Directed Adversarial Attacks on Fingerprints using Attributions

S. Fernandes, Sunny Raj, Eddy Ortiz, Iustina Vintila, Sumit Kumar Jha
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引用次数: 3

Abstract

Fingerprint recognition systems verify the identity of individuals and provide access to secure information in various commercial applications. However, with advancements in artificial intelligence, fingerprint-based security methods are vulnerable to attack. Such a breach has the potential to compromise confidential, private and valuable information. In this paper, we attack a state-of-the-art fingerprint recognition system based on transfer learning. Our approach uses attribution analysis to identify the fingerprint region crucial to correct classification, and then perturbs the fingerprint using error masks derived from a neural network to generate an adversarial fingerprint.Image quality assessment metrics applied to calculate the difference between the original and perturbed fingerprints include average difference, maximum difference, normalized absolute error, and peak signal to noise ratio. On the ATVS fingerprint dataset, the differences between these values in the original and corresponding perturbed fingerprint images are negligible. Further, the VeriFinger SDK is used to detect the minutiae and perform matching between the original and perturbed fingerprints. The matching score is above 250, which reinforces the fact that there is virtually no loss between the original and perturbed fingerprints.
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利用属性对指纹进行定向对抗性攻击
指纹识别系统验证个人的身份,并在各种商业应用中提供访问安全信息的途径。然而,随着人工智能的进步,基于指纹的安全方法很容易受到攻击。这样的违规行为有可能损害机密、私人和有价值的信息。本文研究了一种基于迁移学习的指纹识别系统。该方法首先利用归因分析方法识别出对正确分类至关重要的指纹区域,然后利用神经网络生成的误差掩码对指纹进行扰动,生成对抗指纹。图像质量评估指标包括平均差值、最大差值、归一化绝对误差和峰值信噪比。在ATVS指纹数据集上,这些值在原始指纹图像和相应的扰动指纹图像中的差异可以忽略不计。此外,VeriFinger SDK用于检测细节,并在原始指纹和受干扰的指纹之间进行匹配。匹配分数在250以上,这进一步证明了原始指纹和被干扰的指纹之间几乎没有丢失。
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