Authors
Ivana Chingovska, André Anjos, Sébastien Marcel
Publication date
2013
Conference
Biometrics Workshop, CVPR 2013
Description
Besides the recognition task, today's biometric systems need to cope with additional problem: spoofing attacks. Up to date, academic research considers spoofing as a binary classification problem: systems are trained to discriminate between real accesses and attacks. However, spoofing counter-measures are not designated to operate stand-alone, but as a part of a recognition system they will protect. In this paper, we study techniques for decisionlevel and score-level fusion to integrate a recognition and anti-spoofing systems, using an open-source framework that handles the ternary classification problem (clients, impostors and attacks) transparently. By doing so, we are able to report the impact of different spoofing counter-measures, fusion techniques and thresholding on the overall performance of the final recognition system. For a specific usecase covering face verification, experiments show to what extent simple fusion improves the trustworthiness of the system when exposed to spoofing attacks.
Total citations
20132014201520162017201820192020202120222023202421171987732775
Scholar articles
I Chingovska, A Anjos, S Marcel - Proceedings of the IEEE conference on computer …, 2013