benchmark arXiv Nov 24, 2025 · Nov 2025
Mohammed Talha Alam, Nada Saadi, Fahad Shamshad et al. · Mohamed bin Zayed University of Artificial Intelligence · Michigan State University +1 more
Benchmarks T2I diffusion safety alignment across safety, utility, quality, and robustness after benign LoRA fine-tuning
Output Integrity Attack Transfer Learning Attack visiongenerative
Text-to-image diffusion models can emit copyrighted, unsafe, or private content. Safety alignment aims to suppress specific concepts, yet evaluations seldom test whether safety persists under benign downstream fine-tuning routinely applied after deployment (e.g., LoRA personalization, style/domain adapters). We study the stability of current safety methods under benign fine-tuning and observe frequent breakdowns. As true safety alignment must withstand even benign post-deployment adaptations, we introduce the SPQR benchmark (Safety-Prompt adherence-Quality-Robustness). SPQR is a single-scored metric that provides a standardized and reproducible framework to evaluate how well safety-aligned diffusion models preserve safety, utility, and robustness under benign fine-tuning, by reporting a single leaderboard score to facilitate comparisons. We conduct multilingual, domain-specific, and out-of-distribution analyses, along with category-wise breakdowns, to identify when safety alignment fails after benign fine-tuning, ultimately showcasing SPQR as a concise yet comprehensive benchmark for T2I safety alignment techniques for T2I models.
diffusion Mohamed bin Zayed University of Artificial Intelligence · Michigan State University · University of Waterloo