Spoofing-aware Prompt Learning for Unified Physical-Digital Facial Attack Detection

arXiv — cs.CVTuesday, December 9, 2025 at 5:00:00 AM
  • A new framework called Spoofing-aware Prompt Learning for Unified Attack Detection (SPL-UAD) has been proposed to enhance the detection of both physical presentation attacks and digital forgery attacks on facial recognition systems. This framework addresses the limitations of existing methods that struggle with conflicting optimization directions in prompt spaces for different attack types.
  • The SPL-UAD framework is significant as it aims to provide comprehensive protection for biometric data, which is increasingly vital in security systems. By decoupling optimization branches for physical and digital attacks, it enhances the robustness of facial recognition technologies against evolving threats.
  • This development reflects a broader trend in artificial intelligence where the integration of advanced detection techniques is crucial for safeguarding biometric systems. As facial recognition technology becomes more prevalent, the need for effective defenses against both physical and digital threats is paramount, highlighting ongoing challenges in privacy and security within the field.
— via World Pulse Now AI Editorial System

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