CVMar 6

Latent Transfer Attack: Adversarial Examples via Generative Latent Spaces

arXiv:2603.06311v1
Predicted impact top 62% in CV · last 90 daysOriginality Highly original
AI Analysis

This work addresses the problem of generating more transferable and robust adversarial examples for evaluating the robustness of vision models, which is important for researchers and practitioners in AI security.

This paper introduces Latent Transfer Attack (LTA), a method that generates adversarial examples by optimizing perturbations in the latent space of a pretrained Stable Diffusion VAE. LTA achieves strong transfer attack success across CNN and vision-transformer targets, producing spatially coherent, low-frequency perturbations that are more robust to common preprocessing compared to pixel-space baselines.

Adversarial attacks are a central tool for probing the robustness of modern vision models, yet most methods optimize perturbations directly in pixel space under $\ell_\infty$ or $\ell_2$ constraints. While effective in white-box settings, pixel-space optimization often produces high-frequency, texture-like noise that is brittle to common preprocessing (e.g., resizing and cropping) and transfers poorly across architectures. We propose $\textbf{LTA}$ ($\textbf{L}$atent $\textbf{T}$ransfer $\textbf{A}$ttack), a transfer-based attack that instead optimizes perturbations in the latent space of a pretrained Stable Diffusion VAE. Given a clean image, we encode it into a latent code and optimize the latent representation to maximize a surrogate classifier loss, while softly enforcing a pixel-space $\ell_\infty$ budget after decoding. To improve robustness to resolution mismatch and standard input pipelines, we incorporate Expectation Over Transformations (EOT) via randomized resizing, interpolation, and cropping, and apply periodic latent Gaussian smoothing to suppress emerging artifacts and stabilize optimization. Across a suite of CNN and vision-transformer targets, LTA achieves strong transfer attack success while producing spatially coherent, predominantly low-frequency perturbations that differ qualitatively from pixel-space baselines and occupy a distinct point in the transfer-quality trade-off. Our results highlight pretrained generative latent spaces as an effective and structured domain for adversarial optimization, bridging robustness evaluation with modern generative priors.

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