
Defeating Face-Morphing Attacks with AI
Zero-Shot Detection Using Multi-Modal LLMs and Vision Models
This research introduces a novel zero-shot approach for detecting face-morphing attacks that compromise security systems, without requiring labeled training data.
- Combines multi-modal LLMs with general vision models for enhanced detection capabilities
- Achieves state-of-the-art performance on multiple morphing attack benchmarks
- Provides human-understandable explanations for detection decisions
- Demonstrates strong generalizability across unseen morphing techniques
This advancement is critical for securing border control systems and identity verification processes by detecting sophisticated identity fraud attempts without extensive training data requirements.