[SIGGRAPH Asia 2019] Artistic Glyph Image Synthesis via One-Stage Few-Shot Learning

Overview

AGIS-Net

Introduction

This is the official PyTorch implementation of the Artistic Glyph Image Synthesis via One-Stage Few-Shot Learning.

paper | supplementary material

Abstract

Automatic generation of artistic glyph images is a challenging task that attracts many research interests. Previous methods either are specifically designed for shape synthesis or focus on texture transfer. In this paper, we propose a novel model, AGIS-Net, to transfer both shape and texture styles in one-stage with only a few stylized samples. To achieve this goal, we first disentangle the representations for content and style by using two encoders, ensuring the multi-content and multi-style generation. Then we utilize two collaboratively working decoders to generate the glyph shape image and its texture image simultaneously. In addition, we introduce a local texture refinement loss to further improve the quality of the synthesized textures. In this manner, our one-stage model is much more efficient and effective than other multi-stage stacked methods. We also propose a large-scale dataset with Chinese glyph images in various shape and texture styles, rendered from 35 professional-designed artistic fonts with 7,326 characters and 2,460 synthetic artistic fonts with 639 characters, to validate the effectiveness and extendability of our method. Extensive experiments on both English and Chinese artistic glyph image datasets demonstrate the superiority of our model in generating high-quality stylized glyph images against other state-of-the-art methods.

Model Architecture

Architecture

Skip Connection Local Discriminator
skip-connection local-discriminator

Some Results

comparison

comparison

across_languae

Prerequisites

  • Linux
  • CPU or NVIDIA GPU + CUDA cuDNN
  • Python 3
  • PyTorch 0.4.0+

Get Started

Installation

  1. Install PyTorch, torchvison and dependencies from https://pytorch.org
  2. Install python libraries visdom and dominate:
    pip install visdom
    pip install dominate
  3. Clone this repo:
    git clone -b master --single-branch https://github.com/hologerry/AGIS-Net
    cd AGIS-Net
  4. Download the offical pre-trained vgg19 model: vgg19-dcbb9e9d.pth, and put it under the models/ folder

Datasets

The datasets server is down, you can download the datasets from PKU Disk, Dropbox or MEGA. Download the datasets using the following script, four datasets and the raw average font style glyph image are available.

It may take a while, please be patient

bash ./datasets/download_dataset.sh DATASET_NAME
  • base_gray_color English synthesized gradient glyph image dataset, proposed by MC-GAN.
  • base_gray_texture English artistic glyph image dataset, proposed by MC-GAN.
  • skeleton_gray_color Chinese synthesized gradient glyph image dataset by us.
  • skeleton_gray_texture Chinese artistic glyph image dataset proposed by us.
  • average_skeleton Raw Chinese avgerage font style (skeleton) glyph image dataset proposed by us.

Please refer to the data for more details about our datasets and how to prepare your own datasets.

Model Training

  • To train a model, download the training images (e.g., English artistic glyph transfer)

    bash ./datasets/download_dataset.sh base_gray_color
    bash ./datasets/download_dataset.sh base_gray_texture
  • Train a model:

    1. Start the Visdom Visualizer

      python -m visdom.server -port PORT

      PORT is specified in train.sh

    2. Pretrain on synthesized gradient glyph image dataset

      bash ./scripts/train.sh base_gray_color GPU_ID

      GPU_ID indicates which GPU to use.

    3. Fineture on artistic glyph image dataset

      bash ./scripts/train.sh base_gray_texture GPU_ID DATA_ID FEW_SIZE

      DATA_ID indicates which artistic font is fine-tuned.
      FEW_SIZE indicates the size of few-shot set.

      It will raise an error saying:

      FileNodeFoundError: [Error 2] No such file or directory: 'chechpoints/base_gray_texture/base_gray_texture_DATA_ID_TIME/latest_net_G.pth
      

      Copy the pretrained model to above path

      cp chechpoints/base_gray_color/base_gray_color_TIME/latest_net_* chechpoints/base_gray_texture/base_gray_texture_DATA_ID_TIME/

      And start train again. It will works well.

Model Testing

  • To test a model, copy the trained model from checkpoint to pretrained_models folder (e.g., English artistic glyph transfer)

    cp chechpoints/base_gray_color/base_gray_texture_DATA_ID_TIME/latest_net_* pretrained_models/base_gray_texture_DATA_ID/
  • Test a model

    bash ./scripts/test_base_gray_texture.sh GPU_ID DATA_ID

Acknowledgements

This code is inspired by the BicycleGAN.

Special thanks to the following works for sharing their code and dataset.

Citation

If you find our work is helpful, please cite our paper:

@article{Gao2019Artistic,
  author = {Yue, Gao and Yuan, Guo and Zhouhui, Lian and Yingmin, Tang and Jianguo, Xiao},
  title = {Artistic Glyph Image Synthesis via One-Stage Few-Shot Learning},
  journal = {ACM Trans. Graph.},
  issue_date = {November 2019},
  volume = {38},
  number = {6},
  year = {2019},
  articleno = {185},
  numpages = {12},
  url = {http://doi.acm.org/10.1145/3355089.3356574},
  publisher = {ACM}
} 

Copyright

The code and dataset are only allowed for PERSONAL and ACADEMIC usage.

