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  4. Learning One Class Representations for Presentation Attack Detection using Multi-channel Convolutional Neural Networks
 
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Learning One Class Representations for Presentation Attack Detection using Multi-channel Convolutional Neural Networks

George, Anjith
•
Marcel, Sébastien
2020

Face recognition has evolved as a widely used biometric modality. However, its vulnerability against presentation attacks poses a significant security threat. Though presentation attack detection (PAD) methods try to address this issue, they often fail in generalizing to unseen attacks. In this work, we propose a new framework for PAD using a one-class classifier, where the representation used is learned with a Multi-Channel Convolutional Neural Network (MCCNN). A novel loss function is introduced, which forces the network to learn a compact embedding for bonafide} class while being far from the representation of attacks. A one-class Gaussian Mixture Model is used on top of these embeddings for the PAD task. The proposed framework introduces a novel approach to learn a robust PAD system from bonafide and available (known) attack classes. This is particularly important as collecting bonafide data and simpler attacks are much easier than collecting a wide variety of expensive attacks. The proposed system is evaluated on the publicly available WMCA multi-channel face PAD database, which contains a wide variety of 2D and 3D attacks. Further, we have performed experiments with MLFP and SiW-M datasets using RGB channels only. Superior performance in unseen attack protocols shows the effectiveness of the proposed approach. Software, data, and protocols to reproduce the results are made available publicly

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Type
report
Author(s)
George, Anjith
Marcel, Sébastien
Date Issued

2020

Publisher

Idiap

Subjects

Anti-spoofing

•

Face Recognition

•

Convolutional neural network

•

Presentation Attack Detection

•

Reproducible research

•

Unseen Attack Detection

URL

Link to IDIAP database

http://publications.idiap.ch/downloads/reports/2020/George_Idiap-RR-15-2020.pdf
Written at

EPFL

EPFL units
LIDIAP  
Available on Infoscience
July 23, 2020
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/170334
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