Immediate Proximity Detection Using Wi-Fi-Enabled Smartphones
Zach Van Hyfte, Avideh Zakhor

TL;DR
This paper develops Wi-Fi-based machine learning classifiers to accurately detect whether two smartphones are within 2 meters, improving proximity detection for contact tracing beyond Bluetooth limitations.
Contribution
It introduces specialized classifiers for different Wi-Fi environment conditions to enhance proximity detection accuracy in contact tracing applications.
Findings
Classifiers achieve 66.8% to 77.8% balanced accuracy.
Environment-specific classifiers outperform general models.
Detection accuracy varies with the number of detectable Wi-Fi Access Points.
Abstract
Smartphone apps for exposure notification and contact tracing have been shown to be effective in controlling the COVID-19 pandemic. However, Bluetooth Low Energy tokens similar to those broadcast by existing apps can still be picked up far away from the transmitting device. In this paper, we present a new class of methods for detecting whether or not two Wi-Fi-enabled devices are in immediate physical proximity, i.e. 2 or fewer meters apart, as established by the U.S. Centers for Disease Control and Prevention (CDC). Our goal is to enhance the accuracy of smartphone-based exposure notification and contact tracing systems. We present a set of binary machine learning classifiers that take as input pairs of Wi-Fi RSSI fingerprints. We empirically verify that a single classifier cannot generalize well to a range of different environments with vastly different numbers of detectable Wi-Fi…
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