Owner
Yue Gao
Researcher at Microsoft Research Asia
Yue Gao
Datasets and source code for our paper Webly Supervised Fine-Grained Recognition: Benchmark Datasets and An Approach

Introduction Datasets and source code for our paper Webly Supervised Fine-Grained Recognition: Benchmark Datasets and An Approach Datasets: WebFG-496

21 Sep 30, 2022
We simulate traveling back in time with a modern camera to rephotograph famous historical subjects.

[SIGGRAPH Asia 2021] Time-Travel Rephotography [Project Website] Many historical people were only ever captured by old, faded, black and white photos,

298 Jan 02, 2023
This script runs neural style transfer against the provided content image.

Neural Style Transfer Content Style Output Description: This script runs neural style transfer against the provided content image. The content image m

Martynas Subonis 0 Nov 25, 2021
Automatic Idiomatic Expression Detection

IDentifier of Idiomatic Expressions via Semantic Compatibility (DISC) An Idiomatic identifier that detects the presence and span of idiomatic expressi

5 Jun 09, 2022
TANL: Structured Prediction as Translation between Augmented Natural Languages

TANL: Structured Prediction as Translation between Augmented Natural Languages Code for the paper "Structured Prediction as Translation between Augmen

98 Dec 15, 2022
Neural Oblivious Decision Ensembles

Neural Oblivious Decision Ensembles A supplementary code for anonymous ICLR 2020 submission. What does it do? It learns deep ensembles of oblivious di

25 Sep 21, 2022
Densely Connected Convolutional Networks, In CVPR 2017 (Best Paper Award).

Densely Connected Convolutional Networks (DenseNets) This repository contains the code for DenseNet introduced in the following paper Densely Connecte

Zhuang Liu 4.5k Jan 03, 2023
Neighborhood Contrastive Learning for Novel Class Discovery

Neighborhood Contrastive Learning for Novel Class Discovery This repository contains the official implementation of our paper: Neighborhood Contrastiv

Zhun Zhong 56 Dec 09, 2022
Transformers based fully on MLPs

Awesome MLP-based Transformers papers An up-to-date list of Transformers based fully on MLPs without attention! Why this repo? After transformers and

Fawaz Sammani 35 Dec 30, 2022
Leibniz is a python package which provide facilities to express learnable partial differential equations with PyTorch

Leibniz is a python package which provide facilities to express learnable partial differential equations with PyTorch

Beijing ColorfulClouds Technology Co.,Ltd. 16 Aug 07, 2022
[ICCV 2021] Self-supervised Monocular Depth Estimation for All Day Images using Domain Separation

ADDS-DepthNet This is the official implementation of the paper Self-supervised Monocular Depth Estimation for All Day Images using Domain Separation I

LIU_LINA 52 Nov 24, 2022
This repository focus on Image Captioning & Video Captioning & Seq-to-Seq Learning & NLP

Awesome-Visual-Captioning Table of Contents ACL-2021 CVPR-2021 AAAI-2021 ACMMM-2020 NeurIPS-2020 ECCV-2020 CVPR-2020 ACL-2020 AAAI-2020 ACL-2019 NeurI

Ziqi Zhang 362 Jan 03, 2023
Object detection and instance segmentation toolkit based on PaddlePaddle.

Object detection and instance segmentation toolkit based on PaddlePaddle.

9.3k Jan 02, 2023
The implementation our EMNLP 2021 paper "Enhanced Language Representation with Label Knowledge for Span Extraction".

LEAR The implementation our EMNLP 2021 paper "Enhanced Language Representation with Label Knowledge for Span Extraction". **The code is in the "master

杨攀 93 Jan 07, 2023
REGTR: End-to-end Point Cloud Correspondences with Transformers

REGTR: End-to-end Point Cloud Correspondences with Transformers This repository contains the source code for REGTR. REGTR utilizes multiple transforme

Zi Jian Yew 108 Dec 17, 2022
A spatial genome aligner for analyzing multiplexed DNA-FISH imaging data.

jie jie is a spatial genome aligner. This package parses true chromatin imaging signal from noise by aligning signals to a reference DNA polymer model

Bojing Jia 9 Sep 29, 2022
SPEAR: Semi suPErvised dAta progRamming

Semi-Supervised Data Programming for Data Efficient Machine Learning SPEAR is a library for data programming with semi-supervision. The package implem

decile-team 91 Dec 06, 2022
Learning cell communication from spatial graphs of cells

ncem Features Repository for the manuscript Fischer, D. S., Schaar, A. C. and Theis, F. Learning cell communication from spatial graphs of cells. 2021

Theis Lab 77 Dec 30, 2022
Pipeline for employing a Lightweight deep learning models for LOW-power systems

PL-LOW A high-performance deep learning model lightweight pipeline that gradually lightens deep neural networks in order to utilize high-performance d

POSTECH Data Intelligence Lab 9 Aug 13, 2022