Spoofing attack detection by anomaly detection

Date

2019

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Source Title

Proceedings of the 44th IEEE International Conference on Acoustics, Speech, and Signal Processing, ICASSP 2019

Print ISSN

1520-6149

Electronic ISSN

2379-190X

Publisher

Institute of Electrical and Electronics Engineers Inc.

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Pages

8464 - 8468

Language

English

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Abstract

Spoofing attacks on biometric systems can seriously compromise their practical utility. In this paper we focus on face spoofing detection. The majority of papers on spoofing attack detection formulate the problem as a two or multiclass learning task, attempting to separate normal accesses from samples of different types of spoofing attacks. In this paper we adopt the anomaly detection approach proposed in [1], where the detector is trained on genuine accesses only using one-class classifiers and investigate the merit of subject specific solutions. We show experimentally that subject specific models are superior to the commonly used client independent method. We also demonstrate that the proposed approach is more robust than multiclass formulations to unseen attacks.

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Published Version (Please cite this version)