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Outlier-Robust Diffusion Solvers for Inverse Problems

About

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. We propose a method utilizing gradient descent to approximately solve the corresponding optimization problem for the robust objective. To avoid delicate tuning of the learning rate required by the gradient descent method, we further employ the conjugate gradient method with an efficient strategy for updating. Extensive experiments on multiple image datasets for linear and nonlinear tasks under various conditions demonstrate that our proposed methods exhibit robustness to outliers and outperform recent DM-based methods in most cases.

Yang Zheng, Jiahua Liu, Tongyao Pang, Wen Li, Zhaoqiang Liu• 2026

Related benchmarks

TaskDatasetResultRank
InpaintingFFHQ
LPIPS0.07
62
Motion DeblurFFHQ
PSNR28.57
56
Super-ResolutionImageNet 256
PSNR24.9
50
Gaussian deblurFFHQ
PSNR28.63
30
InpaintingImageNet 256
PSNR26.55
30
DeblurringImageNet 256
PSNR25.8
25
Nonlinear DeblurringImageNet 256 × 256
PSNR26.4
24
Gaussian DeblurringCelebA 256 x 256
PSNR30
14
Gaussian DeblurringImageNet 256 x 256
PSNR25.96
14
InpaintingCelebA 256 x 256
PSNR31.2
14
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