论文标题

处理身体诱导的热签名,用于物理距离和温度筛查

Processing of body-induced thermal signatures for physical distancing and temperature screening

论文作者

Savazzi, Stefano, Rampa, Vittorio, Costa, Leonardo, Kianoush, Sanaz, Tolochenko, Denis

论文摘要

对公共环境中人们的大规模和不受欢迎的筛查正成为确保拥挤的共享空间安全以及支持早期非侵入性诊断和对疾病暴发的反应的关键任务。在各种传感器和物联网(IoT)技术中,基于低成本红外(IR)阵列传感器的热视觉系统,可以跟踪移动人员引起的热标志。与利用短距离通信的接触跟踪应用程序不同,基于红外的传感系统是被动的,因为它们不需要对主题的合作,也不对用户隐私构成威胁。本文开发了一个信号处理框架,该框架可以在自动化温度筛选过程的同时对受试者移动性进行联合分析。该系统由基于IR的传感器组成,该传感器通过温度测量来监视主题运动和健康状况。传感器通过无线物联网工具进行联网,并根据不同的配置(墙壁或天花板安装的设置)进行部署。除了检测接近IR传感器的受试者的异常体温度外,该系统通过跟踪受试者的相互距离和到达方向来针对受试者的关节被动定位。本文着眼于贝叶斯方法,还解决了使用现场测量的最佳实践和相关实施挑战。拟议的框架是隐私性的,它可以用于公共和私人服务,用于医疗保健,智能生活和共享空间场景,而无需任何隐私问题。不同的配置也被认为针对工业,智能空间和生活环境。

Massive and unobtrusive screening of people in public environments is becoming a critical task to guarantee safety in congested shared spaces, as well as to support early non-invasive diagnosis and response to disease outbreaks. Among various sensors and Internet of Things (IoT) technologies, thermal vision systems, based on low-cost infrared (IR) array sensors, allow to track thermal signatures induced by moving people. Unlike contact tracing applications that exploit short-range communications, IR-based sensing systems are passive, as they do not need the cooperation of the subject(s) and do not pose a threat to user privacy. The paper develops a signal processing framework that enables the joint analysis of subject mobility while automating the temperature screening process. The system consists of IR-based sensors that monitor both subject motions and health status through temperature measurements. Sensors are networked via wireless IoT tools and are deployed according to different configurations (wall- or ceiling-mounted setups). The system targets the joint passive localization of subjects by tracking their mutual distance and direction of arrival, in addition to the detection of anomalous body temperatures for subjects close to the IR sensors. Focusing on Bayesian methods, the paper also addresses best practices and relevant implementation challenges using on field measurements. The proposed framework is privacy-neutral, it can be employed in public and private services for healthcare, smart living and shared spaces scenarios without any privacy concerns. Different configurations are also considered targeting both industrial, smart space and living environments.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源