Diverse Motion Stylization (Official)

This is the official Pytorch implementation of this paper.

teaser

Diverse Motion Stylization for Multiple Style Domains via Spatial-Temporal Graph-Based Generative Model
Soomin Park, Deok-Kyeong Jang, and Sung-Hee Lee
In The ACM SIGGRAPH / Eurographics Symposium on Computer Animation (SCA), 2021
Appeared in: PACM on Computer Graphics and Interactive Techniques (PACMCGIT)

Paper: https://dl.acm.org/doi/pdf/10.1145/3480145
Project: http://motionlab.kaist.ac.kr/?page_id=6301

Abstract: This paper presents a novel deep learning-based framework for translating a motion into various styles within multiple domains. Our framework is a single set of generative adversarial networks that learns stylistic features from a collection of unpaired motion clips with style labels to support mapping between multiple style domains. We construct a spatio-temporal graph to model a motion sequence and employ the spatial-temporal graph convolution networks (ST-GCN) to extract stylistic properties along spatial and temporal dimensions. Through spatial-temporal modeling, our framework shows improved style translation results between significantly different actions and on a long motion sequence containing multiple actions. In addition, we first develop a mapping network for motion stylization that maps a random noise to style, which allows for generating diverse stylization results without using reference motions. Through various experiments, we demonstrate the ability of our method to generate improved results in terms of visual quality, stylistic diversity, and content preservation.

Abstract video

Click the figure to watch the teaser video.
abstract

Requirements

  • matplotlib == 3.4.3
  • numpy == 1.21.3
  • scipy == 1.7.1
  • torch == 1.10.0+cu113

Installation

Clone this repository:

git clone https://github.com/soomean/Diverse-Motion-Stylization.git
cd Diverse-Motion-Stylization

Install the dependencies:

pip install -r requirements.txt

Prepare data

  1. Download the datasets from the following link: https://drive.google.com/drive/folders/1Anr9ouHSnZ80C9u2SB6X0f2Clzs4v7Dp?usp=sharing
  2. Put them in the datasets directory

Download pretrained model

  1. mkdir checkpoints
  2. Download the pretrained model from the following link: https://drive.google.com/drive/folders/1LBNddVo9A18FUz6y4LcA6vmIv3_Bm2QN?usp=sharing
  3. Put it in the checkpoints/[experiment_name] directory

Test pretrained model

python test.py --name [experiment_name] --mode test --load_iter 100000

Train from scratch

python train.py --name [experiment_name]

Supplementary video (full demo)

Click the figure to watch the supplementary video.
supp

Citation

If you find our work useful, please cite our paper as below:

@article{park2021diverse,
  title={Diverse Motion Stylization for Multiple Style Domains via Spatial-Temporal Graph-Based Generative Model},
  author={Park, Soomin and Jang, Deok-Kyeong and Lee, Sung-Hee},
  journal={Proceedings of the ACM on Computer Graphics and Interactive Techniques},
  volume={4},
  number={3},
  pages={1--17},
  year={2021},
  publisher={ACM New York, NY, USA}
}

Acknowledgements

This repository contains code snippets of the following projects:
https://theorangeduck.com/page/deep-learning-framework-character-motion-synthesis-and-editing
https://github.com/yysijie/st-gcn
https://github.com/clovaai/stargan-v2
https://github.com/DeepMotionEditing/deep-motion-editing

License

This work is licensed under the terms of the MIT license.

Contact

If you have any question, please feel free to contact me ([email protected]).

GitHub

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