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Manifold learning for user profiling and identity verification using motion sensors

journal contribution
posted on 2020-10-01, 00:00 authored by G Santos, P H Pisani, R Leyva, Chang-Tsun LiChang-Tsun Li, T Tavares, A Rocha
© 2020 Mobile devices are becoming ubiquitous and being increasingly used for data-sensitive activities such as communication, personal media storage, and banking. The protection of such data commonly relies on passwords and biometric traits such as fingerprints. These methods perform the user authentication sporadically and often require action from the user, which may make them susceptible to spoofing attacks. This scenario can be mitigated if we bring to bear motion-sensing based methods for authentication, which operate continuously and without requiring user action, hence are harder to attack. Such methods could be used allied with traditional authentication methods or on their own. This paper explores this idea in a novel user-agnostic approach for identity verification based on motion traits acquired by mobile sensors. The proposed approach does not require user-specific training before deployment in mobile devices nor does it require any extra sensor in the device. This solution is capable of learning a user profiling manifold from a small user subset and extend it to unknown users. We validated the proposal on two public datasets. The reported experiments demonstrate remarkable results under a cross-dataset protocol and an open-set setup. Moreover, we performed several analyses aiming at answering critical questions of a biometric method and the presented solution.

History

Journal

Pattern Recognition

Volume

106

Article number

107408

Pagination

1 - 16

Publisher

Elsevier

Location

Amsterdam, The Netherlands

ISSN

0031-3203

eISSN

1873-5142

Language

eng.

Publication classification

C1 Refereed article in a scholarly journal