Efficient Width-Extended Convolutional Neural Network for Robust Face Spoofing Detection

G. Souza, D. F. S. Santos, R. G. Pires, J. Papa, A. Marana
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引用次数: 4

Abstract

Biometrics has been increasingly used as a safe and convenient technique for people identification. Despite the higher security of biometric systems, criminals have already developed methods to circumvent them, being the presentation of fake biometric information to the input sensor (spoofing attack) the easiest way. Face is considered one of the most promising biometric traits for people identification, including in mobile devices. However, face recognition systems can be easily fooled, for instance, by presenting to the sensor a printed photograph, a 3D mask, or a video recorded from the face of a legal user. Recently, despite some CNNs (Convolutional Neural Networks) based approaches have achieved state-of-the-art results in face spoofing detection, in most of the cases the proposed architectures are very deep, being unsuitable for devices with hardware restrictions. In this work, we propose an efficient architecture for face spoofing detection based on a width-extended CNN, which we called wCNN. Each part of wCNN is trained, separately, in a given region of the face, then their outputs are combined in order to decide whether the face presented to the sensor is real or fake. The proposed approach, which learns deep local features from each facial region due to its width-wide architecture, presented better accuracy than state-of-the-art methods, including the well-referenced fine-tuned VGG-Face, while being much more efficient regarding hardware resources and processing time.
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高效宽扩展卷积神经网络鲁棒人脸欺骗检测
生物识别技术作为一种安全、便捷的身份识别技术已得到越来越多的应用。尽管生物识别系统的安全性更高,但犯罪分子已经开发出了绕过它们的方法,最简单的方法是向输入传感器提供虚假的生物识别信息(欺骗攻击)。人脸被认为是最有前途的生物识别特征之一,包括在移动设备中。然而,人脸识别系统很容易被欺骗,例如,通过向传感器提供打印照片,3D面具或合法用户面部录制的视频。最近,尽管一些基于cnn(卷积神经网络)的方法在人脸欺骗检测中取得了最先进的结果,但在大多数情况下,所提出的架构非常深入,不适合有硬件限制的设备。在这项工作中,我们提出了一种基于宽度扩展CNN的高效人脸欺骗检测架构,我们称之为wCNN。wCNN的每个部分分别在给定的人脸区域进行训练,然后将它们的输出组合起来,以确定呈现给传感器的人脸是真还是假。所提出的方法,由于其宽架构,从每个面部区域学习深度局部特征,比最先进的方法(包括良好参考的微调VGG-Face)具有更高的准确性,同时在硬件资源和处理时间方面效率更高。
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