CIE XYZ NET

Matlab code for the paper: CIE XYZ Net: Unprocessing Images for Low-Level Computer Vision Tasks
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Mise à jour 25 fév. 2023

CIE XYZ Net: Unprocessing Images for Low-Level Computer Vision Tasks

Mahmoud Afifi, Abdelrahman Abdelhamed, Abdullah Abuolaim, Abhijith Punnappurath, and Michael S. Brown

York University

Reference code for the paper CIE XYZ Net: Unprocessing Images for Low-Level Computer Vision Tasks. Mahmoud Afifi, Abdelrahman Abdelhamed, Abdullah Abuolaim, Abhijith Punnappurath, and Michael S. Brown, IEEE Transactions on Pattern Analysis and Machine Intelligence (TPAMI), 2021. If you use this code or our dataset, please cite our paper:

@article{CIEXYZNet,
  title={CIE XYZ Net: Unprocessing Images for Low-Level Computer Vision Tasks},
  author={Afifi, Mahmoud and Abdelhamed, Abdelrahman and Abuolaim, Abdullah and Punnappurath, Abhijith and Brown, Michael S},
  journal={IEEE Transactions on Pattern Analysis and Machine Intelligence (TPAMI)},
  pages={},
  year={2021}
}

Code (MIT License)

network_design

Prerequisite

  1. Python 3.6
  2. opencv-python
  3. pytorch (tested with 1.5.0)
  4. torchvision (tested with 0.6.0)
  5. cudatoolkit
  6. tensorboard (optional)
  7. numpy
  8. future
  9. tqdm
  10. matplotlib
The code may work with library versions other than the specified.

Get Started

Demos:

  1. Run demo_single_image.py or demo_images.py to convert from sRGB to XYZ and back. You can change the task to run only one of the inverse or forward networks.
  2. Run demo_single_image_with_operators.py or demo_images_with_operators.py to apply an operator(s) to the intermediate layers/images. The operator code should be located in the pp_code directory. You should change the code in pp_code/postprocessing.py with your operator code.

Training Code:

Run train.py to re-train our network. You will need to adjust the training/validation directories accordingly.

Note:

All experiments in the paper were reported using the Matlab version of CIE XYZ Net. The PyTorch code/model is provided to facilitate using our framework with PyTorch, but there is no guarantee that the Torch version gives exactly the same reconstruction/rendering results reported in the paper.



Prerequisite

  1. Matlab 2019b or higher
  2. Deep Learning Toolbox

Get Started

Run install_.m.

Demos:

  1. Run demo_single_image.m or demo_images.m to convert from sRGB to XYZ and back. You can change the task to run only one of the inverse or forward networks.
  2. Run demo_single_image_with_operators.m or demo_images_with_operators.m to apply an operator(s) to the intermediate layers/images. The operator code should be located in the pp_code directory. You should change the code in pp_code/postprocessing.m with your operator code.

Training Code:

Run training.m to re-train our network. You will need to adjust the training/validation directories accordingly.

sRGB2XYZ Dataset

srgb2xyz

Our sRGB2XYZ dataset contains ~1,200 pairs of camera-rendered sRGB and the corresponding scene-referred CIE XYZ images (971 training, 50 validation, and 244 testing images).

Training set (11.1 GB): Part 0 | Part 1 | Part 2 | Part 3 | Part 4 | Part 5

Validation set (570 MB): Part 0

Testing set (2.83 GB): Part 0 | Part 1

Dataset License:

As the dataset was originally rendered using raw images taken from the MIT-Adobe FiveK dataset, our sRGB2XYZ dataset follows the original license of the MIT-Adobe FiveK dataset.

Citation pour cette source

Mahmoud Afifi, Abdelrahman Abdelhamed, Abdullah Abuolaim, Abhijith Punnappurath, and Michael S. Brown. CIE XYZ Net: Unprocessing Images for Low-Level Computer Vision Tasks. arXiv preprint arXiv:2006.12709, 2020.

Compatibilité avec les versions de MATLAB
Créé avec R2019b
Compatible avec les versions R2019b et ultérieures
Plateformes compatibles
Windows macOS Linux

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Les versions qui utilisent la branche GitHub par défaut ne peuvent pas être téléchargées

Version Publié le Notes de version
1.0.1

.

1.0.0

Pour consulter ou signaler des problèmes liés à ce module complémentaire GitHub, accédez au dépôt GitHub.
Pour consulter ou signaler des problèmes liés à ce module complémentaire GitHub, accédez au dépôt GitHub.