Face signatures, including size, shape, texture, skin tone, eye color, appearance, and scars/marks, are widely used as discriminative, biometric information for access control. Despite recent advancements in facial recognition systems, presentation attacks on facial recognition systems have become increasingly sophisticated. The ability to detect presentation attacks or spoofing attempts is a pressing concern for the integrity, security, and trust of facial recognition systems. Multi-spectral imaging has been previously introduced as a way to improve presentation attack detection by utilizing sensors that are sensitive to different regions of the electromagnetic spectrum (e.g., visible, near infrared, long-wave infrared). Although multi-spectral presentation attack detection systems may be discriminative, the need for additional sensors and computational resources substantially increases complexity and costs. Instead, we propose a method that exploits information from infrared imagery during training to increase the discriminability of visible-based presentation attack detection systems. We introduce (1) a new cross-domain presentation attack detection framework that increases the separability of bonafide and presentation attacks using only visible spectrum imagery, (2) an inverse domain regularization technique for added training stability when optimizing our cross-domain presentation attack detection framework, and (3) a dense domain adaptation subnetwork to transform representations between visible and non-visible domains.
翻译:尽管面部识别系统最近有所进步,但面部识别系统的演示攻击行为越来越复杂,成本也大大增加了。检测显示攻击行为或图谋尝试的能力是面部识别系统完整性、安全性和信任性的一个紧迫问题。多光谱成像以前被采用,作为一种改进攻击性检测的方法,利用对电磁频谱不同区域敏感的传感器(例如可见光、近红外、长波红外),改进对攻击的显示,尽管多光谱显示攻击探测系统可能是歧视性的,但对额外传感器和计算资源的需要则大大增加了复杂性和成本。相反,我们提出一种方法,在培训期间利用红外图象提供的信息,以增加可见显示攻击探测系统的不均匀性。我们引入了(1)一个新的跨光谱显示攻击探测框架,仅使用可见光谱图像,提高善意攻击和演示攻击的可分离性。(2)在优化跨光谱显示和不透视区域变换的显示系统之间,增加培训稳定性的反向调整技术。(3)和一种在可移动的磁性区域变换式图像框架内增加培训稳定性。