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Deep Neural Architecture for Face mask Detection on Simulated Masked Face Dataset against Covid-19 Pandemic

机译:对Covid-19大流行模拟蒙面数据集的面罩检测深度神经架构

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The dangerous COVID-19 (SARS-CoV-2) is rising steadily and globally, with more than 72,851,747 confirmed cases observed to WHO including 1,643,339 deaths till 17 December 2020. The country’s economy is now almost fully halted, people are stuck up and investment becomes deteriorating. So, this is turning to worry of the government for a development and health. Health organizations are often desperate for evolving decision-making innovations to overcome this viral virus and encourage people to receive rapid and effective responses in real-time. Thus, it is important to create auto-mechanisms as a preventive shield to ensure healthy humanity against SARS-CoV-2. Advanced analytics methods and other strategies could also empower researchers, learners and the pharmaceutical industry to acknowledge the hazardous COVID-19 and speed it up care procedures by efficiently testing vast volumes of research data. The prevention method consequence is being used to effectively manage, calculate, forecast and monitor current infected people and future potential cases. Therefore, we proposed CNN and VGG16 based deep learning models to incorporate and enforce AI-based precautionary measures to detect the face mask on Simulated Masked Face Dataset (SMFD). This technique is capable of recognizing masked and unmasked faces to help monitor safety breaches, facilitate the use of face masks, and maintain a secure working atmosphere.
机译:危险的Covid-19(SARS-COV-2)正在稳步上升,全球升级,超过72,851,747例确诊的病例,旨在达到2020年12月17日,包括1,643,339人死亡。该国的经济现在几乎完全停止,人们陷入困境和投资变得恶化。因此,这是为了担心政府的发展和健康。卫生组织往往绝望地渴望不断发展的决策创新,以克服这种病毒病毒,并鼓励人们实时获得快速和有效的反应。因此,重要的是创建自动机制作为预防盾牌,以确保对SARS-COV-2的健康人性。先进的分析方法和其他策略也可以赋予研究人员,学习者,制药行业,以确认危险的Covid-19,并通过有效地测试巨大的研究数据来加速护理程序。预防方法后果被用来有效地管理,计算,预测和监测当前感染的人和未来的潜在案例。因此,我们提出了基于CNN和VGG16的深度学习模型,包括基于AI的预防措施来检测模拟掩蔽面部数据集(SMFD)上的面部掩模。该技术能够识别遮罩和未掩蔽的面,以帮助监测安全漏洞,便于使用面罩,并保持安全的工作大气。

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