/neural-colorization

(Pytorch Implementation) GAN for image colorization

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neural-colorization

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GAN for image colorization based on Johnson's network structure.

Result

Setup

Install the following Python libraries:

  • numpy
  • scipy
  • Pytorch
  • scikit-image
  • Pillow
  • opencv-python

Colorize images

#Download pre-trained model
wget -O model.pth "https://github.com/zeruniverse/neural-colorization/releases/download/1.1/G.pth"

#Colorize an image with CPU
python colorize.py -m model.pth -i input.jpg -o output.jpg --gpu -1

# If you want to colorize all images in a folder with GPU
python colorize.py -m model.pth -i input -o output --gpu 0

Train your own model

Note: Training is only supported with GPU (CUDA).

Prepare dataset

  • Download some datasets and unzip them into a same folder (saying train_raw_dataset). If the images are not in .jpg format, you should convert them all in .jpgs.
  • run python build_dataset_directory.py -i train_raw_dataset -o train (you can skip this if all your images are directly under the train_raw_dataset, in which case, just rename the folder as train)
  • run python resize_all_imgs.py -d train to resize all training images into 256*256 (you can skip this if your images are already in 256*256)

Optional preparation

It's highly recommended to train from my pretrained models. You can get both generator model and discriminator model from the GitHub Release:

wget "https://github.com/zeruniverse/neural-colorization/releases/download/1.1/G.pth"
wget "https://github.com/zeruniverse/neural-colorization/releases/download/1.1/D.pth"

It's also recommended to have a test image (the script will generate a colorization for the test image you give at every checkpoint so you can see how the model works during training).

Training

The required arguments are training image directory (e.g. train) and path to save checkpoints (e.g. checkpoints)

python train.py -d train -c chekpoints

To add initial weights and test images:

python train.py -d train -c chekpoints --d_init D.pth --g_init G.pth -t test.jpg

More options are available and you can run python train.py --help to print all options.

For torch equivalent (no GAN), you can set option -p 1e9 (set a very large weight for pixel loss).

Reference

Perceptual Losses for Real-Time Style Transfer and Super-Resolution

License

GNU GPL 3.0 for personal or research use. COMMERCIAL USE PROHIBITED.

Model weights are released under CC BY 4.0