CVApr 23

DCMorph: Face Morphing via Dual-Stream Cross-Attention Diffusion

arXiv:2604.2162744.4
AI Analysis

For security researchers and developers of identity verification systems, this work advances face morphing attack techniques to anticipate evolving threats and develop robust defensive mechanisms.

DCMorph introduces a dual-stream diffusion-based face morphing framework that achieves the highest attack success rates against four state-of-the-art face recognition systems while remaining challenging to detect by current morphing attack detection methods.

Advancing face morphing attack techniques is crucial to anticipate evolving threats and develop robust defensive mechanisms for identity verification systems. This work introduces DCMorph, a dual-stream diffusion-based morphing framework that simultaneously operates at both identity conditioning and latent space levels. Unlike image-level methods suffering from blending artifacts or GAN-based approaches with limited reconstruction fidelity, DCMorph leverages identity-conditioned latent diffusion models through two mechanisms: (1) decoupled cross-attention interpolation that injects identity-specific features from both source faces into the denoising process, enabling explicit dual-identity conditioning absent in existing diffusion-based methods, and (2) DDIM inversion with spherical interpolation between inverted latent representations from both source faces, providing geometrically consistent initial latent representation that preserves structural attributes. Vulnerability analyses across four state-of-the-art face recognition systems demonstrate that DCMorph achieves the highest attack success rates compared to existing methods at both operational thresholds, while remaining challenging to detect by current morphing attack detection solutions.

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