面部生物特征呈现攻击的深度学习检测

Ahmed Muthanna Shibel, S. M. S. Ahmad, Luqman Hakim Musa, Mohammed Nawfal Yahya
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引用次数: 1

摘要

人脸识别系统在当今社会越来越重要,其应用范围从访问控制到安全系统,再到移动电话和笔记本电脑等电子设备。然而,人脸识别系统的安全性目前正受到欺骗攻击的威胁,当有人试图通过提供合法用户的照片、三维面具或重播视频来未经授权绕过生物识别系统时,就会发生欺骗攻击。视频攻击可能是欺骗人脸识别系统的最常见、最便宜、最简单的欺骗技术之一。本文的研究重点是视频攻击中的人脸活体检测,旨在通过从视频中提取帧并使用Resnet-50深度学习算法对其进行分类,来确定所提供的输入生物特征样本是来自活体人脸还是欺骗攻击。使用多数投票机制作为决策融合来得出最终裁决。实验在重播攻击数据集的恶搞视频上进行。结果表明,视频动态检测的最佳帧数为3帧,准确率为96.93%。这个结果是令人鼓舞的,因为低帧数需要最少的处理时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DEEP LEARNING DETECTION OF FACIAL BIOMETRIC PRESENTATION ATTACK
Face recognition systems have gained increasing importance in today’s society, which applications range from access controls to secure systems to electronic devices such as mobile phones and laptops. However, the security of face recognition systems is currently being threatened by the emergence of spoofing attacks that happens when someone tries to unauthorizedly bypass the biometric system by presenting a photo, 3-dimensional mask, or replay video of a legit user. The video attacks are perhaps one of the most frequent, cheapest, and simplest spoofing techniques to cheat face recognition systems. This research paper focuses on face liveness detection in video attacks, intending to determine if the provided input biometric samples came from a live face or spoof attack by extracting frames from the videos and classifying them by using the Resnet-50 deep learning algorithm. The majority voting mechanism is used as a decision fusion to derive a final verdict. The experiment was conducted on the spoof videos of the Replay-attack dataset. The results demonstrated that the optimal number of frames for video liveness detection is 3 with an accuracy of 96.93 %. This result is encouraging since the low number of frames requires minimal time for processing.
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