An Automated Real-Time Face Mask Detection System Using Transfer Learning with Faster-RCNN in the Era of the COVID-19 Pandemic
Maha Farouk S. Sabir, I. Mehmood, Wafaa Adnan Alsaggaf, Enas Fawai Khairullah, Samar Alhuraiji, Ahmed S. Alghamdi, Ahmed A. Abd El-Latif
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新型冠状病毒大流行时代基于快速rcnn迁移学习的自动实时口罩检测系统
今天,由于COVID-19大流行,全世界都面临着严重的卫生危机。根据世界卫生组织(WHO)的建议,在公共场所,人们应该戴上口罩,以控制新冠肺炎的快速传播。各国政府机构规定,在公共场所必须佩戴口罩。因此,人工监控拥挤地区的人员是非常困难的。本研究的重点是提供一种在公共场所实施COVID-19重要预防措施之一的解决方案,通过展示一个自动化系统,在有助于本次COVID-19爆发的区域的图像或视频中自动定位戴口罩和未戴口罩的人脸。本文展示了一种使用Faster-RCNN模型的迁移学习方法来检测被屏蔽或未被屏蔽的人脸。提出的框架是通过微调最先进的深度学习模型Faster-RCNN构建的,并已在一个名为Face Mask dataset (FMD)的公开数据集上进行了验证,并实现了81%的最高平均精度(AP)和84%的最高平均召回率(AR)。这表明fast - rcnn模型具有很强的鲁棒性和能力来检测具有蒙面和未蒙面的个体。该工作具有实时性,可在任何公共服务领域实施。©2022科技科学出版社。版权所有。
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