监测系统的口罩和社交距离检测

L.A. Rakhsith, B. Karthik, A. D, K. V, K. Anusha
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引用次数: 4

摘要

近年来,由于传染病的蔓延,人们非常恐慌。在商店、餐馆、教室等封闭空间中,人们之间的距离很近。工作场所的安全问题也令人担忧。本文讨论了两种模型,可以用来检测人与人之间的距离,以确保社会距离,并检测人们是否戴着口罩,可以实施遵循安全措施。为了实现这些模型,使用了深度学习技术。对于社交距离模型,目标检测是为了检测人类,这是通过YOLOv3完成的。对于掩码检测模型,使用MobileNetV2算法进行分类。这是用来检测人们是否戴着口罩。这两种模型可用于预防广泛传播的疾病。例如,如果在客户不遵守标准安全协议的情况下,一个组织的人员必须要求他们的客户保持6英尺的距离或戴上口罩,该组织的人员应该直接向他们提出要求。这增加了人与人之间的接触,同时也增加了在该组织工作的人的风险因素。当实现这些模型时,它减少了不必要的人际接触,同时还确保在客户违反这些协议时向客户发出警报。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face Mask and Social Distancing Detection for Surveillance Systems
There is a huge panic among the people in recent times due to the spread of communicable diseases. People are in close vicinity to one another when in closed spaces like shops, restaurants, classrooms, etc. There is also a cause for worry in workplaces regarding the safety of the workplace. This paper discusses about two models which can be used to detect the distance between people to ensure social distancing and to detect if people are wearing a mask which can be implemented to follow safety measures. To implement these models deep learning techniques are used. For the social distancing model object detection is done to detect humans and this is done through the YOLOv3. For the mask detection model, the MobileNetV2 is the algorithm which is used for classification. This is used to detect if the people are wearing a mask. These two models can be used for the purpose of prevention against widely spreading diseases. For example, if the people of an organization have to request their customers to stay 6 feet apart or wear a mask in cases where the customers are not following the standard safety protocols, the people of the organization should go directly up to them and request for it. This increases the contact between people and at the same time increases the risk factor for the people working in that organization. When these models are implemented, it reduces unnecessary human contact while also ensuring to alert the customers if they break these protocols.
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