PyTorch | project page | paper
Torch implementation for learning an image-to-image translation (i.e. pix2pix) without input-output pairs, for example:
New: Please check out contrastive-unpaired-translation (CUT), our new unpaired image-to-image translation model that enables fast and memory-efficient training.
Unpaired Image-to-Image Translation using Cycle-Consistent Adversarial Networks
Jun-Yan Zhu*, Taesung Park*, Phillip Isola, Alexei A. Efros
Berkeley AI Research Lab, UC Berkeley
In ICCV 2017. (* equal contributions)
This package includes CycleGAN, pix2pix, as well as other methods like BiGAN/ALI and Apple's paper S+U learning.
The code was written by Jun-Yan Zhu and Taesung Park.
Update: Please check out PyTorch implementation for CycleGAN and pix2pix.
The PyTorch version is under active development and can produce results comparable or better than this Torch version.
[Tensorflow] (by Harry Yang), [Tensorflow] (by Archit Rathore), [Tensorflow] (by Van Huy), [Tensorflow] (by Xiaowei Hu), [Tensorflow-simple] (by Zhenliang He), [TensorLayer] (by luoxier), [Chainer] (by Yanghua Jin), [Minimal PyTorch] (by yunjey), [Mxnet] (by Ldpe2G), [lasagne/Keras] (by tjwei), [Keras] (by Simon Karlsson)
- Linux or OSX
- NVIDIA GPU + CUDA CuDNN (CPU mode and CUDA without CuDNN may work with minimal modification, but untested)
- For MAC users, you need the Linux/GNU commands
gfind
andgwc
, which can be installed withbrew install findutils coreutils
.
- Install torch and dependencies from https://github.com/torch/distro
- Install torch packages
nngraph
,class
,display
luarocks install nngraph
luarocks install class
luarocks install https://raw.githubusercontent.com/szym/display/master/display-scm-0.rockspec
- Clone this repo:
git clone https://github.com/junyanz/CycleGAN
cd CycleGAN
- Download the test photos (taken by Alexei Efros):
bash ./datasets/download_dataset.sh ae_photos
- Download the pre-trained model
style_cezanne
(For CPU model, usestyle_cezanne_cpu
):
bash ./pretrained_models/download_model.sh style_cezanne
- Now, let's generate Paul Cézanne style images:
DATA_ROOT=./datasets/ae_photos name=style_cezanne_pretrained model=one_direction_test phase=test loadSize=256 fineSize=256 resize_or_crop="scale_width" th test.lua
The test results will be saved to ./results/style_cezanne_pretrained/latest_test/index.html
.
Please refer to Model Zoo for more pre-trained models.
./examples/test_vangogh_style_on_ae_photos.sh
is an example script that downloads the pretrained Van Gogh style network and runs it on Efros's photos.
- Download a dataset (e.g. zebra and horse images from ImageNet):
bash ./datasets/download_dataset.sh horse2zebra
- Train a model:
DATA_ROOT=./datasets/horse2zebra name=horse2zebra_model th train.lua
- (CPU only) The same training command without using a GPU or CUDNN. Setting the environment variables
gpu=0 cudnn=0
forces CPU only
DATA_ROOT=./datasets/horse2zebra name=horse2zebra_model gpu=0 cudnn=0 th train.lua
- (Optionally) start the display server to view results as the model trains. (See Display UI for more details):
th -ldisplay.start 8000 0.0.0.0
- Finally, test the model:
DATA_ROOT=./datasets/horse2zebra name=horse2zebra_model phase=test th test.lua
The test results will be saved to an HTML file here: ./results/horse2zebra_model/latest_test/index.html
.
Download the pre-trained models with the following script. The model will be saved to ./checkpoints/model_name/latest_net_G.t7
.
bash ./pretrained_models/download_model.sh model_name
orange2apple
(orange -> apple) andapple2orange
: trained on ImageNet categoriesapple
andorange
.horse2zebra
(horse -> zebra) andzebra2horse
(zebra -> horse): trained on ImageNet categorieshorse
andzebra
.style_monet
(landscape photo -> Monet painting style),style_vangogh
(landscape photo -> Van Gogh painting style),style_ukiyoe
(landscape photo -> Ukiyo-e painting style),style_cezanne
(landscape photo -> Cezanne painting style): trained on paintings and Flickr landscape photos.monet2photo
(Monet paintings -> real landscape): trained on paintings and Flickr landscape photographs.cityscapes_photo2label
(street scene -> label) andcityscapes_label2photo
(label -> street scene): trained on the Cityscapes dataset.map2sat
(map -> aerial photo) andsat2map
(aerial photo -> map): trained on Google maps.iphone2dslr_flower
(iPhone photos of flowers -> DSLR photos of flowers): trained on Flickr photos.
CPU models can be downloaded using:
bash pretrained_models/download_model.sh <name>_cpu
, where <name>
can be horse2zebra
, style_monet
, etc. You just need to append _cpu
to the target model.
