The paper presents a new approach for generating face morphing attacks using latent semantic disentanglement in the StyleGAN architecture. The key highlights are:
The method, called MLSD-GAN, leverages the disentangled latent representations of StyleGAN to produce realistic and diverse morphing attacks. It splits the latents into identity and attribute parts, derives a latent transfer direction, and then performs spherical interpolation to generate the morphed images.
The vulnerability of MLSD-GAN-based attacks is evaluated on two deep learning-based face recognition systems, ArcFace and MagFace. The results show that MLSD-GAN can generate highly effective morphing attacks that can significantly compromise the security of these face recognition systems.
Compared to existing morphing techniques, the proposed MLSD-GAN method demonstrates superior performance in terms of both attack success rate and perceptual quality of the generated morphed images.
The study highlights the need for robust face recognition systems that can effectively detect and mitigate advanced morphing attacks like those generated by MLSD-GAN.
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by Aravinda Red... a las arxiv.org 04-22-2024
https://arxiv.org/pdf/2404.12679.pdfConsultas más profundas