Face morphing attack detection is emerging as an increasingly challenging problem owing to advancements in high-quality and realistic morphing attack generation. Reliable detection of morphing attacks is essential because these attacks are targeted for border control applications. This paper presents a multispectral framework for differential morphing-attack detection (D-MAD). The D-MAD methods are based on using two facial images that are captured from the ePassport (also called the reference image) and the trusted device (for example, Automatic Border Control (ABC) gates) to detect whether the face image presented in ePassport is morphed. The proposed multispectral D-MAD framework introduce a multispectral image captured as a trusted capture to capture seven different spectral bands to detect morphing attacks. Extensive experiments were conducted on the newly created datasets with 143 unique data subjects that were captured using both visible and multispectral cameras in multiple sessions. The results indicate the superior performance of the proposed multispectral framework compared to visible images.
翻译:由于高质量和逼真的融合攻击技术的发展,人脸融合攻击检测变得越来越具有挑战性。可靠的融合攻击检测是必要的,因为这些攻击针对的是边境控制应用。本文提出了一种多光谱差分融合攻击检测(D-MAD)方法。D-MAD方法基于使用两个面部图像,分别从ePassport(也称为参考图像)和受信任设备(例如,自动边境控制(ABC)闸门)捕获,以检测ePassport中呈现的人脸图像是否被融合攻击所修改。所提出的多光谱D-MAD框架引入了一个多光谱图像作为受信任捕获,以捕获七个不同的光谱带来检测融合攻击。利用新创建的数据集,在多个会话中拍摄了143个唯一数据主体,使用可见光和多光谱相机进行广泛实验。结果表明,所提出的多光谱框架相对于可见光图像有卓越的性能。