Proximity Inference with Wifi-Colocation during the COVID-19 Pandemic

26 Sep 2020  ·  Mikhail Dmitrienko, Abhishek Singh, Patrick Erichsen, Ramesh Raskar ·

In this work we propose a WiFi colocation methodology for digital contact tracing. The approach works by having a device scan and store nearby access point information to perform proximity inference. We make our approach resilient to different practical scenarios by configuring a device to turn into a hotspot if access points are unavailable, which makes the approach feasible in both dense urban areas and sparse rural places. We compare various shortcomings and advantages of this work over other conventional ways of doing digital contact tracing. Preliminary results indicate the feasibility of our approach for determining proximity between users, which is relevant for improving existing digital contact tracing and exposure notification implementations.

PDF Abstract
No code implementations yet. Submit your code now

Categories


Computers and Society Signal Processing

Datasets


  Add Datasets introduced or used in this paper