PyTorch-Multi-Style-Transfer
                                
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                        Neural Style and MSG-Net
PyTorch-Style-Transfer
This repo provides PyTorch Implementation of MSG-Net (ours) and Neural Style (Gatys et al. CVPR 2016), which has been included by ModelDepot. We also provide Torch implementation and MXNet implementation.
Tabe of content
- Real-time Style Transfer using MSG-Net
- Stylize Images using Pre-trained Model
- Train Your Own MSG-Net Model
 
- Slow Neural Style Transfer
MSG-Net
| Multi-style Generative Network for Real-time Transfer  [arXiv] [project] Hang Zhang, Kristin Dana 
@article{zhang2017multistyle,
	title={Multi-style Generative Network for Real-time Transfer},
	author={Zhang, Hang and Dana, Kristin},
	journal={arXiv preprint arXiv:1703.06953},
	year={2017}
}
 |  | 
Stylize Images Using Pre-trained MSG-Net
- Download the pre-trained model
git clone [email protected]:zhanghang1989/PyTorch-Style-Transfer.git cd PyTorch-Style-Transfer/experiments bash models/download_model.sh
- Camera Demo
python camera_demo.py demo --model models/21styles.model 
- Test the model
python main.py eval --content-image images/content/venice-boat.jpg --style-image images/21styles/candy.jpg --model models/21styles.model --content-size 1024
- 
If you don't have a GPU, simply set --cuda=0. For a different style, set--style-image path/to/style. If you would to stylize your own photo, change the--content-image path/to/your/photo. More options:- --content-image: path to content image you want to stylize.
- --style-image: path to style image (typically covered during the training).
- --model: path to the pre-trained model to be used for stylizing the image.
- --output-image: path for saving the output image.
- --content-size: the content image size to test on.
- --cuda: set it to 1 for running on GPU, 0 for CPU.
 
 
  
 
 
 
 
 
 

Train Your Own MSG-Net Model
- Download the COCO dataset
bash dataset/download_dataset.sh
- Train the model
python main.py train --epochs 4
- If you would like to customize styles, set --style-folder path/to/your/styles. More options:- --style-folder: path to the folder style images.
- --vgg-model-dir: path to folder where the vgg model will be downloaded.
- --save-model-dir: path to folder where trained model will be saved.
- --cuda: set it to 1 for running on GPU, 0 for CPU.
 
Neural Style
Image Style Transfer Using Convolutional Neural Networks by Leon A. Gatys, Alexander S. Ecker, and Matthias Bethge.
python main.py optim --content-image images/content/venice-boat.jpg --style-image images/21styles/candy.jpg
- --content-image: path to content image.
- --style-image: path to style image.
- --output-image: path for saving the output image.
- --content-size: the content image size to test on.
- --style-size: the style image size to test on.
- --cuda: set it to 1 for running on GPU, 0 for CPU.
 
  
 
 
 
 
 
 

Acknowledgement
The code benefits from outstanding prior work and their implementations including:
- Texture Networks: Feed-forward Synthesis of Textures and Stylized Images by Ulyanov et al. ICML 2016. (code)
- Perceptual Losses for Real-Time Style Transfer and Super-Resolution by Johnson et al. ECCV 2016 (code) and its pytorch implementation code by Abhishek.
- Image Style Transfer Using Convolutional Neural Networks by Gatys et al. CVPR 2016 and its torch implementation code by Johnson.