We run this code under TensorFlow 1.6 on Ubuntu16.04 with python pakage IPL installed.
TensorFlow Implementation of our paper "Invertible Grayscale" accepted to SIGGRAPH ASIA 2018.
- You can use any color image set as the training data of the network, as it is a self-supervised learning scheme.
- The input image resolution is hard-coded in the Line:7~8 of
model.py
, and you need to modify it to match your data resolution (only multiple of 4 is supported).
- Set the training hyperparameters in
main.py
. - Download the pretrained VGG19 model in here.
- Start training by specifying the training dataset and validation dataset.
python3 main.py --mode 'train' --train_dir 'your_train_dir' --val_dir 'your_val_dir'
- Download the pretrained model and place it into the folder './checkpoints'.
- Start evaluation by specifying the testing images and the result saving directory.
python3 main.py --mode 'test' --test_dir 'your_test_dir' --save_dir './results'
You are granted with the license for both academic and commercial usages.
If any part of our paper and code is helpful to your work, please generously cite with:
@article{XiaLW18,
author = {Menghan Xia and Xueting Liu and Tien-Tsin Wong},
title = {Invertible grayscale},
journal = {{ACM} Trans. Graph.},
volume = {37},
number = {6},
pages = {246:1--246:10},
year = {2018}
}