二维抗欺骗人脸识别系统

A. Savanth, Kumar G R Manish, Prathyaksh Narayan, M. L. Nikhil, V. Gokul
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引用次数: 0

摘要

在过去的二十年中,人脸识别获得了极大的兴趣,是最有趣的研究领域之一。其原因可能是需要设计自动识别和监视系统或人机界面。这不仅涉及到模式识别、机器学习、计算机视觉和图像处理等各个领域的知识和贡献,还涉及到心理学和神经科学。人脸识别中有几个具有挑战性的因素,如照明、规模、表情和姿势,这些因素已经被一些研究人员解决了,以达到良好的识别率,但是,仍然没有一个强大的技术可以对抗来自环境、硬件和系统软件的不受控制的因素。面部识别系统是一种通过精确定位和测量图像中的面部特征来识别人脸的技术。人脸识别可以让人们在不需要钥匙的情况下进入建筑物,甚至可以加快机场安检的速度。但欺诈者可以像利用其他隐私技术一样利用人脸识别系统进行欺骗。这种欺骗攻击可能相当严重。黑客将能够进入安全设施、建筑物和家庭,从而破坏关键和机密数据。本文提出了一种具有防欺骗特征的人脸识别系统。采用ResNet50神经网络架构对人脸识别模型进行训练。在防欺骗方面,结合了针对照片攻击的眨眼检测和针对视频攻击的光反射。构建了在硬件中实现这些功能的原型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face Recognition System with 2D Anti-Spoofing
Over the past two decades face recognition has gained immense interest and is one of the most interesting research areas. The reason for this could be the need for designing automatic recognition and surveillance systems or a human-computer interface. This involves knowledge and contribution not only from various fields of pattern recognition, machine learning, computer vision, and image processing but also in psychology and neuroscience. There are several challenging factors in face recognition like illumination, scale, expression, and pose which are addressed by several researchers to achieve a good recognition rate, but still, there is no robust technique that is available against uncontrolled factors from the environment, hardware, and software of the system. A facial recognition system is a technology that can recognize a human face by pinpointing and measuring facial features in an image. Face recognition allows access to buildings without the need for a key or even faster transits in airport security. But fraudsters can target this face recognition system like any other privacy technology with spoofing. Such a spoofing attack can be quite severe. Hackers will be able to gain access to secure facilities or buildings and homes resulting in the sabotage of critical and confidential data. In this work, a face recognition system with anti-spoofing features is proposed. ResNet50 neural network architecture is used for training the model for face recognition. For anti-spoofing, eye blink detection for photo attacks, and reflection of light for video attacks are incorporated. A prototype is built that implements these functions in hardware.
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