AI RESEARCH
Outlier-Robust Diffusion Solvers for Inverse Problems
arXiv CS.AI
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ArXi:2605.09477v1 Announce Type: cross Methods based on diffusion models (DMs) for solving inverse problems (IPs) have recently achieved remarkable performance. However, DM-based methods typically struggle against outliers, which are common in real-world measurements. In this work, to tackle IPs with outliers, we first refine the measurement via explicit noise estimation to mitigate the effect of noise. Subsequently, we formulate an iteratively reweighted least squares objective based on the Huber loss to address the outliers.