鲁棒人脸欺骗检测中深度局部特征的学习

G. Souza, J. Papa, A. Marana
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引用次数: 29

摘要

生物识别技术成为安全系统的一个强大解决方案。然而,鉴于生物识别应用程序的传播,犯罪分子正在开发技术,通过模拟合法用户的身体或行为特征(欺骗攻击)来绕过它们。尽管人脸是一个很有前途的特征,因为它的普遍性、可接受性和几乎无处不在的摄像头,但人脸识别系统极易受到此类欺诈的影响,因为它们很容易被普通的打印面部照片所欺骗。基于卷积神经网络(cnn)的最新方法在人脸欺骗检测中表现出良好的效果。然而,这些方法没有考虑到从每个面部区域学习深度局部特征的重要性,尽管从人脸识别中我们知道每个面部区域呈现不同的视觉方面,这也可以用于人脸欺骗检测。在这项工作中,我们提出了一种新的CNN架构,分为两步训练。最初,神经网络的每个部分从给定的面部区域学习特征。然后,整个模型在整个面部图像上进行微调。结果表明,这种预训练步骤使CNN能够学习不同的局部欺骗线索,提高了最终模型的性能和收敛速度,优于目前最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the Learning of Deep Local Features for Robust Face Spoofing Detection
Biometrics emerged as a robust solution for security systems. However, given the dissemination of biometric applications, criminals are developing techniques to circumvent them by simulating physical or behavioral traits of legal users (spoofing attacks). Despite face being a promising characteristic due to its universality, acceptability and presence of cameras almost everywhere, face recognition systems are extremely vulnerable to such frauds since they can be easily fooled with common printed facial photographs. State-of-the-art approaches, based on Convolutional Neural Networks (CNNs), present good results in face spoofing detection. However, these methods do not consider the importance of learning deep local features from each facial region, even though it is known from face recognition that each facial region presents different visual aspects, which can also be exploited for face spoofing detection. In this work we propose a novel CNN architecture trained in two steps for such task. Initially, each part of the neural network learns features from a given facial region. Afterwards, the whole model is fine-tuned on the whole facial images. Results show that such pre-training step allows the CNN to learn different local spoofing cues, improving the performance and the convergence speed of the final model, outperforming the state-of-the-art approaches.
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