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A PyTorch implementation of FC4: Fully Convolutional Color Constancy with Confidence-weighted Pooling

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fc4-pytorch

A PyTorch implementation of "FC4: Fully Convolutional Color Constancy with Confidence-weighted Pooling".

The original code for the FC4 method is quite outdated (based on Python 2 and an outdated version of Tensorflow). This an attempt to provide a clean and modern Python3-based re-implementation of that method using the PyTorch library.

FC4: Fully Convolutional Color Constancy with Confidence-weighted Pooling

Original resources:

SqueezeNet

This implementation of the FC4 method uses SqueezeNet. The SqueezeNet implementation is the one offered by PyTorch and features:

Requirements

This project has been developed and tested using Python 3.8 and Torch > 1.7. Please install the required packages using pip3 install -r requirements.txt.

Configuration

The device on which to run the method (either cpu or cuda:x) and the random seed for reproducibility can be set as global variables at auxiliary/settings.py.

Note that this implementation allows for deactivating the confidence-weighted pooling, in which case a simpler summation pooling will be used. The usage of the confidence-weighted pooling can be configured toggling the USE_CONFIDENCE_WEIGHTED_POOLING global variable at auxiliary/settings.py

Dataset

This implementation of FC4 has been tested against the Shi's Re-processing of Gehler's Raw Color Checker Dataset. After downloading the data, please extract it and move the images and coordinates folders and the folds.mat file to the dataset folder.

Preprocessing

To preprocess the dataset, run the following commands:

cd dataset
python3 img2npy.py

This will mask the ground truth in the images and save the preprocessed items in .npy format into a new folder called preprocessed. The script also save a linearized version of original and ground-truth-corrected images for better visualization.

Pretrained models

Pretrained models on the 3 benchmark folds of this dataset are available inside trained_models.zip. Those under trained_models/fc4_cwp are meant to be used with the confidence-weighted-pooling activated while those under trained_models/fc4_sum with the confidence-weighted-pooling not activated. All models come with a log of the training metrics and a dump of the network architecture.

Training

To train the FC4 model, run python3 train/train.py. The training procedure can be configured by editing the value of the global variables at the beginning of the train.py file.

Monitoring confidence

A subset of the images in the test set can be monitored at training time. A plot of the confidence for these images will be saved at each epoch, which can be used to generate GIF visualizations using vis/make_gif.py. Here is an example:

test_400_epochs

Note that monitoring images has an impact on training time. If you are not interested in monitoring images, just set TEST_VIS_IMG = [] in train.py.

Testing

To test the FC4 model, run python3 test/test.py. The test procedure can be configured by editing the value of the global variables at the beginning of the test.py file.

Visualizing confidence

To visualize the confidence weights learned by the FC4 model, run python3 vis/visualize.py. The procedure can be configured by editing the value of the global variables at the beginning of the visualize.py file.

This is the type of visualization produced by the script:

vis_example

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A PyTorch implementation of FC4: Fully Convolutional Color Constancy with Confidence-weighted Pooling

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