AI RESEARCH

Weak Diffusion Priors Can Still Achieve Strong Inverse-Problem Performance

arXiv CS.LG

ArXi:2601.22443v2 Announce Type: replace Can a diffusion model trained on bedrooms recover human faces? Diffusion models are widely used as priors for inverse problems, but standard approaches usually assume a high-fidelity model trained on data that closely match the unknown signal. In practice, one often must use a mismatched or low-fidelity diffusion prior. Surprisingly, these weak priors often perform nearly as well as full-strength, in-domain baselines. We study when and why inverse solvers are robust to weak diffusion priors.