[Update] 12/15/2021 All dataset are released, trained models and generated images of IrwGAN are released
selfie2anime-danbooru | selfie-horse2zebra-dog | horse-cat2dog-anime | beetle-tiger2lion-sealion
- selfie2anime-danbooru IrwGAN | [Baseline] | [CycleGAN] | [MUNIT] | [GcGAN] | [NICE-GAN]
- selfie-horse2zebra-dog IrwGAN | [Baseline] | [CycleGAN] | [MUNIT] | [GcGAN] | [NICE-GAN]
- horse-cat2dog-anime IrwGAN | [Baseline] | [CycleGAN] | [MUNIT] | [GcGAN] | [NICE-GAN]
- beetle-tiger2lion-sealion IrwGAN | [Baseline] | [CycleGAN] | [MUNIT] | [GcGAN] | [NICE-GAN]
- Training:
python main.py --dataroot=datasets/selfie2anime-danbooru
- Resume:
python main.py --dataroot=datasets/selfie2anime-danbooru --phase=resume
- Test:
python main.py --dataroot=datasets/selfie2anime-danbooru --phase=test
- Beta Mode
--beta_mode=A
if domain A is unaligned,--beta_mode=B
if domain B is unaligned,--beta_mode=AB
if two domains are unaligned - Effective Sample Size
lambda_nos_A
andlambda_nos_B
are used to control how many samples are selected. The higher the weight, more samples are selected. We use1.0
across all experiments.
If you use this code for your research, please cite our paper:
@inproceedings{xie2021unaligned,
title={Unaligned Image-to-Image Translation by Learning to Reweight},
author={Xie, Shaoan and Gong, Mingming and Xu, Yanwu and Zhang, Kun},
booktitle={Proceedings of the IEEE/CVF International Conference on Computer Vision},
pages={14174--14184},
year={2021}
}