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带可穿戴磁场接近传感器的社交距离监测器。

Social Distance Monitor with a Wearable Magnetic Field Proximity Sensor.

机构信息

German Research Center for Artificial Intelligence (DFKI), 67663 Kaiserslautern, Germany.

Department of Computer Science, University of Kaiserslautern, 67663 Kaiserslautern, Germany.

出版信息

Sensors (Basel). 2020 Sep 7;20(18):5101. doi: 10.3390/s20185101.

Abstract

Social distancing and contact/exposure tracing are accepted to be critical strategies in the fight against the COVID-19 epidemic. They are both closely connected to the ability to reliably establish the degree of proximity between people in real-world environments. We proposed, implemented, and evaluated a wearable proximity sensing system based on an oscillating magnetic field that overcomes many of the weaknesses of the current state of the art Bluetooth based proximity detection. In this paper, we first described the underlying physical principle, proposed a protocol for the identification and coordination of the transmitter (which is compatible with the current smartphone-based exposure tracing protocols). Subsequently, the system architecture and implementation were described, finally an elaborate characterization and evaluation of the performance (both in systematic lab experiments and in real-world settings) were performed. Our work demonstrated that the proposed system is much more reliable than the widely-used Bluetooth-based approach, particularly when it comes to distinguishing between distances above and below the 2.0 m threshold due to the magnetic field's physical properties.

摘要

社交距离和接触/暴露追踪被认为是对抗 COVID-19 疫情的关键策略。它们都与可靠确定现实环境中人与人之间接近程度的能力密切相关。我们提出、实现和评估了一种基于振荡磁场的可穿戴接近感测系统,该系统克服了当前基于蓝牙的接近检测技术的许多弱点。在本文中,我们首先描述了基本的物理原理,提出了一种用于识别和协调发射器的协议(与当前基于智能手机的接触追踪协议兼容)。随后,描述了系统架构和实现,最后对性能进行了详细的特征描述和评估(包括在系统实验室实验和现实环境中)。我们的工作表明,与广泛使用的基于蓝牙的方法相比,所提出的系统可靠得多,尤其是在区分由于磁场物理特性而高于和低于 2.0 米阈值的距离时。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/da87/7571083/7fab7e0d4f3a/sensors-20-05101-g001.jpg

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