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Pixel Is Not a Barrier: An Effective Evasion Attack for Pixel-Domain Diffusion Models
by
Li-Xuan, Peng
, Chu, Ernie
, Chun-Yen, Shih
, Cheng-Fu, Chou
, Jun-Cheng, Chen
, Jia-Wei, Liao
in
Diffusion barriers
/ Diffusion models
/ Editing
/ Effectiveness
/ Image quality
/ Pixels
2025
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Do you wish to request the book?
Pixel Is Not a Barrier: An Effective Evasion Attack for Pixel-Domain Diffusion Models
by
Li-Xuan, Peng
, Chu, Ernie
, Chun-Yen, Shih
, Cheng-Fu, Chou
, Jun-Cheng, Chen
, Jia-Wei, Liao
in
Diffusion barriers
/ Diffusion models
/ Editing
/ Effectiveness
/ Image quality
/ Pixels
2025
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Pixel Is Not a Barrier: An Effective Evasion Attack for Pixel-Domain Diffusion Models
Paper
Pixel Is Not a Barrier: An Effective Evasion Attack for Pixel-Domain Diffusion Models
2025
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Overview
Diffusion Models have emerged as powerful generative models for high-quality image synthesis, with many subsequent image editing techniques based on them. However, the ease of text-based image editing introduces significant risks, such as malicious editing for scams or intellectual property infringement. Previous works have attempted to safeguard images from diffusion-based editing by adding imperceptible perturbations. These methods are costly and specifically target prevalent Latent Diffusion Models (LDMs), while Pixel-domain Diffusion Models (PDMs) remain largely unexplored and robust against such attacks. Our work addresses this gap by proposing a novel attack framework, AtkPDM. AtkPDM is mainly composed of a feature representation attacking loss that exploits vulnerabilities in denoising UNets and a latent optimization strategy to enhance the naturalness of adversarial images. Extensive experiments demonstrate the effectiveness of our approach in attacking dominant PDM-based editing methods (e.g., SDEdit) while maintaining reasonable fidelity and robustness against common defense methods. Additionally, our framework is extensible to LDMs, achieving comparable performance to existing approaches.
Publisher
Cornell University Library, arXiv.org
Subject
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