CONTAIN: Privacy-oriented Contact Tracing Protocols for Epidemics

04/10/2020
by   Arvin Hekmati, et al.
0

Pandemic and epidemic diseases such as CoVID-19, SARS-CoV2, and Ebola have spread to multiple countries and infected thousands of people. Such diseases spread mainly through person-to-person contacts. Health care authorities recommend contact tracing procedures to prevent the spread to a vast population. Although several mobile applications have been developed to trace contacts, they typically require collection of privacy-intrusive information such as GPS locations, and the logging of privacy-sensitive data on a third party server, or require additional infrastructure such as WiFi APs with known locations. In this paper, we introduce CONTAIN, a privacy-oriented mobile contact tracing application that does not rely on GPS or any other form of infrastructure-based location sensing, nor the continuous logging of any other personally identifiable information on a server. The goal of CONTAIN is to allow users to determine with complete privacy if they have been within a short distance, specifically, Bluetooth wireless range, of someone that is infected, and potentially also when. We identify and prove the privacy guarantees provided by our approach. Our simulation study utilizing an empirical trace dataset (Asturies) involving 100 mobile devices and around 60000 records shows that users can maximize their possibility of identifying if they were near an infected user by turning on the app during active times.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/04/2022

Simulating and visualizing COVID-19 contact tracing with Corona-Warn-App for increased understanding of its privacy-preserving design

The world is under an ongoing pandemic, COVID-19, of a scale last seen a...
research
05/22/2021

Digital Contact Tracing for Covid 19

The COVID19 pandemic created a worldwide emergency as it is estimated th...
research
06/23/2020

A Privacy-preserving Mobile and Fog Computing Framework to Trace and Prevent COVID-19 Community Transmission

To slow down the spread of COVID-19, governments around the world are tr...
research
09/10/2020

Bluetooth based Proximity, Multi-hop Analysis and Bi-directional Trust: Epidemics and More

In this paper, we propose a trust layer on top of Bluetooth and similar ...
research
03/31/2020

A Fully Distributed, Privacy Respecting Approach for Back-tracking of Potentially Infectious Contacts

In limiting the rapid spread of highly infectious diseases like Covid-19...
research
04/19/2020

InfecTracer: Approximate Nearest Neighbors Retrieval of GPS Location Traces to Retrieve Susceptible Cases

Epidemics, such as the present Covid-19 pandemic, usually spread at a ra...
research
04/30/2020

Privacy Preservation in Epidemic Data Collection

This work is inspired by the outbreak of COVID-19, and some of the chall...

Please sign up or login with your details

Forgot password? Click here to reset