Publication | Closed Access
Knowledge-driven Biometric Authentication in Virtual Reality
77
Citations
29
References
2020
Year
Unknown Venue
Hand Movement PatternsEngineeringBiometric PrivacyInformation SecurityBiometricsKnowledge-based Authentication SchemeWearable TechnologyInformation ForensicsVirtual HumanHardware SecurityImage AnalysisVirtual RealityReality MiningSoft BiometricsMachine VisionIdentity-based SecurityComputer ScienceData SecurityComputer VisionExtended RealityHuman-computer Interaction
With the increasing adoption of virtual reality (VR) in public spaces, protecting users from observation attacks is becoming essential to prevent attackers from accessing context-sensitive data or performing malicious payment transactions in VR. In this work, we propose RubikBiom, a knowledge-driven behavioural biometric authentication scheme for authentication in VR. We show that hand movement patterns performed during interactions with a knowledge-based authentication scheme (e.g., when entering a PIN) can be leveraged to establish an additional security layer. Based on a dataset gathered in a lab study with 23 participants, we show that knowledge-driven behavioural biometric authentication increases security in an unobtrusive way. We achieve an accuracy of up to 98.91% by applying a Fully Convolutional Network (FCN) on 32 authentications per subject. Our results pave the way for further investigations towards knowledge-driven behavioural biometric authentication in VR.
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