FUNIT: Few-Shot Unsupervised Image-to-Image Translation
Project page | Paper | FUNIT Explained | GANimal Demo Video | Have fun with GANimal
Few-shot Unsueprvised Image-to-Image Translation
Ming-Yu Liu, Xun Huang, Arun Mallya, Tero Karras, Timo Aila, Jaakko Lehtinen, and Jan Kautz.
In arXiv 2019.
License
Copyright (C) 2019 NVIDIA Corporation.
All rights reserved. Licensed under the CC BY-NC-SA 4.0 (Attribution-NonCommercial-ShareAlike 4.0 International)
The code is released for academic research use only. For commercial use, please contact [email protected].
For press and other inquiries, please contact Hector Marinez
Installation
- Clone this repo
git clone https://github.com/NVlabs/FUNIT.git
- Install CUDA10.0+
- Install cuDNN7.5
- Install Anaconda3
- Install required python pakcages
conda install -y pytorch torchvision cudatoolkit=10.0 -c pytorch
conda install -y -c anaconda pip
pip install pyyaml tensorboardX
conda install -y -c menpo opencv3
To reproduce the results reported in the paper, you would need an NVIDIA DGX1 machine with 8 V100 GPUs.
Hardware Requirement
To reproduce the experiment results reported in our ICCV paper, you would need to have an NVIDIA DGX1 machine with 8 V100 32GB GPUs. The training will use all 8 GPUS and take almost all of the GPU memory. It would take about 2 weeks to finish the training.
Dataset Preparation
Animal Face Dataset
We are releasing the Animal Face dataset. If you use this dataset in your publication, please cite the FUNIT paper.
- The dataset consists of image crops of the ImageNet ILSVRC2012 training set. Download the dataset and untar the files
cd dataset
wget http://www.image-net.org/challenges/LSVRC/2012/nnoupb/ILSVRC2012_img_train.tar
tar xvf ILSVRC2012_img_train.tar
- The training images should be in
datasets/ILSVRC/Data/CLS-LOC/train
. Now, extract the animal face images by running
python tools/extract_animalfaces.py datasets/ILSVRC/Data/CLS-LOC/train --output_folder datasets/animals --coor_file datasets/animalface_coordinates.txt
- The animal face images should be in
datasets/animals
. Note there are 149 folders. Each folder contains images of one animal kind. The number of images of the dataset is 117,484. - We use 119 animal kinds for training and the ramining 30 animal kinds for evaluation.
Training
Once the animal face dataset is prepared, you can train an animal face translation model by running.
python train.py --config configs/funit_animals.yaml --multigpus
The training results including the checkpoints and intermediate results will be stored in outputs/funit_animals
.
For custom dataset, you would need to write an new configuration file. Please create one based on the example config file.
Testing pretrained model
To test the pretrained model, please first create a folder pretrained
under the root folder. Then, we need to downlowad the pretrained models via the link and save it in pretrained
. Untar the file tar xvf pretrained.tar.gz
.
Now, we can test the translation
python test_k_shot.py --config configs/funit_animals.yaml --ckpt pretrained/animal149_gen.pt --input images/input_content.jpg --class_image_folder images/n02138411 --output images/output.jpg
The above command with translate the input image
images/input_content.jpg
to an output meerkat image
by using a set of 5 example meerkat images
Citation
If you use this code for your research, please cite our papers.
@inproceedings{liu2019few,
title={Few-shot Unsueprvised Image-to-Image Translation},
author={Ming-Yu Liu and Xun Huang and Arun Mallya and Tero Karras and Timo Aila and Jaakko Lehtinen and Jan Kautz.},
booktitle={arxiv},
year={2019}
}