/pytorch-CycleGAN-and-pix2pix

Image-to-image translation in PyTorch (e.g. horse2zebra, edges2cats, and more)

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CycleGAN and pix2pix in PyTorch

This is our ongoing PyTorch implementation for both unpaired and paired image-to-image translation.

The code was written by Jun-Yan Zhu and Taesung Park.

Check out the original CycleGAN Torch and pix2pix Torch code if you would like to reproduce the exact same results as in the papers.

Written by Christopher Hesse

If you use this code for your research, please cite:

Unpaired Image-to-Image Translation using Cycle-Consistent Adversarial Networks
Jun-Yan Zhu*, Taesung Park*, Phillip Isola, Alexei A. Efros
In arxiv, 2017. (* equal contributions)

Image-to-Image Translation with Conditional Adversarial Networks
Phillip Isola, Jun-Yan Zhu, Tinghui Zhou, Alexei A. Efros
In CVPR 2017.

Prerequisites

  • Linux or OSX.
  • Python 2 or Python 3.
  • CPU or NVIDIA GPU + CUDA CuDNN.

Getting Started

Installation

git clone https://github.com/junyanz/pytorch-CycleGAN-and-pix2pix
cd pytorch-CycleGAN-and-pix2pix

CycleGAN train/test

  • Download a CycleGAN dataset (e.g. maps):
bash ./datasets/download_cyclegan_dataset.sh maps
  • Train a model:
python train.py --dataroot ./datasets/maps --name maps_cyclegan --model cycle_gan

To view results as the model trains, check out the html file ./checkpoints/maps_cyclegan/web/index.html

  • Test the model:
python test.py --dataroot ./datasets/maps --name maps_cyclegan --model cycle_gan --phase test

The test results will be saved to a html file here: ./results/maps_cyclegan/latest_test/index.html.

pix2pix train/test

  • Download a pix2pix dataset (e.g.facades):
bash ./datasets/download_pix2pix_dataset.sh facades
  • Train a model:
python train.py --dataroot ./datasets/facades --name facades_pix2pix --gpu_ids 0 --model pix2pix --align_data --which_direction BtoA

To view results as the model trains, check out the html file ./checkpoints/facades_pix2pix/web/index.html

  • Test the model:
python test.py --dataroot ./datasets/facades --name facades_pix2pix --model pix2pix --phase val --align_data --which_direction BtoA

The test results will be saved to a html file here: ./results/facades_pix2pix/latest_val/index.html.

More example scripts can be found at scripts directory.

Training/test Details

  • See options/train_options.py and options/base_options.py for training flags; see optoins/test_options.py and options/base_options.py for test flags.
  • CPU/GPU: Set --gpu_ids -1 to use CPU mode; set --gpu_ids 0,1,2 for multi-GPU mode.
  • During training, you can visualize the result of current training. If you set --display_id 0, we will periodically save the training results to [opt.checkpoints_dir]/[opt.name]/web/. If you set --display_id > 0, the results will be shown on a local graphics web server launched by szym/display: a lightweight display server for Torch. To do this, you should have Torch, Python 3, and the display package installed. You need to invoke th -ldisplay.start 8000 0.0.0.0 to start the server.

CycleGAN Datasets

Download the CycleGAN datasets using the following script:

bash ./datasets/download_cyclegan_dataset.sh dataset_name
  • facades: 400 images from the CMP Facades dataset.
  • cityscapes: 2975 images from the Cityscapes training set.
  • maps: 1096 training images scraped from Google Maps.
  • horse2zebra: 939 horse images and 1177 zebra images downloaded from ImageNet using keywords wild horse and zebra
  • apple2orange: 996 apple images and 1020 orange images downloaded from ImageNet using keywords apple and navel 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 downlaoded from Flickr. The training set size of each class is iPhone:1813, DSLR:3316. See more details in our paper.

To train a 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.

pix2pix datasets

Download the pix2pix datasets using the following script:

bash ./datasets/download_pix2pix_dataset.sh dataset_name

We provide a python script to generate pix2pix training data in the form of pairs of images {A,B}, where A and B are two different depictions of the same underlying scene. For example, these might be pairs {label map, photo} or {bw image, color image}. Then we can learn to translate A to B or B to A:

Create folder /path/to/data with subfolders A and B. A and B should each have their own subfolders train, val, test, etc. In /path/to/data/A/train, put training images in style A. In /path/to/data/B/train, put the corresponding images in style B. Repeat same for other data splits (val, test, etc).

Corresponding images in a pair {A,B} must be the same size and have the same filename, e.g., /path/to/data/A/train/1.jpg is considered to correspond to /path/to/data/B/train/1.jpg.

Once the data is formatted this way, call:

python datasets/combine_A_and_B.py --fold_A /path/to/data/A --fold_B /path/to/data/B --fold_AB /path/to/data

This will combine each pair of images (A,B) into a single image file, ready for training.

TODO

  • add reflection and other padding layers.
  • add one-direction test model.
  • fully test Unet architecture.
  • fully test instance normalization layer from fast-neural-style project.
  • fully test CPU mode and multi-GPU mode.

Related Projects:

CycleGAN: Unpaired Image-to-Image Translation using Cycle-Consistent Adversarial Networks
pix2pix: Image-to-image translation with conditional adversarial nets
iGAN: Interactive Image Generation via Generative Adversarial Networks

Cat Paper Collection

If you love cats, and love reading cool graphics, vision, and learning papers, please check out the Cat Paper Collection:
[Github] [Webpage]

Acknowledgments

Code is inspired by pytorch-DCGAN.