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EquiReg: Equivariance Regularized Diffusion for Inverse Problems

About

Diffusion models represent the state-of-the-art for solving inverse problems such as image restoration tasks. Diffusion-based inverse solvers incorporate a likelihood term to guide prior sampling, generating data consistent with the posterior distribution. However, due to the intractability of the likelihood, most methods rely on isotropic Gaussian approximations, which can push estimates off the data manifold and produce inconsistent, poor reconstructions. We propose Equivariance Regularized (EquiReg) diffusion, a general plug-and-play framework that improves posterior sampling by penalizing trajectories that deviate from the data manifold. EquiReg formalizes manifold-preferential equivariant functions that exhibit low equivariance error for on-manifold samples and high error for off-manifold ones, thereby guiding sampling toward symmetry-preserving regions of the solution space. We highlight that such functions naturally emerge when training non-equivariant models with augmentation or on data with symmetries. EquiReg is particularly effective under reduced sampling and measurement consistency steps, where many methods suffer severe quality degradation. By regularizing trajectories toward the manifold, EquiReg implicitly accelerates convergence and enables high-quality reconstructions. EquiReg consistently improves performance in linear and nonlinear image restoration tasks and solving partial differential equations.

Bahareh Tolooshams, Aditi Chandrashekar, Rayhan Zirvi, Abbas Mammadov, Jiachen Yao, Chuwei Wang, Anima Anandkumar• 2025

Related benchmarks

TaskDatasetResultRank
4x super-resolutionFFHQ 256x256
PSNR29.74
36
Forward PDE solvingHelmholtz
Relative Error0.0212
26
Gaussian deblurFFHQ 256x256
PSNR26.32
25
Gaussian DeblurringImageNet 256 x 256 (val)--
24
Gaussian deblurFFHQ 256 x 256
LPIPS0.156
19
Super-Resolution (x4)ImageNet 256 x 256 (val)
FID198.5
19
Motion DeblurImageNet 256x256 (val)
PSNR22.69
18
Forward PDE solvingNavier-Stokes
Relative L2 Error3.06
15
Box InpaintingImageNet 256 x 256 (val)--
15
4x super-resolutionFFHQ 256x256 (test)
PSNR26.32
12
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