De-authentication using Ambient Light Sensor
Ankit Gangwal, Aashish Paliwal, Mauro Conti

TL;DR
This paper introduces DEAL, an inexpensive and fast de-authentication method using a device's ambient light sensor to detect user departure, effectively preventing unauthorized session hijacking in workplace settings.
Contribution
DEAL is a novel approach that leverages built-in ambient light sensors for quick, reliable, and cost-effective de-authentication without additional hardware.
Findings
De-authenticates users within 4 seconds
Achieves 89.15% hit rate and 7.35% fall-out
Resistant to natural lighting changes and difficult to bypass
Abstract
While user authentication happens before initiating or resuming a login session, de-authentication detects the absence of a previously-authenticated user to revoke her currently active login session. The absence of proper de-authentication can lead to well-known lunchtime attacks, where a nearby adversary takes over a carelessly departed user's running login session. The existing solutions for automatic de-authentication have distinct practical limitations, e.g., extraordinary deployment requirements or high initial cost of external equipment. In this paper, we propose "DE-authentication using Ambient Light sensor" (DEAL), a novel, inexpensive, fast, and user-friendly de-authentication approach. DEAL utilizes the built-in ambient light sensor of a modern computer to determine if the user is leaving her work-desk. DEAL, by design, is resilient to natural shifts in lighting conditions…
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Taxonomy
TopicsUser Authentication and Security Systems · Advanced Malware Detection Techniques · Biometric Identification and Security
