Skip to content
forked from fei-aiart/genre

Portrait Drawing Generation, ICME 2021, BEST DEMO RUNNER UP AWARD

Notifications You must be signed in to change notification settings

AiArt-Gao/genre

 
 

Repository files navigation

GENRE

Face sketch synthesis, GANs, SPADE, image-to-image translation

We provide PyTorch implementations for our ICME2021 paper GENRE:

@InProceedings{Li2021GENRE,
author = {Xiang Li and Fei Gao and Fei Huang},
title = {High-quality Face Sketch Synthesis via Geometric Normalization and Regularization},
booktitle = {IEEE International Conference on Multimedia and Expo (ICME) 2021},
month = {July 5-9},
year = {2021}
}

This project generates artistic portrait drawings (e.g. pencil-drawing) from face photos using a GAN-based model. You may find useful information in preprocessing steps.

Paper@IEEE Code@Github Project

Framework

Sample Results

Synthesized face sketches on the CUFS dataset: (a) input face photo, (b) FSS-NST, (c) CycleGAN, (d) Pix2Pix, (e) pGAN, (f) SS-FSS, (g) MDAL, (h) KT-FSS, (i) GauGAN, (j) SCA-GAN, (k) GENRE (ours), (l) target sketch, and (m) parsing mask predicted by BiSeNet.

Synthesised sketches for faces in-the-wild: (a) input photo, (b) FSS-NST, (c) CycleGAN, (d) Pix2Pix, (e) SSL-FSS, (f) GauGAN, (g) SCA-GAN, and (h) GENRE.

Synthesised sketches for faces in the CelebA-HQ dataset: (a) input photo, (b) FSS-NST, (c) CycleGAN, (d) Pix2Pix, (e) SSL-FSS, (f) GauGAN, (g) SCA-GAN, and (h) GENRE.

Prerequisites

  • Linux or macOS
  • Python 3.7.3
  • Pytorch-lightning 0.7.5
  • CPU or NVIDIA GPU + CUDA CuDNN

Getting Started

Installation

  • Clone this repo:

    git clone https://github.com/fei-hdu/genre
    cd genre
    
  • Install PyTorch 0.4+ and torchvision from http://pytorch.org and other dependencies (e.g., visdom and dominate). You can install all the dependencies by

    pip install -r requirements.txt
    

train/test

  • Download our CUFS datasetand copy content to dataset folder

  • Train a model

    python train.py --dataset_train_list list_train.txt --dataset_test_list list_test.txt --use_en_feature --use_gmsd --img_w 200 --img_h 250 --input_size 256
    
  • Test the model

    python test.py --use_en_feature --img_w 200 --img_h 250 --input_size 256
    
  • If you want to train on your own data, please first align your pictures and prepare your data's facial parsing according to tutorial in preprocessing steps.

  • The test results are available at [Google Drive]

Apply a pre-trained model

  • A face $photo \mapsto sketch$ model pre-trained on CUHK/CUFS
  • The pre-trained model need to be save at ./checkpoint
  • Then you can test the model

Preprocessing steps

Face photos (and paired drawings) need to be aligned and have facial parsing. And facial parsing after alignment are needed in our code in training.

In our work,facial parsing is segmented by method in [1]

[1] Yu, Changqian, et al. "Bisenet: Bilateral segmentation network for real-time semantic segmentation." Proceedings of the European conference on computer vision (ECCV). 2018.

Demo

Our portrait drawing demos: (a) QR code of the applet of WeChat, (b) QR code of the Web API, (c)-(e) layouts of the applet of WeChat, and (f) picture of the drawing robot. Readers can try our demos by scanning the QR codes.

Citation

If you use this code for your research, please cite our paper.

Xiang Li, Fei Gao*, and Fei Huang, High-quality Face Sketch Synthesis via Geometric Normalization and Regularization, IEEE International Conference on Multimedia and Expo (ICME) 2021, July 5-9, 2021, Virtual. (Accepted)

bibtex:

@InProceedings{Li2021GENRE,
author = {Xiang Li and Fei Gao and Fei Huang},
title = {High-quality Face Sketch Synthesis via Geometric Normalization and Regularization},
booktitle = {IEEE International Conference on Multimedia and Expo (ICME) 2021},
month = {July 5-9},
year = {2021}
}

Acknowledgments

Our code is inspired by pytorch-CycleGAN-and-pix2pix and SPADE/GauGAN.

About

Portrait Drawing Generation, ICME 2021, BEST DEMO RUNNER UP AWARD

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 100.0%