ACE-LoRA: Adaptive Orthogonal Decoupling for Continual Image Editing
Abstract
State-of-the-art diffusion models often rely on parameter-efficient fine-tuning to perform specialized image editing tasks. However, real-world applications require continual adaptation to new tasks while preserving previously learned knowledge. Despite the practical necessity, continual learning for image editing remains largely underexplored. We propose ACE-LoRA, a dynamic regularization framework for continual image editing that effectively mitigates catastrophic forgetting. ACE-LoRA leverages Adaptive Orthogonal Decoupling to identify and orthogonalize task interference, and introduces a Rank-Invariant Historical Information Compression strategy to address scalability issues in continual updates. To facilitate continual learning in image editing and provide a standardized evaluation protocol, we introduce CIE-Bench, the first comprehensive benchmark in this domain. CIE-Bench encompasses diverse and practically relevant image editing scenarios with a balanced level of difficulty to effectively expose limitations of existing models while remaining compatible with parameter-efficient fine-tuning. Extensive experiments demonstrate that our method consistently outperforms existing baselines in terms of instruction fidelity, visual realism, and robustness to forgetting, establishing a strong foundation for continual learning in image editing.
Cite
@article{arxiv.2605.14948,
title = {ACE-LoRA: Adaptive Orthogonal Decoupling for Continual Image Editing},
author = {Yuehao Liu and Weijia Zhang and Xuanming Shang and Zhizhou Chen and Yanhao Ge and Shanyan Guan and Chao Ma},
journal= {arXiv preprint arXiv:2605.14948},
year = {2026}
}