The pandemic outbreak has profoundly changed our life, especially our social habits and communication behaviors. While this dramatic shock has heavily impacted human interaction rules, novel localization techniques are emerging to help society in complying with new policies, such as social distancing. Wireless sensing and machine learning are well suited to alleviate viruses propagation in a privacy-preserving manner. However, its wide deployment requires cost-effective installation and operational solutions. In public environments, individual localization information-such as social distancing-needs to be monitored to avoid safety threats when not properly observed. To this end, the high penetration of wireless devices can be exploited to continuously analyze-and-learn the propagation environment, thereby passively detecting breaches and triggering alerts if required. In this paper, we describe a novel passive and privacy-preserving human localization solution that relies on the directive transmission properties of mmWave communications to monitor social distancing and notify people in the area in case of violations. Thus, addressing the social distancing challenge in a privacy-preserving and cost-efficient manner. Our solution provides an overall accuracy of about 99% in the tested scenarios.
翻译:疫情的爆发深刻改变了我们的生活,特别是我们的社会习惯和交流行为。虽然这一剧烈冲击严重影响了人类互动规则,但新的本地化技术正在出现,以帮助社会遵守新的政策,如社会疏远。无线感知和机器学习非常适合以隐私保护的方式缓解病毒传播。然而,其广泛应用需要成本效益高的安装和操作解决方案。在公共环境中,个人本地化信息,如社会疏远需求,在未适当观察到安全威胁时需要监测以避免这种威胁。为此,无线装置的高渗透可以被用来不断分析和清除传播环境,从而被动地发现违规现象,并在必要时触发警报。在本文件中,我们描述了一种新的被动和隐私保护人类本地化解决方案,依赖毫米瓦通信指令传输特性来监测社会疏远,并在发生侵权时通知当地民众。因此,我们的解决办法以隐私保护和成本效益高的方式应对社会疏远的挑战。在经过测试的情景中提供了大约99%的总体准确度。