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An Ensemble Model for Face Liveness Detection

Authors :
Shekhar, Shashank
Patel, Avinash
Haloi, Mrinal
Salim, Asif
Publication Year :
2022

Abstract

In this paper, we present a passive method to detect face presentation attack a.k.a face liveness detection using an ensemble deep learning technique. Face liveness detection is one of the key steps involved in user identity verification of customers during the online onboarding/transaction processes. During identity verification, an unauthenticated user tries to bypass the verification system by several means, for example, they can capture a user photo from social media and do an imposter attack using printouts of users faces or using a digital photo from a mobile device and even create a more sophisticated attack like video replay attack. We have tried to understand the different methods of attack and created an in-house large-scale dataset covering all the kinds of attacks to train a robust deep learning model. We propose an ensemble method where multiple features of the face and background regions are learned to predict whether the user is a bonafide or an attacker.<br />Comment: Accepted and presented at MLDM 2022. To be published in Lattice journal

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2201.08901
Document Type :
Working Paper