Covid-19的解决方案:戴口罩的人脸检测和识别

V. Nithyashree, Roopashree S, Aparna Duvvuri, L. Vanishree, Disha Anand Madival, G. Vidyashree
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引用次数: 1

摘要

在新冠肺炎危机中,戴口罩是必要的,不再是普通民众的选择。为了遵守政府的严格指令,企业必须采取一种成本效益高的方法,确保所有雇主都戴口罩,帮助控制冠状病毒的传播。提出的解决方案包括一个自动口罩检测系统,消除了入口工作人员的需要。工作模型通过分析视频的每一帧来检测每个人的口罩,并在未检测到口罩时通过安全邮件发出警报。我们提出的系统采用卷积神经网络(CNN)模型进行蒙版检测和图像减法技术来识别带有蒙版的人脸。该项目的范围涉及通过识别面孔来避免未经授权的人进入组织,尽管有面具存在。该模型在自定义数据集上的准确率为99.82%。这是阻止新型冠状病毒传播的有效防护措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Solution to Covid-19: Detection and Recognition of Faces with Mask
In this COVID-19 crisis, wearing masks is necessary and no longer an option to the general public. To follow the strict directives given by the government, the businesses have to implement a cost-effective approach to ensure that all its employers wear a face mask and help to control the spread of coronavirus. The proposed solution consists of an automatic face mask detection system that eliminates the need of an employee at the entrance. The working model detects a face mask in every person by analysing each frame of the video and alert through security mail when the mask is not detected. Our proposed system is designed using the Convolution Neural Network (CNN) model for mask detection and image subtraction technique to recognise the faces with mask. The scope of the project pertains to avoid the entry of unauthorized people into an organization by recognizing the face despite the presence of a mask. The model shows an accuracy of 99.82% on a custom dataset. It is an effective protection step to impede the transmission of the novel coronavirus.
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