Mahmoud Afifi1, Brian Price2, Scott Cohen2, and Michael S. Brown1
1York University 2Adobe Research
Reference code for the paper When Color Constancy Goes Wrong: Correcting Improperly White-Balanced Images. Mahmoud Afifi, Brian Price, Scott Cohen, and Michael S. Brown, CVPR 2019. If you use this code or our dataset, please cite our paper:
@inproceedings{afifi2019color,
title={When Color Constancy Goes Wrong: Correcting Improperly White-Balanced Images},
author={Afifi, Mahmoud and Price, Brian and Cohen, Scott and Brown, Michael S},
booktitle={Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition},
pages={1535--1544},
year={2019}
}
The original source code of our paper was written in Matlab. We also provide a Python version of our code. We tried to make both versions identical. However, there is no guarantee that the Python version will give exactly the same results. The differences should be due to rounding errors when we converted our model to Python or differences between Matlab and OpenCV in reading compressed images.
install_.m
demo.m
to process a single image or demo_images.m
to process all images in a directory.evaluation_examples.m
for examples of reporting errors using different evaluation metrics. Also, this code includes an example of how to hide the color chart for Set1 images.demo.py
to process a single image or demo_images.py
to process all images in a directory.evaluation_examples.py
for examples of reporting errors using different evaluation metrics. Also, this code includes an example of how to hide the color chart for Set1 images.We provide a Matlab GUI to help tuning our parameters in an interactive way. Please, check demo_GPU.m
.
K
: Number of nearest neighbors in the KNN search (Sec. 3.4 in the paper) -- change its value to enhance the results.sigma
: The fall-off factor for KNN blending (Eq. 8 in the paper) -- change its value to enhance the results.device
: GPU or CPU (provided for Matlab version only).gamut_mapping
: Mapping pixels in-gamut either using scaling (gamut_mapping= 1
) or clipping (gamut_mapping= 2
). In the paper, we used the clipping options to report our results,
but the scaling option gives compelling results in some cases (esp., with high-saturated/vivid images). upgraded_model
and upgraded
: To load our upgraded model, use upgraded_model=1
in Matlab or upgraded=1
in Python. The upgraded model has new training examples. In our paper results, we did not use this model.In the paper, we mentioned that our dataset contains over 65,000 images. We further added two additional sets of rendered images, for a total of 105,638 rendered images. You can download our dataset from here. You can also download the dataset from the following links:
Input images: Part1 | Part2 | Part3 | Part4 | Part5 | Part6 | Part7 | Part8 | Part9 | Part10
Input images [a single ZIP file]: Download (PNG lossless compression) | Download (JPEG) | Google Drive Mirror (JPEG)
Input images (without color chart pixels): Part1 | Part2 | Part3 | Part4 | Part5 | Part6 | Part7 | Part8 | Part9 | Part10
Input images (without color chart pixels) [a single ZIP file]: Download (PNG lossless compression) | Download (JPEG) | Google Drive Mirror (JPEG)
Augmented images (without color chart pixels): Download (rendered with additional/rare color temperatures)
Ground-truth images: Download
Ground-truth images (without color chart pixels): Download
Metadata files: Input images | Ground-truth images
Folds: Download
Try the interactive demo by uploading your photo or paste a URL for a photo from the web.
You can use the provided code to process video frames separately (some flickering may occur as it does not consider temporal coherence in processing).
For more information, please visit our project page
This software and the dataset are provided for research purposes only. A license must be obtained for any commercial application.