Adversarial Perturbations Against Fingerprint Based Authentication Systems

S. Marrone, Carlo Sansone
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引用次数: 4

Abstract

Fingerprint-based Authentication Systems (FAS) usage is increasing over the last years thanks to the growing availability of cheap and reliable scanners. In order to bypass a FAS by using a counterfeit fingerprint, a Presentation Attack (PA) can be used. As a consequence, a liveness detector able to discern authentic from fake biometry becomes almost essential in each FAS. Deep Learning based approaches demonstrated to be very effective against fingerprint presentation attacks, becoming the current state-of-the-art in liveness detection. However, it has been shown that it is possible to arbitrarily cause state-of-the-art CNNs to misclassify an image by applying on it a suitable small peturbation, often even imperceptible to human eyes. The aim of this work is to understand if and to what extent adversarial perturbation can affect FASs, as a preliminary step to develop an adversarial presentation attack. Results show that it is possible to exploit adversarial perturbation to mislead both the FAS liveness detector and the authentication system, by giving rise to images that are even almost imperceptible to human eyes.
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针对指纹认证系统的对抗性扰动
由于廉价可靠的扫描仪越来越多,基于指纹的身份验证系统(FAS)的使用量在过去几年中不断增加。为了通过伪造指纹绕过FAS,可以使用呈现攻击(Presentation Attack, PA)。因此,在每个FAS中,能够辨别真假生物特征的活体检测器几乎是必不可少的。基于深度学习的方法被证明对指纹呈现攻击非常有效,成为活体检测的最新技术。然而,有研究表明,通过在图像上施加合适的小扰动(通常是人眼无法察觉的),可以任意地使最先进的cnn对图像进行错误分类。这项工作的目的是了解对抗性扰动是否以及在多大程度上影响FASs,作为开发对抗性呈现攻击的初步步骤。结果表明,通过产生人眼几乎无法察觉的图像,利用对抗性扰动来误导FAS活性检测器和认证系统是可能的。
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