Targeted Pooled Latent-Space Steganalysis Applied to Generative Steganography, with a Fix
By: Etienne Levecque , Aurélien Noirault , Tomáš Pevný and more
Potential Business Impact:
Finds hidden messages in computer-made pictures.
Steganographic schemes dedicated to generated images modify the seed vector in the latent space to embed a message, whereas most steganalysis methods attempt to detect the embedding in the image space. This paper proposes to perform steganalysis in the latent space by modeling the statistical distribution of the norm of the latent vector. Specifically, we analyze the practical security of a scheme proposed by Hu et. al. for latent diffusion models, which is both robust and practically undetectable when steganalysis is performed on generated images. We show that after embedding, the Stego (latent) vector is distributed on a hypersphere while the Cover vector is i.i.d. Gaussian. By going from the image space to the latent space, we show that it is possible to model the norm of the vector in the latent space under the Cover or Stego hypothesis as Gaussian distributions with different variances. A Likelihood Ratio Test is then derived to perform pooled steganalysis. The impact of the potential knowledge of the prompt and the number of diffusion steps, is also studied. Additionally, we also show how, by randomly sampling the norm of the latent vector before generation, the initial Stego scheme becomes undetectable in the latent space.
Similar Papers
Security-Robustness Trade-offs in Diffusion Steganography: A Comparative Analysis of Pixel-Space and VAE-Based Architectures
Cryptography and Security
Hides messages better in AI images.
A high-capacity linguistic steganography based on entropy-driven rank-token mapping
Cryptography and Security
Hides secret messages in normal text.
Relatively-Secure LLM-Based Steganography via Constrained Markov Decision Processes
Information Theory
Hides secret messages in normal writing.