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A robust approach to detect video-based attacks to enhance security

机译:一种稳健的方法来检测基于视频的攻击,以提高安全性

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摘要

Face authentication has become widespread on smart devices and in various applications these days. Real time detection of human faces in video surveillance systems is challenging due to variations in expression and background conditions. Thus, precise detection of spoofed faces is important to make such security systems robust against potential attacks. Several deep learning-based techniques involving the use of convolutional neural networks have proven to be excellent in detection of spoofed faces. In this paper, we have proposed the combined use of spatial and temporal information from facial images using CNN and long short-term memory networks. We have tested the approach on Idiap Replay Attack benchmark and compared the results with the application of pre-trained models like InceptionV3, VGGNet and ResNet models to detect replay attacks during video surveillance. Our approach proves to be robust and more efficient for detection of security breaches in real time situations.
机译:脸部身份验证已在智能设备和各种应用中普遍存在的智能设备上。 由于表达和背景条件的变化,视频监控系统中人类面的实时检测是挑战性的。 因此,精确地检测欺骗面的面部对于使这些安全系统对抗潜在攻击是重要的。 涉及使用卷积神经网络的几种基于深度学习的技术已经证明是优异的欺骗面的脸部。 在本文中,我们提出了使用CNN和长短期存储网络从面部图像中结合使用空间和时间信息。 我们已经测试了IDIAP重播攻击基准的方法,并将结果与Inceptionv3,VGGnet和Reset模型等预先训练的模型进行了应用,以检测视频监控期间的重播攻击。 我们的方法被证明是在实时局势中检测安全漏洞的强大和更有效。

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