Exploiting Out-of-band Motion Sensor Data to De-anonymize Virtual Reality Users
Mohd Sabra, Nisha Vinayaga Sureshkanth, Ari Sharma, Anindya Maiti,, Murtuza Jadliwala

TL;DR
This paper demonstrates that by correlating virtual avatar movements with out-of-band motion sensor data, it is possible to de-anonymize VR users, revealing significant privacy vulnerabilities in VR systems.
Contribution
It introduces a novel framework combining activity classification and data correlation to de-anonymize VR users using auxiliary motion sensor data.
Findings
De-anonymization attack is feasible with high accuracy.
Motion sensor data can reliably link virtual activities to real identities.
The framework works across various experimental settings.
Abstract
Virtual Reality (VR) is an exciting new consumer technology which offers an immersive audio-visual experience to users through which they can navigate and interact with a digitally represented 3D space (i.e., a virtual world) using a headset device. By (visually) transporting users from the real or physical world to exciting and realistic virtual spaces, VR systems can enable true-to-life and more interactive versions of traditional applications such as gaming, remote conferencing, social networking and virtual tourism. However, as with any new consumer technology, VR applications also present significant user-privacy challenges. This paper studies a new type of privacy attack targeting VR users by connecting their activities visible in the virtual world (enabled by some VR application/service) to their physical state sensed in the real world. Specifically, this paper analyzes the…
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Taxonomy
TopicsInternet Traffic Analysis and Secure E-voting · Anomaly Detection Techniques and Applications · Network Security and Intrusion Detection
