Paper: De-rendering Stylized Texts

Overview

Paper: De-rendering Stylized Texts

Wataru Shimoda1, Daichi Haraguchi2, Seiichi Uchida2, Kota Yamaguchi1
1CyberAgent.Inc, 2 Kyushu University
Accepted to ICCV2021. [Publication] [Arxiv] [project-page]

Introduction

This repository contains the codes for "De-rendering stylized texts".

Concept

We propose to parse rendering parameters of stylized texts utilizing a neural net.

Demo

The proposed model parses rendering parameters based on famous 2d graphic engine[Skia.org|python implementation], which has compatibility with CSS in the Web. We can export the estimated rendering parameters and edit texts by an off-the-shelf rendering engine.

Installation

Requirements

  • Python >= 3.7
  • Pytorch >= 1.8.1
  • torchvision >= 0.9.1
pip install -r requiements.txt

Font data

  • The proposed model is trained with google fonts.
  • Download google fonts and locate in data/fonts/ as gfonts.
cd data/fonts
git clone https://github.com/google/fonts.git gfonts

Pre-rendered alpha maps

  • The proposed model parses rendering parameters and refines them through the differentiable rendering model, which uses pre-rendered alpha maps.
  • Generate pre-rendered alpha maps.
python -m util_lib.gen_pams

Pre-rendered alpha maps would be generated in data/fonts/prerendered_alpha.

Usage

Test

  • Download the pre-trained weight from this link (weight).
  • Locate the weight file in weights/font100_unified.pth.

Example usage.

python test.py --imgfile=example/sample.jpg

Note

  • imgfile option: path of an input image
  • results would be generated in res/

Data generation

in progress

Train

in progress

Todo

  • Testing codes
  • Codes for the text image generator
  • Training codes
  • Add notebooks for the guide

Reference

@InProceedings{Shimoda_2021_ICCV,
    author    = {Shimoda, Wataru and Haraguchi, Daichi and Uchida, Seiichi and Yamaguchi, Kota},
    title     = {De-Rendering Stylized Texts},
    booktitle = {Proceedings of the IEEE/CVF International Conference on Computer Vision (ICCV)},
    month     = {October},
    year      = {2021},
    pages     = {1076-1085}
}

Contact

This repository is maintained by Wataru shimoda(wataru_shimoda[at]cyberagent.co.jp).

Owner
CyberAgent AI Lab
CyberAgent AI Lab
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