To train a model,
DATA_ROOT=/path/to/data/ name=expt_name th train.lua
Models are saved to ./checkpoints/expt_name
(can be changed by passing checkpoint_dir=your_dir
in train.lua).
See opt_train
in options.lua
for additional training options.
To test the model,
DATA_ROOT=/path/to/data/ name=expt_name phase=test th test.lua
This will run the model named expt_name
in both directions on all images in /path/to/data/testA
and /path/to/data/testB
.
A webpage with result images will be saved to ./results/expt_name
(can be changed by passing results_dir=your_dir
in test.lua).
See opt_test
in options.lua
for additional test options. Please use model=one_direction_test
if you only would like to generate outputs of the trained network in only one direction, and specify which_direction=AtoB
or which_direction=BtoA
to set the direction.
There are other options that can be used. For example, you can specify resize_or_crop=crop
option to avoid resizing the image to squares. This is indeed how we trained GTA2Cityscapes model in the projet webpage and Cycada model. We prepared the images at 1024px resolution, and used resize_or_crop=crop fineSize=360
to work with the cropped images of size 360x360. We also used lambda_identity=1.0
.
Download the datasets using the following script. Many of the datasets were collected by other researchers. Please cite their papers if you use the data.
bash ./datasets/download_dataset.sh dataset_name
facades
: 400 images from the CMP Facades dataset. [Citation]cityscapes
: 2975 images from the Cityscapes training set. [Citation]. Note: Due to license issue, we do not host the dataset on our repo. Please download the dataset directly from the Cityscapes webpage. Please refer to./datasets/prepare_cityscapes_dataset.py
for more detail.maps
: 1096 training images scraped from Google Maps.horse2zebra
: 939 horse images and 1177 zebra images downloaded from ImageNet using the keywordswild horse
andzebra
apple2orange
: 996 apple images and 1020 orange images downloaded from ImageNet using the keywordsapple
andnavel orange
.summer2winter_yosemite
: 1273 summer Yosemite images and 854 winter Yosemite images were downloaded using Flickr API. See more details in our paper.monet2photo
,vangogh2photo
,ukiyoe2photo
,cezanne2photo
: The art images were downloaded from Wikiart. The real photos are downloaded from Flickr using the combination of the tags landscape and landscapephotography. The training set size of each class is Monet:1074, Cezanne:584, Van Gogh:401, Ukiyo-e:1433, Photographs:6853.iphone2dslr_flower
: both classes of images were downloaded from Flickr. The training set size of each class is iPhone:1813, DSLR:3316. See more details in our paper.
Optionally, for displaying images during training and test, use the display package.
- Install it with:
luarocks install https://raw.githubusercontent.com/szym/display/master/display-scm-0.rockspec
- Then start the server with:
th -ldisplay.start
- Open this URL in your browser: https://localhost:8000
By default, the server listens on localhost. Pass 0.0.0.0
to allow external connections on any interface:
th -ldisplay.start 8000 0.0.0.0
Then open https://(hostname):(port)/
in your browser to load the remote desktop.
To train CycleGAN model on your own datasets, you need to create a data folder with two subdirectories trainA
and trainB
that contain images from domain A and B. You can test your model on your training set by setting phase='train'
in test.lua
. You can also create subdirectories testA
and testB
if you have test data.
You should not expect our method to work on just any random combination of input and output datasets (e.g. cats<->keyboards
). From our experiments, we find it works better if two datasets share similar visual content. For example, landscape painting<->landscape photographs
works much better than portrait painting <-> landscape photographs
. zebras<->horses
achieves compelling results while cats<->dogs
completely fails. See the following section for more discussion.
Our model does not work well when the test image is rather different from the images on which the model is trained, as is the case in the figure to the left (we trained on horses and zebras without riders, but test here one a horse with a rider). See additional typical failure cases here. On translation tasks that involve color and texture changes, like many of those reported above, the method often succeeds. We have also explored tasks that require geometric changes, with little success. For example, on the task of dog<->cat
transfiguration, the learned translation degenerates into making minimal changes to the input. We also observe a lingering gap between the results achievable with paired training data and those achieved by our unpaired method. In some cases, this gap may be very hard -- or even impossible,-- to close: for example, our method sometimes permutes the labels for tree and building in the output of the cityscapes photos->labels task.
If you use this code for your research, please cite our paper:
@inproceedings{CycleGAN2017,
title={Unpaired Image-to-Image Translation using Cycle-Consistent Adversarial Networkss},
author={Zhu, Jun-Yan and Park, Taesung and Isola, Phillip and Efros, Alexei A},
booktitle={Computer Vision (ICCV), 2017 IEEE International Conference on},
year={2017}
}
contrastive-unpaired-translation (CUT)
pix2pix-Torch | pix2pixHD |
BicycleGAN | vid2vid | SPADE/GauGAN
iGAN | GAN Dissection | GAN Paint
If you love cats, and love reading cool graphics, vision, and ML papers, please check out the Cat Paper Collection.
Code borrows from pix2pix and DCGAN. The data loader is modified from DCGAN and Context-Encoder. The generative network is adopted from neural-style with Instance Normalization.