Over the past few years, Presentation Attack Detection (PAD) has become a fundamental part of facial recognition systems. Although much effort has been devoted to anti-spoofing research, generalization in real scenarios remains a challenge. In this paper we present a new open-source evaluation framework to study the generalization capacity of face PAD methods, coined here as face-GPAD. This framework facilitates the creation of new protocols focused on the generalization problem establishing fair procedures of evaluation and comparison between PAD solutions. We also introduce a large aggregated and categorized dataset to address the problem of incompatibility between publicly available datasets. Finally, we propose a benchmark adding two novel evaluation protocols: one for measuring the effect introduced by the variations in face resolution, and the second for evaluating the influence of adversarial operating conditions.
@article{arxiv.1904.06213,
title = {Generalized Presentation Attack Detection: a face anti-spoofing evaluation proposal},
author = {Artur Costa-Pazo and David Jimenez-Cabello and Esteban Vazquez-Fernandez and Jose L. Alba-Castro and Roberto J. López-Sastre},
journal= {arXiv preprint arXiv:1904.06213},
year = {2019}
}
Comments
8 pages, to appear at International Conference on Biometrics (ICB19)