BEGAN in PyTorch

Overview

BEGAN in PyTorch

This project is still in progress. If you are looking for the working code, use BEGAN-tensorflow.

Requirements

Usage

First download CelebA datasets with:

$ apt-get install p7zip-full # ubuntu
$ brew install p7zip # Mac
$ python download.py

or you can use your own dataset by placing images like:

data
└── YOUR_DATASET_NAME
    ├── xxx.jpg (name doesn't matter)
    ├── yyy.jpg
    └── ...

To train a model:

$ python main.py --dataset=CelebA --num_gpu=1
$ python main.py --dataset=YOUR_DATASET_NAME --num_gpu=4 --use_tensorboard=True

To test a model (use your load_path):

$ python main.py --dataset=CelebA --load_path=./logs/CelebA_0405_124806 --num_gpu=0 --is_train=False --split valid

Results

alt tag

(in progress)

Author

Taehoon Kim / @carpedm20

Owner
Taehoon Kim
ex OpenAI
Taehoon Kim
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