Exploiting the Exact Denoising Posterior Score in Training-Free Guidance of Diffusion Models
Journal:
arXiv
Published Date:
Jun 16, 2025
Abstract
The success of diffusion models has driven interest in performing conditional
sampling via training-free guidance of the denoising process to solve image
restoration and other inverse problems. A popular class of methods, based on
Diffusion Posterior Sampling (DPS), attempts to approximate the intractable
posterior score function directly. In this work, we present a novel expression
for the exact posterior score for purely denoising tasks that is tractable in
terms of the unconditional score function. We leverage this result to analyze
the time-dependent error in the DPS score for denoising tasks and compute step
sizes on the fly to minimize the error at each time step. We demonstrate that
these step sizes are transferable to related inverse problems such as
colorization, random inpainting, and super resolution. Despite its simplicity,
this approach is competitive with state-of-the-art techniques and enables
sampling with fewer time steps than DPS.