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FlowLPS: Langevin-Proximal Sampling for Flow-based Inverse Problem Solvers

Published: December 8, 2025 | arXiv ID: 2512.07150v1

By: Jonghyun Park, Jong Chul Ye

Potential Business Impact:

Improves AI's ability to fix blurry images.

Business Areas:
Natural Language Processing Artificial Intelligence, Data and Analytics, Software

Deep generative models have become powerful priors for solving inverse problems, and various training-free methods have been developed. However, when applied to latent flow models, existing methods often fail to converge to the posterior mode or suffer from manifold deviation within latent spaces. To mitigate this, here we introduce a novel training-free framework, FlowLPS, that solves inverse problems with pretrained flow models via a Langevin Proximal Sampling (LPS) strategy. Our method integrates Langevin dynamics for manifold-consistent exploration with proximal optimization for precise mode seeking, achieving a superior balance between reconstruction fidelity and perceptual quality across multiple inverse tasks on FFHQ and DIV2K, outperforming state of the art inverse solvers.

Country of Origin
🇰🇷 Korea, Republic of

Page Count
20 pages

Category
Computer Science:
Machine Learning (CS)