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Journal Article

Effect of Duration and Delay on the Identifiability of VR Motion

Abstract

Social virtual reality is an emerging medium of communication. In this medium, a user’s avatar (virtual representation) is controlled by the tracked motion of the user’s headset and hand controllers. This tracked motion is a rich data stream that can leak characteristics of the user or can be effectively matched to previously-identified data to identify a user. To better understand the boundaries of motion data identifiability, we investigate how varying training data duration and train-test delay affects the accuracy at which a machine learning model can correctly classify user motion in a supervised learning task simulating re-identification. The dataset we use has a unique combination of a large number of participants, long duration per session, large number of sessions, and a long time span over which sessions were conducted. We find that training data duration and train-test delay affect identifiability; that minimal train-test delay leads to very high accuracy; and that train-test delay should be controlled in future experiments.

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Author(s)
Mark Roman Miller
Vivek Nair
Eugy Han
Cyan DeVeaux
Christian Rack
Rui Wang
Brandon Huang
Marc Erich Latoschik
James F. O'Brien
Jeremy N. Bailenson
Journal Name
2024 IEEE 25th International Symposium on a World of Wireless, Mobile and Multimedia Networks (WoWMoM)
Publication Date
2024
DOI
10.1109/WoWMoM60985.2024.00023
Publisher
IEEE