Visible to the public Adversarial Biometric Recognition : A review on biometric system security from the adversarial machine-learning perspectiveConflict Detection Enabled

TitleAdversarial Biometric Recognition : A review on biometric system security from the adversarial machine-learning perspective
Publication TypeJournal Article
Year of Publication2015
AuthorsB. Biggio, g. fumera, P. Russu, L. Didaci, F. Roli
JournalIEEE Signal Processing Magazine
Volume32
Pagination31-41
Date PublishedSept
ISSN1053-5888
Keywordsadaptive face-recognition system, adversarial biometric recognition, Articles of Interest, Behavioral science, biometric recognition systems, biometric security, biometric system security, biometric systems, biometrics (access control), C3E 2019, Cognitive Security, Extraction, face spoofing attack, feature extraction, image recognition, learning (artificial intelligence), machine learning, machine learning algorithms, machine-learning, Pattern recognition, security, Signal processing algorithms
Abstract

In this article, we review previous work on biometric security under a recent framework proposed in the field of adversarial machine learning. This allows us to highlight novel insights on the security of biometric systems when operating in the presence of intelligent and adaptive attackers that manipulate data to compromise normal system operation. We show how this framework enables the categorization of known and novel vulnerabilities of biometric recognition systems, along with the corresponding attacks, countermeasures, and defense mechanisms. We report two application examples, respectively showing how to fabricate a more effective face spoofing attack, and how to counter an attack that exploits an unknown vulnerability of an adaptive face-recognition system to compromise its face templates.

DOI10.1109/MSP.2015.2426728
Citation Key7192841