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This repository is the official implementation of Disentangling Writer and Character Styles for Handwriting Generation (CVPR23).

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MIT LICENSE python 3.8

🔥 Disentangling Writer and Character Styles for Handwriting Generation

ArXiv | Poster | Video | Project

📢 Introduction

  • The proposed style-disentangled Transformer (SDT) generates online handwritings with conditional content and style. Existing RNN-based methods mainly focus on capturing a person’s overall writing style, neglecting subtle style inconsistencies between characters written by the same person. In light of this, SDT disentangles the writer-wise and character-wise style representations from individual handwriting samples for enhancing imitation performance.
  • We extend SDT and introduce an offline-to-offline framework for improving the generation quality of offline Chinese handwritings.

overview_sdt

📺 Handwriting generation results

  • Online Chinese handwriting generation online Chinese
  • Applications to various scripts other scripts
  • Extension on offline Chinese handwriting generation offline Chinese

🔨 Requirements

python 3.8
pytorch >=1.8
easydict 1.9
einops 0.4.1

📂 Folder Structure

SDT/
│
├── train.py - main script to start training
├── test.py - generate characters via trained model
├── evaluate.py - evaluation of generated samples
│
├── configs/*.yml - holds configuration for training
├── parse_config.py - class to handle config file
│
├── data_loader/ - anything about data loading goes here
│   └── loader.py
│
├── model_zoo/ - pre-trained content encoder model
│
├── data/ - default directory for storing experimental datasets
│
├── model/ - networks, models and losses
│   ├── encoder.py
│   ├── gmm.py
│   ├── loss.py
│   ├── model.py
│   └── transformer.py
│
├── saved/
│   ├── models/ - trained models are saved here
│   ├── tborad/ - tensorboard visualization
│   └── samples/ - visualization samples in the training process
│
├── trainer/ - trainers
│   └── trainer.py
│  
└── utils/ - small utility functions
    ├── util.py
    └── logger.py - set log dir for tensorboard and logging output

💿 Datasets

We provide Chinese, Japanese and English datasets in Google Drive | Baidu Netdisk PW:xu9u. Please download these datasets, uzip them and move the extracted files to /data.

🍔 Pre-trained model

  • We provide the pre-trained content encoder model in Google Drive | Baidu Netdisk PW:xu9u. Please download and put it to the /model_zoo.
  • We provide the well-trained SDT model in Google Drive | Baidu Netdisk PW:xu9u, so that users can get rid of retraining one and play it right away.

🚀 Training & Test

Training

  • To train the SDT on the Chinese dataset, run this command:
python train.py --cfg configs/CHINESE_CASIA.yml --log Chinese_log
  • To train the SDT on the Japanese dataset, run this command:
python train.py --cfg configs/Japanese_TUATHANDS.yml --log Japanese_log
  • To train the SDT on the English dataset, run this command:
python train.py --cfg configs/English_CASIA.yml --log English_log

Qualitative Test

  • To generate Chinese handwritings with our SDT, run this command:
python test.py --pretrained_model checkpoint_path --store_type online --sample_size 500 --dir Generated/Chinese
  • To generate Japanese handwritings with our SDT, run this command:
python test.py --pretrained_model checkpoint_path --store_type online --sample_size 500 --dir Generated/Japanese
  • To generate English handwritings with our SDT, run this command:
python test.py --pretrained_model checkpoint_path --store_type online --sample_size 500 --dir Generated/English

Quantitative Evaluation

  • To evaluate the generated handwritings, you need to set data_path to the path of the generated handwritings (e.g., Generated/Chinese), and run this command:
python evaluate.py --data_path Generated/Chinese

❤️ Citation

If you find our work inspiring or use our codebase in your research, please cite our work:

@inproceedings{dai2023disentangling,
  title={Disentangling Writer and Character Styles for Handwriting Generation},
  author={Dai, Gang and Zhang, Yifan and Wang, Qingfeng and Du, Qing and Yu, Zhuliang and Liu, Zhuoman and Huang, Shuangping},
  booktitle={Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition,
  pages={5977--5986},
  year={2023}
}

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