Poster: Unobtrusively Mining Vital Sign and Embedded Sensitive Info via AR/VR Motion Sensors

MobiHoc '23: Proceedings of the Twenty-fourth International Symposium on Theory, Algorithmic Foundations, and Protocol Design for Mobile Networks and Mobile Computing(2023)

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摘要
Despite the rapid growth of augmented reality and virtual reality (AR/VR) in various applications, the understanding of information leakage through sensor-rich headsets remains in its infancy. In this poster, we investigate an unobtrusive privacy attack, which exposes users' vital signs and embedded sensitive information (e.g., gender, identity, body fat ratio), based on unrestricted AR/VR motion sensors. The key insight is that the headset is closely mounted on the user's face, allowing the motion sensors to detect facial vibrations produced by users' breathing and heartbeats. Specifically, we employ deep-learning techniques to reconstruct vital signs, achieving signal qualities comparable to dedicated medical instruments, as well as deriving users' gender, identity, and body fat information. Experiments on three types of commodity AR/VR headsets reveal that our attack can successfully reconstruct high-quality vital signs, detect gender (accuracy over 93.33%), re-identify users (accuracy over 97.83%), and derive body fat ratio (error less than 4.43%).
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关键词
AR/VR headsets,Sensitive info,Vital Sign,Motion Sensors
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