论文标题
COVID-19和您的智能手机:基于BLE的智能联系人跟踪
COVID-19 and Your Smartphone: BLE-based Smart Contact Tracing
论文作者
论文摘要
在防止传染病的传播方面,接触追踪至关重要。接触跟踪通常由授权人员手动执行。手动接触跟踪是一个效率低下,容易出错的,耗时的,对人群的效用有限的过程,因为与受感染者密切接触的人是通知的小时(如果不是几天的话)。本文介绍了一种手动接触跟踪的替代方法。拟议的智能接触跟踪(SCT)系统利用智能手机的蓝牙低能(BLE)信号和机器学习分类器来准确,快速确定联系人配置文件。 SCT的贡献是两个方面:a)使用精确接近感测度将用户的联系人分类为高/低风险,b)使用隐私性通信协议用户匿名。 SCT利用BLE的不可连接的广告功能在用户在公共空间中时播放签名数据包。广播和观察到的签名都存储在用户的智能手机中,并且当公共卫生当局确认用户被感染时,它们才被上传到安全的签名数据库。使用接收的信号强度(RSS),每个智能手机估计其与其他用户手机的距离,并在违反社交距离规则时会发出实时警报。本文包括利用现实生活中的智能手机位置以及对五个机器学习分类器的比较评估的广泛实验。报告的结果表明,决策树分类器在准确性方面优于艺术分类方法的其他状态。最后,为了促进该领域的研究,并为及时开发高级解决方案做出了贡献,整个数据集(六个实验)具有约123,000个数据点,可以公开使用。
Contact tracing is of paramount importance when it comes to preventing the spreading of infectious diseases. Contact tracing is usually performed manually by authorized personnel. Manual contact tracing is an inefficient, error-prone, time-consuming process of limited utility to the population at large as those in close contact with infected individuals are informed hours, if not days, later. This paper introduces an alternative way to manual contact tracing. The proposed Smart Contact Tracing (SCT) system utilizes the smartphone's Bluetooth Low Energy (BLE) signals and machine learning classifier to accurately and quickly determined the contact profile. SCT's contribution is two-fold: a) classification of the user's contact as high/low-risk using precise proximity sensing, and b) user anonymity using a privacy-preserving communications protocol. SCT leverages BLE's non-connectable advertising feature to broadcast a signature packet when the user is in the public space. Both broadcasted and observed signatures are stored in the user's smartphone and they are only uploaded to a secure signature database when a user is confirmed by public health authorities to be infected. Using received signal strength (RSS) each smartphone estimates its distance from other user's phones and issues real-time alerts when social distancing rules are violated. The paper includes extensive experimentation utilizing real-life smartphone positions and a comparative evaluation of five machine learning classifiers. Reported results indicate that a decision tree classifier outperforms other states of the art classification methods in terms of accuracy. Lastly, to facilitate research in this area, and to contribute to the timely development of advanced solutions the entire data set of six experiments with about 123,000 data points is made publicly available.