Litcius/Paper detail

Diff-Plugin: Revitalizing Details for Diffusion-Based Low-Level Tasks

Yuhao Liu, Zhanghan Ke, Fang Liu, Nanxuan Zhao, Rynson W. H. Lau

202422 citationsDOI

Abstract

Diffusion models trained on large-scale datasets have achieved remarkable progress in image synthesis. How-ever, due to the randomness in the diffusion process, they often struggle with handling diverse low-level tasks that require details preservation. To overcome this limitation, we present a new Diff-Plugin framework to enable a single pre-trained diffusion model to generate high-fidelity re-sults across a variety of low-level tasks. Specifically, we first propose a lightweight Task-Plugin module with a dual branch design to provide task-specific priors, guiding the diffusion process in preserving image content. We then propose a Plugin-Selector that can automatically select different Task-Plugins based on the text instruction, allowing users to edit images by indicating multiple low-level tasks with natural language. We conduct extensive experiments on 8 low-level vision tasks. The results demonstrate the superiority of Diff-Plugin over existing methods, particu-larly in real-world scenarios. Our ablations further validate that Diff-Plugin is stable, schedulable, and supports robust training across different dataset sizes. Project page: https://yuhaoliu7456.github.ioIDiff-Plugin

Topics & Concepts

Plug-inComputer scienceDiffusionOperating systemPhysicsThermodynamicsGenerative Adversarial Networks and Image SynthesisComputer Graphics and Visualization TechniquesImage Enhancement Techniques