ScoreAdv: Score-based Targeted Generation of Natural Adversarial Examples via Diffusion Models
Journal:
arXiv
Published Date:
Jul 8, 2025
Abstract
Despite the success of deep learning across various domains, it remains
vulnerable to adversarial attacks. Although many existing adversarial attack
methods achieve high success rates, they typically rely on $\ell_{p}$-norm
perturbation constraints, which do not align with human perceptual
capabilities. Consequently, researchers have shifted their focus toward
generating natural, unrestricted adversarial examples (UAEs). GAN-based
approaches suffer from inherent limitations, such as poor image quality due to
instability and mode collapse. Meanwhile, diffusion models have been employed
for UAE generation, but they still rely on iterative PGD perturbation
injection, without fully leveraging their central denoising capabilities. In
this paper, we introduce a novel approach for generating UAEs based on
diffusion models, named ScoreAdv. This method incorporates an interpretable
adversarial guidance mechanism to gradually shift the sampling distribution
towards the adversarial distribution, while using an interpretable saliency map
to inject the visual information of a reference image into the generated
samples. Notably, our method is capable of generating an unlimited number of
natural adversarial examples and can attack not only classification models but
also retrieval models. We conduct extensive experiments on ImageNet and CelebA
datasets, validating the performance of ScoreAdv across ten target models in
both black-box and white-box settings. Our results demonstrate that ScoreAdv
achieves state-of-the-art attack success rates and image quality. Furthermore,
the dynamic balance between denoising and adversarial perturbation enables
ScoreAdv to remain robust even under defensive measures.