考虑了许多预防措施,其中之一是在拥挤的场所戴口罩。根据世界卫生组织,这也被宣布为有效的方法之一。报告指出,在工作、公共场所和生产场所佩戴口罩可减少传播风险。作为一种解决方案,使用深度学习的一种高效而经济的方法可以在制造装置和公共场所创造安全的环境。在这个项目中提出的系统,通过实时摄像头跟踪公共场所,通过区分戴口罩和不戴口罩的个人,来限制冠状病毒的不安传播。如果发现有人没有戴口罩,相关工作人员会收到指示,并向该人发出“戴口罩”的警告声音。该数据集从不同的来源收集,包括戴口罩和不戴口罩的个人图像。这将用于训练深度学习架构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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