Xu Lab
  • on: Dec. 2024
  • in: ICCV

Edicho: Consistent Image Editing in the Wild

  • Qingyan Bai
  • Hao Ouyang
  • Yinghao Xu
  • Qiuyu Wang
  • Ceyuan Yang
  • Ka Leong Cheng
  • Yujun Shen
  • Qifeng Chen
@inproceedings{edicho2025,
  title = {Edicho: Consistent Image Editing in the Wild},
  author = {Bai, Qingyan and Ouyang, Hao and Xu, Yinghao and Wang, Qiuyu and Yang, Ceyuan and Cheng, Ka Leong and Shen, Yujun and Chen, Qifeng},
  booktitle = {ICCV},
  year = {2025}
}

As a verified need, consistent editing across in-the-wild images remains a technical challenge arising from various unmanageable factors, like object poses, lighting conditions, and photography environments. Edicho steps in with a training-free solution based on diffusion models, featuring a fundamental design principle of using explicit image correspondence to direct editing. Specifically, the key components include an attention manipulation module and a carefully refined classifier-free guidance (CFG) denoising strategy, both of which take into account the pre-estimated correspondence. Such an inference-time algorithm enjoys a plug-and-play nature and is compatible to most diffusion-based editing methods, such as ControlNet and BrushNet. Extensive results demonstrate the efficacy of Edicho in consistent cross-image editing under diverse settings. We will release the code to facilitate future studies.