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SmartDistance: A Mobile-based Positioning System for Automatically Monitoring Social Distance

机译:SmartDistance:一种用于自动监控社交距离的移动产品定位系统

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Coronavirus disease 2019 (COVID-19) has resulted in an ongoing pandemic. Since COVID-19 spreads mainly via close contact among people, social distancing has become an effective manner to slow down the spread. However, completely forbidding close contact can also lead to unacceptable damage to the society. Thus, a system that can effectively monitor people’s social distance and generate corresponding alerts when a high infection probability is detected is in urgent need.In this paper, we propose SmartDistance, a smartphone based software framework that monitors people’s interaction in an effective manner, and generates a reminder whenever the infection probability is high. Specifically, SmartDistance dynamically senses both the relative distance and orientation during social interaction with a well-designed relative positioning system. In addition, it recognizes different events (e.g., speaking, coughing) and determines the infection space through a droplet transmission model. With event recognition and relative positioning, SmartDistance effectively detects risky social interaction, generates an alert immediately, and records the relevant data for close contact reporting. We prototype SmartDistance on different Android smartphones, and the evaluation shows it reduces the false positive rate from 33% to 1% and the false negative rate from 5% to 3% in infection risk detection.
机译:冠状病毒疾病2019(Covid-19)导致了持续的大流行。由于Covid-19主要通过人们的密切联系方式,社会偏移已成为减缓蔓延的有效方式。然而,完全禁止密切联系也可能导致社会造成不可接受的伤害。因此,当检测到高感染概率时,可以有效地监测人们社交距离并产生相应的警报的系统迫切需要。在本文中,我们提出了一种基于智能手机的智能电信率,以有效的方式监测人们的互动,以及每当感染概率高时,会产生提醒。具体地,SmartDistance在与设计精心设计的相对定位系统中动态地感测到社交交互期间的相对距离和方向。另外,它识别不同的事件(例如,说话,咳嗽)并通过液滴传输模型来确定感染空间。通过事件识别和相对定位,SmartDistance有效地检测到风险性的社交交互,立即生成警报,并记录相关数据以进行关闭的联系报告。我们在不同的Android智能手机上原型智能数据,评价显示它将假阳性率从33%降低到1%,假阴性率从5%到3%的感染风险检测。

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