Going Incognito in the Metaverse: Achieving Theoretically Optimal Privacy-Usability Tradeoffs in VR

要旨

Virtual reality (VR) telepresence applications and the so-called "metaverse" promise to be the next major medium of human-computer interaction. However, with recent studies demonstrating the ease at which VR users can be profiled and deanonymized, metaverse platforms carry many of the privacy risks of the conventional internet (and more) while at present offering few of the defensive utilities that users are accustomed to having access to. To remedy this, we present the first known method of implementing an "incognito mode" for VR. Our technique leverages local ε-differential privacy to quantifiably obscure sensitive user data attributes, with a focus on intelligently adding noise when and where it is needed most to maximize privacy while minimizing usability impact. Our system is capable of flexibly adapting to the unique needs of each VR application to further optimize this trade-off. We implement our solution as a universal Unity (C#) plugin that we then evaluate using several popular VR applications. Upon faithfully replicating the most well-known VR privacy attack studies, we show a significant degradation of attacker capabilities when using our solution.

受賞
Best Paper
著者
Vivek C. Nair
University of California, Berkeley, Berkeley, California, United States
Gonzalo Munilla-Garrido
Technical University of Munich, Munich, Germany
Dawn Song
University of California, Berkeley, Berkeley, California, United States
論文URL

https://doi.org/10.1145/3586183.3606754

動画

会議: UIST 2023

ACM Symposium on User Interface Software and Technology

セッション: Teamwork Triumphs: Collaborative Experiences

Venetian Room
6 件の発表
2023-10-31 23:10:00
2023-11-01 00:30:00