Official Implementation of Domain-Aware Universal Style Transfer
Domain Aware Universal Style Transfer
Kibeom Hong (Yonsei Univ.), Seogkyu Jeon (Yonsei Univ.), Huan Yang (Microsoft Research), Jianlong Fu (Microsoft Research), Hyeran Byun (Yonsei Univ.)
Paper[Arxiv] : https://arxiv.org/abs/2108.04441
Abstract: Style transfer aims to reproduce content images with the styles from reference images. Existing universal style transfer methods successfully deliver arbitrary styles to original images either in an artistic or a photo-realistic way. However, the range of “arbitrary style” defined by existing works is bounded in the particular domain due to their structural limitation. Specifically, the degrees of content preservation and stylization are established according to a predefined target domain. As a result, both photo-realistic and artistic models have difficulty in performing the desired style transfer for the other domain. To overcome this limitation, we propose a unified architecture, Domain-aware Style Transfer Networks (DSTN) that transfer not only the style but also the property of domain (i.e., domainness) from a given reference image. To this end, we design a novel domainness indicator that captures the domainness value from the texture and structural features of reference images. Moreover, we introduce a unified framework with domain-aware skip connection to adaptively transfer the stroke and palette to the input contents guided by the domainness indicator. Our extensive experiments validate that our model produces better qualitative results and outperforms previous methods in terms of proxy metrics on both artistic and photo-realistic stylizations.
Due to the policy change of google-drive which is saving pre-trained weights, it is no longer available on google drive! If you need pre-trained wieght, please contact us via personal email([email protected]) and we will send it to you right away. Thank you :)
:star2: Good News! We accepted one paper (AesPA-Net) for artistic style transfer at ICCV 2023!! https://github.com/Kibeom-Hong/AesPA-Net
pip install -r requirements.txt
./baseline_checkpoints
Prepare pretrained models for Domainnes Indicator
Prepare pretrained models for Decoder
Move these pretrained weights to each folders:
./train_results/StyleIndicator/log/
./train_results/Decoder/log/
./train_results/Decoder_adversarial/log/
(Please rename decoder_adversarial.pth -> decoder.pth)
bash scripts/transfer.sh
bash scripts/transfer_adversarial.sh
bash scripts/transfer_user_guided.sh
bash scripts/transfer_adversarial_user_guided.sh
bash scripts/interpolate.sh
Our networks could be trained with end-to-end manner. However, we recommend to train StyleIndicator and Decoder respectively.
bash scripts/train_indicator.sh
bash scripts/train_decoder.sh
Available soon
If you find this work useful for your research, please cite:
@InProceedings{Hong_2021_ICCV,
author = {Hong, Kibeom and Jeon, Seogkyu and Yang, Huan and Fu, Jianlong and Byun, Hyeran},
title = {Domain-Aware Universal Style Transfer},
booktitle = {Proceedings of the IEEE/CVF International Conference on Computer Vision (ICCV)},
month = {October},
year = {2021},
pages = {14609-14617}
}
@article{Hong2021DomainAwareUS,
title={Domain-Aware Universal Style Transfer},
author={Kibeom Hong and Seogkyu Jeon and Huan Yang and Jianlong Fu and H. Byun},
journal={ArXiv},
year={2021},
volume={abs/2108.04441}
}
If you have any question or comment, please contact the first author of this paper - Kibeom Hong