Improving Data Fidelity via Diffusion Model-based Correction and Super-Resolution
Improving Data Fidelity via Diffusion Model-based Correction and Super-Resolution
We propose a unified diffusion model-based correction and super-resolution method to enhance the fidelity and resolution of diverse low-quality data through a two-step pipeline. First, the correction step employs a novel enhanced stochastic differential editing technique based on an imbalanced perturbation and denoising process, ensuring robust and effective bias correction at the low-resolution level. The robustness and effectiveness of this approach are validated theoretically and experimentally. Next, the super-resolution step leverages cascaded conditional diffusion models to iteratively refine the corrected data to high-resolution. Numerical experiments on three PDE problems and a climate dataset demonstrate that the proposed method effectively enhances low-fidelity, low-resolution data by correcting numerical errors and noise while simultaneously improving resolution to recover fine-scale structures.
Wuzhe Xu、Yulong Lu、Sifan Wang、Tong-Rui Liu
计算技术、计算机技术
Wuzhe Xu,Yulong Lu,Sifan Wang,Tong-Rui Liu.Improving Data Fidelity via Diffusion Model-based Correction and Super-Resolution[EB/OL].(2025-05-13)[2025-07-16].https://arxiv.org/abs/2505.08526.点此复制
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