CVCRIVMay 17, 2020

A Survey on Unknown Presentation Attack Detection for Fingerprint

arXiv:2005.08337v112 citations
Originality Synthesis-oriented
AI Analysis

This is an incremental survey that addresses the problem of unknown attack detection for fingerprint recognition systems, which are widely used in security applications like border control and ATMs.

The paper surveys existing fingerprint presentation attack detection (PAD) algorithms, focusing on the challenge of detecting unknown attacks, which is critical for real-world applications due to the inability to list all possible attacks in advance.

Fingerprint recognition systems are widely deployed in various real-life applications as they have achieved high accuracy. The widely used applications include border control, automated teller machine (ATM), and attendance monitoring systems. However, these critical systems are prone to spoofing attacks (a.k.a presentation attacks (PA)). PA for fingerprint can be performed by presenting gummy fingers made from different materials such as silicone, gelatine, play-doh, ecoflex, 2D printed paper, 3D printed material, or latex. Biometrics Researchers have developed Presentation Attack Detection (PAD) methods as a countermeasure to PA. PAD is usually done by training a machine learning classifier for known attacks for a given dataset, and they achieve high accuracy in this task. However, generalizing to unknown attacks is an essential problem from applicability to real-world systems, mainly because attacks cannot be exhaustively listed in advance. In this survey paper, we present a comprehensive survey on existing PAD algorithms for fingerprint recognition systems, specifically from the standpoint of detecting unknown PAD. We categorize PAD algorithms, point out their advantages/disadvantages, and future directions for this area.

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