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asmagan's Introduction

ASMA-GAN

Anisotropic Stroke Control for Multiple Artists Style Transfer

Proceedings of the 28th ACM International Conference on Multimedia

The official repository with Pytorch

Top News

2021-09-25: Training related code has been released.

[Arxiv paper]

logo

title

Methodology

Framework

Dependencies

  • python3.6+
  • pytorch1.5+
  • torchvision
  • pyyaml
  • paramiko
  • pandas
  • requests
  • tensorboard
  • tensorboardX
  • tqdm

Installation

We highly recommend you to use Anaconda for installation

conda create -n ASMA python=3.6
conda activate ASMA
conda install pytorch==1.5.0 torchvision==0.6.0 cudatoolkit=10.1 -c pytorch
pip install pyyaml paramiko pandas requests tensorboard tensorboardX tqdm

Preparation

Usage

To test with pretrained model

The command line below will generate 1088*1920 HD style migration pictures of 11 painters for each picture of testImgRoot (11 painters include: Berthe Moriso , Edvard Munch, Ernst Ludwig Kirchner, Jackson Pollock, Wassily Kandinsky, Oscar-Claude Monet, Nicholas Roerich, Paul Cézanne, Pablo Picasso ,Samuel Colman, Vincent Willem van Gogh. The output image(s) can be found in ./test_logs/ASMAfinal/

  • Example of style transfer with all 11 artists style

    python main.py --mode test --cuda 0 --version ASMAfinal  --dataloader_workers 8   --testImgRoot ./bench/ --nodeName localhost --checkpoint 350000 --testScriptsName common_useage --specify_sytle -1 
  • Example of style transfer with Pablo Picasso style

    python main.py --mode test --cuda 0 --version ASMAfinal  --dataloader_workers 8   --testImgRoot ./bench/ --nodeName localhost --checkpoint 350000 --testScriptsName common_useage --specify_sytle 8 
  • Example of style transfer with Wassily Kandinsky style

    python main.py --mode test --cuda 0 --version ASMAfinal  --dataloader_workers 8   --testImgRoot ./bench/ --nodeName localhost --checkpoint 350000 --testScriptsName common_useage --specify_sytle 4

--version refers to the ASMAGAN training logs name.

--testImgRoot can be a folder with images or the path of a single picture.You can assign the image(s) you want to perform style transfer to this argument.

--specify_sytle is used to specify which painter's style is used for style transfer. When the value is -1, 11 painters' styles are used for image(s) respectively for style transfer. The values corresponding to each painter's style are as follows [0: Berthe Moriso, 1: Edvard Munch, 2: Ernst Ludwig Kirchner, 3: Jackson Pollock, 4: Wassily Kandinsky, 5: Oscar-Claude Monet, 6: Nicholas Roerich, 7: Paul Cézanne, 8: Pablo Picasso, 9 : Samuel Colman, 10: Vincent Willem van Gogh]

Training

To train your own model, first change the dataset path in ./env/config.json.

Then use:

python main.py --mode train --cuda 0 --dataloader_workers 12 --version $(your experiment name) --trainYaml train.yaml

Change the training parameters in ./train_configs/train.yaml.

To cite our paper

@inproceedings{DBLP:conf/mm/ChenYLQN20,
  author    = {Xuanhong Chen and
               Xirui Yan and
               Naiyuan Liu and
               Ting Qiu and
               Bingbing Ni},
  title     = {Anisotropic Stroke Control for Multiple Artists Style Transfer},
  booktitle = {{MM} '20: The 28th {ACM} International Conference on Multimedia, 2020},
  publisher = {{ACM}},
  year      = {2020},
  url       = {https://doi.org/10.1145/3394171.3413770},
  doi       = {10.1145/3394171.3413770},
  timestamp = {Thu, 15 Oct 2020 16:32:08 +0200},
  biburl    = {https://dblp.org/rec/conf/mm/ChenYLQN20.bib},
  bibsource = {dblp computer science bibliography, https://dblp.org}
}

Some Results

Results1

Related Projects

Learn about our other projects [RainNet], [Sketch Generation], [CooGAN], [Knowledge Style Transfer], [SimSwap],[ASMA-GAN],[Pretrained_VGG19].

High Resolution Results

asmagan's People

Contributors

neuralchen avatar nnnnai avatar xiruiyan avatar

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asmagan's Issues

KeyError 1920

using the official command: python main.py --mode test --cuda 0 --version ASMAfinal --dataloader_workers 8 --testImgRoot ./bench/ --nodeName localhost --checkpoint 350000 --testScriptsName common_useage --specify_sytle 8

then error happened
Generator Script Name: Conditional_Generator_asm
11 classes
Finished preprocessing the test dataset, total image number: 25...
/home/ama/anaconda3/envs/ASMA/lib/python3.9/site-packages/torchvision/transforms/transforms.py:332: UserWarning: Argument interpolation should be of type InterpolationMode instead of int. Please, use InterpolationMode enum.
warnings.warn(
Traceback (most recent call last):
File "/home/ama/ASMAGAN/main.py", line 266, in
tester.test()
File "/home/ama/ASMAGAN/test_scripts/tester_common_useage.py", line 50, in test
test_data = TestDataset(test_img,batch_size)
File "/home/ama/ASMAGAN/data_tools/test_data_loader_resize.py", line 36, in init
transform.append(T.Resize(1088,1920))
File "/home/ama/anaconda3/envs/ASMA/lib/python3.9/site-packages/torchvision/transforms/transforms.py", line 336, in init
interpolation = _interpolation_modes_from_int(interpolation)
File "/home/ama/anaconda3/envs/ASMA/lib/python3.9/site-packages/torchvision/transforms/functional.py", line 47, in _interpolation_modes_from_int
return inverse_modes_mapping[i]
KeyError: 1920

RuntimeError: cuDNN

Hi I get the following error when running the code:

RuntimeError: cuDNN error: CUDNN_STATUS_EXECUTION_FAILED when calling backward()

I would appreciate your help on how to resolve this.

Thank you!

Gero

license

Hi can you please add a license file

Fine Tuning for single class

Hello team, I would like to finetune your pretrained model for just five new class (total output will be five), how should I use the finetune?
Thank you!

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