AnimeGAN
A Tensorflow implementation of AnimeGAN for fast photo animation !!!
This is the Open source of the paper <AnimeGAN: a novel lightweight GAN for photo animation>, which uses the GAN framwork to transform real-world photos into anime images.
Some suggestions:
- since the real photos in the training set are all landscape photos, if you want to stylize the photos with people as the main body, you may as well add at least 3000 photos of people in the training set and retrain to obtain a new model.
- In order to obtain a better face animation effect, when using 2 images as data pairs for training, it is suggested that the faces in the photos and the faces in the anime style data should be consistent in terms of gender as much as possible.
- The generated stylized images will be affected by the overall brightness and tone of the style data, so try not to select the anime images of night as the style data, and it is necessary to make an exposure compensation for the overall style data to promote the consistency of brightness and darkness of the entire style data.
News: AnimeGAN+ is expected to be released this summer. After some simple tricks were added to AnimeGAN, the obtained AnimeGAN+ has better animation effects. When I return to school to graduate, more pre-trained models and video animation test code will also be released in this repository.
Requirements
- python 3.6.8
- tensorflow-gpu 1.8
- opencv
- tqdm
- numpy
- glob
- argparse
Usage
1. Download vgg19 or Pretrained model
2. Download dataset
3. Do edge_smooth
eg. python edge_smooth.py --dataset Hayao --img_size 256
3. Train
eg. python main.py --phase train --dataset Hayao --epoch 101 --init_epoch 1
4. Test
eg. python main.py --phase test --dataset Hayao
or python test.py --checkpoint_dir checkpoint/AnimeGAN_Hayao_lsgan_300_300_1_3_10 --test_dir dataset/test/real --style_name H
Results
------> pictures from the paper 'AnimeGAN: a novel lightweight GAN for photo animation'
Acknowledgment
This code is based on the CartoonGAN-Tensorflow and Anime-Sketch-Coloring-with-Swish-Gated-Residual-UNet. Thanks to the contributors of this project.