Stability and Generalizability in SDE Diffusion Models with Measure-Preserving Dynamics
Weitong Zhang, Chengqi Zang, Liu Li, Sarah Cechnicka, Cheng Ouyang,, Bernhard Kainz

TL;DR
This paper introduces a measure-preserving dynamics framework for SDE diffusion models, enhancing stability and generalizability in solving inverse problems like MRI reconstruction.
Contribution
It presents a theoretical RDS-based framework and a novel D$^3$GM diffusion model that improves stability and generalization in inverse problem solving.
Findings
D$^3$GM outperforms existing models on multiple benchmarks.
Measure-preserving property enhances robustness to complex degradations.
Framework applicable to real-world inverse problems like MRI.
Abstract
Inverse problems describe the process of estimating the causal factors from a set of measurements or data. Mapping of often incomplete or degraded data to parameters is ill-posed, thus data-driven iterative solutions are required, for example when reconstructing clean images from poor signals. Diffusion models have shown promise as potent generative tools for solving inverse problems due to their superior reconstruction quality and their compatibility with iterative solvers. However, most existing approaches are limited to linear inverse problems represented as Stochastic Differential Equations (SDEs). This simplification falls short of addressing the challenging nature of real-world problems, leading to amplified cumulative errors and biases. We provide an explanation for this gap through the lens of measure-preserving dynamics of Random Dynamical Systems (RDS) with which we analyse…
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Taxonomy
TopicsFluid Dynamics and Turbulent Flows · Advanced Mathematical Modeling in Engineering
MethodsSparse Evolutionary Training · Diffusion
