BehaVR: User Identification Based on VR Sensor Data
Ismat Jarin, Yu Duan, Rahmadi Trimananda, Hao Cui, Salma Elmalaki,, Athina Markopoulou

TL;DR
This paper introduces BehaVR, a framework that demonstrates how VR sensor data can be used to accurately identify users, highlighting significant privacy risks across diverse applications and adversary capabilities.
Contribution
BehaVR is the first comprehensive analysis of user identification using all available VR sensor data across multiple real-world apps, revealing privacy vulnerabilities.
Findings
Machine learning models achieved up to 100% user identification accuracy.
Sensor data features vary in importance depending on app functionality and adversary scope.
VR sensor data can uniquely identify users even without explicit identifiers.
Abstract
Virtual reality (VR) platforms enable a wide range of applications, however, pose unique privacy risks. In particular, VR devices are equipped with a rich set of sensors that collect personal and sensitive information (e.g., body motion, eye gaze, hand joints, and facial expression). The data from these newly available sensors can be used to uniquely identify a user, even in the absence of explicit identifiers. In this paper, we seek to understand the extent to which a user can be identified based solely on VR sensor data, within and across real-world apps from diverse genres. We consider adversaries with capabilities that range from observing APIs available within a single app (app adversary) to observing all or selected sensor measurements across multiple apps on the VR device (device adversary). To that end, we introduce BehaVR, a framework for collecting and analyzing data from all…
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Taxonomy
TopicsUser Authentication and Security Systems · Advanced Malware Detection Techniques · Anomaly Detection Techniques and Applications
