CVPR '21: In the light of feature distributions: Moment matching for Neural Style Transfer

Overview

In the light of feature distributions: Moment matching for Neural Style Transfer (CVPR 2021)

This repository provides code to recreate results presented in In the light of feature distributions: Moment matching for Neural Style Transfer.

For more information, please see the project website


Contact

If you have any questions, please let me know

Instructions

Running neural style transfer with Central Moment Discrepancy is as easy as running

python main.py --c_img ./path/to/content.jpg --s_img ./path/to/style.jpg

You have the following command line arguments to change to your needs:

  --c_img         The content image that is being stylized.
  --s_img         The style image
  --epsilon       Iterative optimization is stopped if delta value of 
                  moving average loss is smaller than this value.
  --max_iter      Maximum iterations if epsilon is not surpassed
  --alpha         Convex interpolation of style and content loss 
                  (should be set high > 0.9 since we start with content as target)
  --lr            Learning rate of Adam optimizer
  --im_size       Output image size. Can either be single integer for keeping aspect ratio or tuple.

Citations

@article{kalischek2021light,
      title={In the light of feature distributions: moment matching for Neural Style Transfer}, 
      author={Nikolai Kalischek and Jan Dirk Wegner and Konrad Schindler},
      year={2021},
      eprint={2103.07208},
      archivePrefix={arXiv},
      primaryClass={cs.CV}
}
Owner
Nikolai Kalischek
Nikolai Kalischek
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