Awesome
Real-time 3D-aware Portrait Editing from a Single Image
<div align=center> <img src="./docs/assets/teaser.png" width=600px> </div>Real-time 3D-aware Portrait Editing from a Single Image <br> Qingyan Bai, Zifan Shi, Yinghao Xu, Hao Ouyang, Qiuyu Wang, Ceyuan Yang, Xuan Wang, Gordon Wetzstein, Yujun Shen, Qifeng Chen <br> European Conference on Computer Vision (ECCV) 2024
Figure: Editing results produced by our proposed 3DPE, which allows users to perform 3D-aware portrait editing using image or text prompts.
[Paper] [Project Page]
This work presents 3DPE, a practical method that can efficiently edit a face image following given prompts, like reference images or text descriptions, in a 3D-aware manner. To this end, a lightweight module is distilled from a 3D portrait generator and a text-to-image model, which provide prior knowledge of face geometry and superior editing capability, respectively. Such a design brings two compelling advantages over existing approaches. First, our method achieves real-time editing with a feedforward network (i.e., ∼0.04s per image), over 100× faster than the second competitor. Second, thanks to the powerful priors, our module could focus on the learning of editing-related variations, such that it manages to handle various types of editing simultaneously in the training phase and further supports fast adaptation to user-specified customized types of editing during inference.
<div align=center> <img src="./docs/assets/framework.png" width=650px> </div>Figure: Method overview. We distill priors in the 2D diffusion model and 3D GAN for real-time 3D-aware editing.
BibTeX
If you find our work helpful for your research, please consider to cite:
@inproceedings{bai20243dpe,
title = {Real-time 3D-aware Portrait Editing from a Single Image},
author = {Bai, Qingyan and Shi, Zifan and Xu, Yinghao and Ouyang, Hao and Wang, Qiuyu and Yang, Ceyuan and Wang, Xuan and Wetzstein, Gordon and Shen, Yujun and Chen, Qifeng},
booktitle = {European Conference on Computer Vision},
year = {2024}
}