Jianqiang Ren, Yuan Yao, Biwen Lei, Miaomiao Cui, Xuansong Xie
DAMO Academy, Alibaba Group, Hangzhou, China
Paper | Supp | Video | More Results
(2022-09-28) The pretrained model and code are available now.
We propose a novel end-to-end structure-aware flow generation framework for human body reshaping(FBBR), which can achieve favorable and controllable results for high-resolution images efficiently. The BR-5K is the first large-scale dataset for body reshaping, it consists of 5,000 high-quality individual portrait photos at 2K resolution collected from Unsplash.
Considering that the misuse of the dataset may lead to ethical concerns, as recommended by AC, we will review the application to access the datasets. To be able to download the BR5K database, please download, sign the agreement form, and then use your work e-mail(e.g., xx@xx.edu.cn, xx@your_company.com) to send the form to (jianqiang.rjq@alibaba-inc.com).
- Python >= 3.6
- torch >= 1.2.0
- numba
- Download the pose estimator model
body_pose_model.pth
from here. - Download the reshaping model body_reshape_model.pth from google drive or 百度网盘 (key:17e6).
- Put body_pose_model.pth and body_reshape_model.pth into the
models
folder.
python test.py --config config/test_demo_setting.toml
the results will be in the test_cases_output directory.
In this repository, we take a new pretrained model of openpose and achieve better quantitative performance than reported in our paper.
Method | SSIM | PSNR | LPIPS |
---|---|---|---|
Baseline | 0.8339 | 24.4916 | 0.0823 |
Paper | 0.8354 | 24.7924 | 0.0777 |
This Repository | 0.8394 | 25.5801 | 0.0684 |
If our work is useful for your research, please consider citing:
@inproceedings{ren2022structure,
title={Structure-Aware Flow Generation for Human Body Reshaping},
author={Ren, Jianqiang and Yao, Yuan and Lei, Biwen and Cui, Miaomiao and Xie, Xuansong},
booktitle={Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition},
pages={7754--7763},
year={2022}
}
We express gratitudes to openpose and pytorch-openpose, as we benefit a lot from both their papers and codes.
© Alibaba, 2022. For academic and non-commercial use only.