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

04/19/2020
by   Chandan Biswas, et al.
0

Epidemics, such as the present Covid-19 pandemic, usually spread at a rapid rate. Standard models, e.g., the SIR model, have stressed on the importance of finding the susceptible cases to flatten the growth rate of the spread of infection as early as possible. In the present scientific world, location traces in the form of GPS coordinates are logged by mobile device manufacturing and their operating systems developing companies, such as Apple, Samsung, Google etc. However, due to the sensitive nature of this data, it is usually not shared with other organisations, mainly to protect individual privacy. However, in disaster situations, such as epidemics, data in the form of location traces of a community of people can potentially be helpful to proactively locate susceptible people from the community and enforce quarantine on them as early as possible. Since procuring such data for the purpose of restricted use is difficult (time-consuming) due to the sensitive nature of the data, a strong case needs to be made that how could such data be useful in disaster situations. The aim of this article is to to demonstrate a proof-of-the-concept that with the availability of massive amounts of real check-in data, it is feasible to develop a scalable system that is both effective (in terms of identifying the susceptible people) and efficient (in terms of the time taken to do so). We believe that this proof-of-the-concept will encourage sharing (with restricted use) of such sensitive data in order to help mitigate disaster situations. In this article, we describe a software resource to efficiently (consuming a small run-time) locate a set of susceptible persons given a global database of user check-ins and a set of infected people. Specifically, we describe a system, named InfecTracer, that seeks to find out cases of close proximity of a person with another infected person.

READ FULL TEXT

page 1

page 2

page 3

research
05/27/2020

CoVista: A Unified View on Privacy Sensitive Mobile Contact Tracing Effort

Governments around the world have become increasingly frustrated with te...
research
04/10/2020

CONTAIN: Privacy-oriented Contact Tracing Protocols for Epidemics

Pandemic and epidemic diseases such as CoVID-19, SARS-CoV2, and Ebola ha...
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
01/01/2021

Privacy-preserving Travel Time Prediction with Uncertainty Using GPS Trace Data

The rapid growth of GPS technology and mobile devices has led to a massi...
research
06/10/2020

Trading Privacy for the Greater Social Good: How Did America React During COVID-19?

Digital contact tracing and analysis of social distancing from smartphon...
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
08/05/2022

Lisbon Hotspots: Wi-Fi access point dataset for time-bound location proofs

Wi-Fi hotspots are a valuable resource for people on the go, especially ...

Please sign up or login with your details

Forgot password? Click here to reset