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Deep Pixel-wise Binary Supervision for Face Presentation Attack Detection

机译:深度像素明智的二进制监控面部呈现攻击检测

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Face recognition has evolved as a prominent biometric authentication modality. However, vulnerability to presentation attacks curtails its reliable deployment. Automatic detection of presentation attacks is essential for secure use of face recognition technology in unattended scenarios. In this work, we introduce a Convolutional Neural Network (CNN) based framework for presentation attack detection, with deep pixel-wise supervision. The framework uses only frame level information making it suitable for deployment in smart devices with minimal computational and time overhead. We demonstrate the effectiveness of the proposed approach in public datasets for both intra as well as cross-dataset experiments. The proposed approach achieves an HTER of 0% in Replay Mobile dataset and an ACER of 0.42% in Protocol-1 of OULU dataset outperforming state of the art methods.
机译:面部识别已经发展为突出的生物识别验证方式。但是,易受介绍攻击的漏洞减少了可靠的部署。自动检测呈现攻击对于在无人看管场景中安全使用面部识别技术至关重要。在这项工作中,我们介绍了一种基于卷积神经网络(CNN)的呈现攻击检测框架,具有深度像素明智的监督。该框架仅使用帧级信息,使其适用于智能设备的部署,具有最小计算和时间开销。我们展示了拟议方法在公共数据集中的综合和数据集实验的有效性。该方法在重播移动数据集中实现了0%的HET,宏碁在OULU数据集优于现有技术的表现状态的协议-1中的0.42%。

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