UniEdit-Flow: Unleashing Inversion and Editing in the Era of Flow Models
Abstract
Flow matching models have emerged as a strong alternative to diffusion models, but existing inversion and editing methods designed for diffusion are often ineffective or inapplicable to them. The straight-line, non-crossing trajectories of flow models pose challenges for diffusion-based approaches but also open avenues for novel solutions. In this paper, we introduce a predictor-corrector-based framework for inversion and editing in flow models. First, we propose Uni-Inv, an effective inversion method designed for accurate reconstruction. Building on this, we extend the concept of delayed injection to flow models and introduce Uni-Edit, a region-aware, robust image editing approach. Our methodology is tuning-free, model-agnostic, efficient, and effective, enabling diverse edits while ensuring strong preservation of edit-irrelevant regions. Extensive experiments across various generative models demonstrate the superiority and generalizability of Uni-Inv and Uni-Edit, even under low-cost settings.
Cite
Text
Jiao et al. "UniEdit-Flow: Unleashing Inversion and Editing in the Era of Flow Models." International Conference on Learning Representations, 2026.Markdown
[Jiao et al. "UniEdit-Flow: Unleashing Inversion and Editing in the Era of Flow Models." International Conference on Learning Representations, 2026.](https://mlanthology.org/iclr/2026/jiao2026iclr-unieditflow/)BibTeX
@inproceedings{jiao2026iclr-unieditflow,
title = {{UniEdit-Flow: Unleashing Inversion and Editing in the Era of Flow Models}},
author = {Jiao, Guanlong and Huang, Biqing and Wang, Kuan-Chieh Jackson and Liao, Renjie},
booktitle = {International Conference on Learning Representations},
year = {2026},
url = {https://mlanthology.org/iclr/2026/jiao2026iclr-unieditflow/}
}