2022
DOI: 10.1155/2022/2134493
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SnapUnlock: A Contrastive Learning-Based Contactless Authentication via Heterogeneous Sensors

Abstract: Contactless authentication is crucial to keep social distance and prevent bacterial infection. However, existing authentication approaches, such as fingerprinting and face recognition, leverage sensors to verify static biometric features. They either increase the probability of indirect infection or inconvenience the users wearing masks. To tackle these problems, we propose a contactless behavioral biometric authentication mechanism that makes use of heterogeneous sensors. We conduct a preliminary study to dem… Show more

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