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GAN stability

This repository contains the experiments in the supplementary material for the paper Which Training Methods for GANs do actually Converge?.

To cite this work, please use

@INPROCEEDINGS{Mescheder2018ICML,
  author = {Lars Mescheder and Sebastian Nowozin and Andreas Geiger},
  title = {Which Training Methods for GANs do actually Converge?},
  booktitle = {International Conference on Machine Learning (ICML)},
  year = {2018}
}

You can find further details on our project page.

Usage

First download your data and put it into the ./data folder.

To train a new model, first create a config script similar to the ones provided in the ./configs folder. You can then train you model using

python train.py PATH_TO_CONFIG

To compute the inception score for your model and generate samples, use

python test.py PATH_TO_CONFIG

Finally, you can create nice latent space interpolations using

python interpolate.py PATH_TO_CONFIG

or

python interpolate_class.py PATH_TO_CONFIG

Pretrained models

We also provide several pretrained models.

You can use the models for sampling by entering

python test.py PATH_TO_CONFIG

where PATH_TO_CONFIG is one of the config files

configs/pretrained/celebA_pretrained.yaml
configs/pretrained/celebAHQ_pretrained.yaml
configs/pretrained/imagenet_pretrained.yaml
configs/pretrained/lsun_bedroom_pretrained.yaml
configs/pretrained/lsun_bridge_pretrained.yaml
configs/pretrained/lsun_church_pretrained.yaml
configs/pretrained/lsun_tower_pretrained.yaml

Our script will automatically download the model checkpoints and run the generation. You can find the outputs in the output/pretrained folders. Similarly, you can use the scripts interpolate.py and interpolate_class.py for generating interpolations for the pretrained models.

Please note that the config files *_pretrained.yaml are only for generation, not for training new models: when these configs are used for training, the model will be trained from scratch, but during inference our code will still use the pretrained model.

Notes

Results

celebA-HQ

celebA-HQ

Imagenet

Imagenet 0 Imagenet 1 Imagenet 2 Imagenet 3 Imagenet 4