Provably Robust Score-Based Diffusion Posterior Sampling for Plug-and-Play Image Reconstruction
Xingyu Xu, Yuejie Chi

TL;DR
This paper introduces a provably robust diffusion-based plug-and-play method for nonlinear inverse image reconstruction, combining likelihood-based and score-based samplers with theoretical guarantees.
Contribution
It develops the first provably-robust posterior sampling algorithm for nonlinear inverse problems using unconditional diffusion priors, integrating stochastic and deterministic samplers.
Findings
Demonstrates effectiveness in linear and nonlinear image reconstruction tasks.
Provides theoretical performance guarantees for the proposed method.
Achieves robust and consistent sampling in complex inverse problems.
Abstract
In a great number of tasks in science and engineering, the goal is to infer an unknown image from a small number of measurements collected from a known forward model describing certain sensing or imaging modality. Due to resource constraints, this task is often extremely ill-posed, which necessitates the adoption of expressive prior information to regularize the solution space. Score-based diffusion models, due to its impressive empirical success, have emerged as an appealing candidate of an expressive prior in image reconstruction. In order to accommodate diverse tasks at once, it is of great interest to develop efficient, consistent and robust algorithms that incorporate unconditional score functions of an image prior distribution in conjunction with flexible choices of forward models. This work develops an algorithmic framework for employing score-based diffusion models as an…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Photoacoustic and Ultrasonic Imaging
MethodsDiffusion
