论文标题

新常态:用于Covid-19的合作范式及时使用物联网和深度学习的及时检测和遏制

New Normal: Cooperative Paradigm for Covid-19 Timely Detection and Containment using Internet of Things and Deep Learning

论文作者

Kumbhar, Farooque Hassan, Hassan, Syed Ali, Shin, Soo Young

论文摘要

新颖的冠状病毒(Covid-19)的传播通过影响全球经济体给政府和卫生当局造成了数万亿美元的损失。这项研究的目的是引入一个连接的智能范式,不仅检测病毒的可能传播,还可以帮助重新启动业务/经济,并恢复社交生活。我们提出了一个基于连接的物联网(IoT)范式,该范式使用基于卷积神经网络(CNN),智能可穿戴和连接的电子健康来利用对象检测,以避免当前和将来的爆发。首先,连接的监视摄像机将连续的视频流馈送到服务器,在那里我们检测到对象间距离以识别任何社交距离违规行为。违规会激活基于区域的活动智能手机用户及其目前的疾病状态的监测。如果存在确认的患者或症状高的人,则系统跟踪暴露和感染的人,并采取适当的措施。我们评估了使用YOLO(仅查看一次)V2和V3的社会距离违规检测方案,并使用Python模拟进行了感染传播。

The spread of the novel coronavirus (COVID-19) has caused trillions of dollars in damages to the governments and health authorities by affecting the global economies. The purpose of this study is to introduce a connected smart paradigm that not only detects the possible spread of viruses but also helps to restart businesses/economies, and resume social life. We are proposing a connected Internet of Things ( IoT) based paradigm that makes use of object detection based on convolution neural networks (CNN), smart wearable and connected e-health to avoid current and future outbreaks. First, connected surveillance cameras feed continuous video stream to the server where we detect the inter-object distance to identify any social distancing violations. A violation activates area-based monitoring of active smartphone users and their current state of illness. In case a confirmed patient or a person with high symptoms is present, the system tracks exposed and infected people and appropriate measures are put into actions. We evaluated the proposed scheme for social distancing violation detection using YOLO (you only look once) v2 and v3, and for infection spread tracing using Python simulation.

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