PCT-TEE: Trajectory-based Private Contact Tracing System with Trusted Execution Environment
Fumiyuki Kato, Yang Cao, and Masatoshi Yoshikawa

TL;DR
This paper introduces PCT-TEE, a trajectory-based private contact tracing system utilizing Trusted Execution Environment to detect both direct and indirect contacts efficiently while preserving user privacy.
Contribution
The paper proposes a novel TEE-based system for private contact tracing that supports indirect contact detection and flexible risk rule adjustments using trajectory data.
Findings
Processes thousands of queries in seconds
Handles tens of millions of trajectory records
Supports both direct and indirect contact detection
Abstract
Existing Bluetooth-based Private Contact Tracing (PCT) systems can privately detect whether people have come into direct contact with COVID-19 patients. However, we find that the existing systems lack functionality and flexibility, which may hurt the success of the contact tracing. Specifically, they cannot detect indirect contact (e.g., people may be exposed to coronavirus because of used the same elevator even without direct contact); they also cannot flexibly change the rules of "risky contact", such as how many hours of exposure or how close to a COVID-19 patient that is considered as risk exposure, which may be changed with the environmental situation. In this paper, we propose an efficient and secure contact tracing system that enables both direct contact and indirect contact. To address the above problems, we need to utilize users' trajectory data for private contact tracing,…
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Taxonomy
TopicsVehicular Ad Hoc Networks (VANETs) · COVID-19 Digital Contact Tracing · Privacy-Preserving Technologies in Data
