AI RESEARCH
Purify Once, Edit Freely: Breaking Image Protections under Model Mismatch
arXiv CS.AI
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ArXi:2603.13028v1 Announce Type: cross Diffusion models enable high-fidelity image editing but can also be misused for unauthorized style imitation and harmful content generation. To mitigate these risks, proactive image protection methods embed small, often imperceptible adversarial perturbations into images before sharing to disrupt downstream editing or fine-tuning. However, in realistic post-release scenarios, content owners cannot control downstream processing pipelines, and protections optimized for a surrogate model may fail when attackers use mismatched diffusion pipelines.