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Author 1
Shahid Latif
University of the West of England, United Kingdom
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ICCK Contributions

Research Article | 15 October 2025
NeuroPrivateVR: A Differential Privacy Framework for Secure Emotion Data in Immersive Virtual Reality
ICCK Transactions on Information Security and Cryptography | Volume 1, Issue 1: 42-51, 2025 | DOI: 10.62762/TISC.2025.954549
Abstract
VR empirical data include the sensitive affective and behavioral data (e.g. gaze patterns, physiological signals, facial expressions), placing a person at the risk of re-identification. Tailored privacy-preserving approaches to immersive data have not, however, received much attention in the recent affective-computing investigations. In the present paper, a differentially-privacy (DP) framework is presented as that allows anonymizing VR-based studies of emotion without losing scientific value. The first one is the quantification of re-identification risks through empirical linkage and inference attacks and then the mitigation of the risk through DP mechanisms such as Laplace noise, that soug... More >

Graphical Abstract
NeuroPrivateVR: A Differential Privacy Framework for Secure Emotion Data in Immersive Virtual Reality