Saving Foundation Flow-Matching Priors for Inverse Problems
Wan, Yuxiang, Devera, Ryan, Zhang, Wenjie, Sun, Ju
–arXiv.org Artificial Intelligence
Foundation flow-matching (FM) models promise a universal prior for solving inverse problems (IPs), yet today they trail behind domain-specific or even untrained priors. How can we unlock their potential? We introduce FMPlug, a plug-in framework that redefines how foundation FMs are used in IPs. FMPlug combines an instance-guided, time-dependent warm-start strategy with a sharp Gaussianity regularization, adding problem-specific guidance while preserving the Gaussian structures. This leads to a significant performance boost across image restoration and scientific IPs. Our results point to a path for making foundation FM models practical, reusable priors for IP solving.
arXiv.org Artificial Intelligence
Nov-25-2025
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