Privatar: Scalable Privacy-preserving Multi-user VR via Secure Offloading
Jianming Tong, Hanshen Xiao, Krishna Kumar Nair, Hao Kang, Ashish Sirasao, Ziqi Zhang, G. Edward Suh, Tushar Krishna

TL;DR
Privatar is a scalable framework for privacy-preserving multi-user VR that offloads avatar rendering to untrusted local devices, using domain-specific techniques to ensure privacy with minimal utility loss.
Contribution
It introduces a novel offloading method combining frequency-domain partitioning and distribution-aware perturbation for formal privacy guarantees in multi-user VR.
Findings
Supports 2.37x more users on a Meta Quest Pro
Achieves 6.5% higher reconstruction loss with minimal energy overhead
Provides provable privacy against empirical and NN-based attacks
Abstract
Multi-user virtual reality enables immersive interaction. However, rendering avatars for numerous participants on each headset incurs prohibitive computational overhead, limiting scalability. We introduce a framework, Privatar, to offload avatar reconstruction from headset to untrusted devices within the same local network while safeguarding attacks against adversaries capable of intercepting offloaded data. Privatar's key insight is that domain-specific knowledge of avatar reconstruction enables provably private offloading at minimal cost. (1) System level. We observe avatar reconstruction is frequency-domain decomposable via BDCT with negligible quality drop, and propose Horizontal Partitioning (HP) to keep high-energy frequency components on-device and offloads only low-energy components. HP offloads local computation while reducing information leakage to low-energy subsets only. (2)…
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