Learning Chinese Character style with conditional GAN

Overview

zi2zi: Master Chinese Calligraphy with Conditional Adversarial Networks

animation

Introduction

Learning eastern asian language typefaces with GAN. zi2zi(字到字, meaning from character to character) is an application and extension of the recent popular pix2pix model to Chinese characters.

Details could be found in this blog post.

Network Structure

Original Model

alt network

The network structure is based off pix2pix with the addition of category embedding and two other losses, category loss and constant loss, from AC-GAN and DTN respectively.

Updated Model with Label Shuffling

alt network

After sufficient training, d_loss will drop to near zero, and the model's performance plateaued. Label Shuffling mitigate this problem by presenting new challenges to the model.

Specifically, within a given minibatch, for the same set of source characters, we generate two sets of target characters: one with correct embedding labels, the other with the shuffled labels. The shuffled set likely will not have the corresponding target images to compute L1_Loss, but can be used as a good source for all other losses, forcing the model to further generalize beyond the limited set of provided examples. Empirically, label shuffling improves the model's generalization on unseen data with better details, and decrease the required number of characters.

You can enable label shuffling by setting flip_labels=1 option in train.py script. It is recommended that you enable this after d_loss flatlines around zero, for further tuning.

Gallery

Compare with Ground Truth

compare

Brush Writing Fonts

brush

Cursive Script (Requested by SNS audience)

cursive

Mingchao Style (宋体/明朝体)

gaussian

Korean

korean

Interpolation

animation

Animation

animation animation

easter egg

How to Use

Step Zero

Download tons of fonts as you please

Requirement

  • Python 2.7
  • CUDA
  • cudnn
  • Tensorflow >= 1.0.1
  • Pillow(PIL)
  • numpy >= 1.12.1
  • scipy >= 0.18.1
  • imageio

Preprocess

To avoid IO bottleneck, preprocessing is necessary to pickle your data into binary and persist in memory during training.

First run the below command to get the font images:

python font2img.py --src_font=src.ttf
                   --dst_font=tgt.otf
                   --charset=CN 
                   --sample_count=1000
                   --sample_dir=dir
                   --label=0
                   --filter=1
                   --shuffle=1

Four default charsets are offered: CN, CN_T(traditional), JP, KR. You can also point it to a one line file, it will generate the images of the characters in it. Note, filter option is highly recommended, it will pre sample some characters and filter all the images that have the same hash, usually indicating that character is missing. label indicating index in the category embeddings that this font associated with, default to 0.

After obtaining all images, run package.py to pickle the images and their corresponding labels into binary format:

python package.py --dir=image_directories
                  --save_dir=binary_save_directory
                  --split_ratio=[0,1]

After running this, you will find two objects train.obj and val.obj under the save_dir for training and validation, respectively.

Experiment Layout

experiment/
└── data
    ├── train.obj
    └── val.obj

Create a experiment directory under the root of the project, and a data directory within it to place the two binaries. Assuming a directory layout enforce bettet data isolation, especially if you have multiple experiments running.

Train

To start training run the following command

python train.py --experiment_dir=experiment 
                --experiment_id=0
                --batch_size=16 
                --lr=0.001
                --epoch=40 
                --sample_steps=50 
                --schedule=20 
                --L1_penalty=100 
                --Lconst_penalty=15

schedule here means in between how many epochs, the learning rate will decay by half. The train command will create sample,logs,checkpoint directory under experiment_dir if non-existed, where you can check and manage the progress of your training.

Infer and Interpolate

After training is done, run the below command to infer test data:

python infer.py --model_dir=checkpoint_dir/ 
                --batch_size=16 
                --source_obj=binary_obj_path 
                --embedding_ids=label[s] of the font, separate by comma
                --save_dir=save_dir/

Also you can do interpolation with this command:

python infer.py --model_dir= checkpoint_dir/ 
                --batch_size=10
                --source_obj=obj_path 
                --embedding_ids=label[s] of the font, separate by comma
                --save_dir=frames/ 
                --output_gif=gif_path 
                --interpolate=1 
                --steps=10
                --uroboros=1

It will run through all the pairs of fonts specified in embedding_ids and interpolate the number of steps as specified.

Pretrained Model

Pretained model can be downloaded here which is trained with 27 fonts, only generator is saved to reduce the model size. You can use encoder in the this pretrained model to accelerate the training process.

Acknowledgements

Code derived and rehashed from:

License

Apache 2.0

Owner
Yuchen Tian
Born in the year of Snake, now stuck with Python.
Yuchen Tian
Molecular Sets (MOSES): A benchmarking platform for molecular generation models

Molecular Sets (MOSES): A benchmarking platform for molecular generation models Deep generative models are rapidly becoming popular for the discovery

Neelesh C A 3 Oct 14, 2022
Code for EMNLP 2021 main conference paper "Text AutoAugment: Learning Compositional Augmentation Policy for Text Classification"

Text-AutoAugment (TAA) This repository contains the code for our paper Text AutoAugment: Learning Compositional Augmentation Policy for Text Classific

LancoPKU 105 Jan 03, 2023
Tom-the-AI - A compound artificial intelligence software for Linux systems.

Tom the AI (version 0.82) WARNING: This software is not yet ready to use, I'm still setting up the GitHub repository. Should be ready in a few days. T

2 Apr 28, 2022
Code repository for the paper Computer Vision User Entity Behavior Analytics

Computer Vision User Entity Behavior Analytics Code repository for "Computer Vision User Entity Behavior Analytics" Code Description dataset.csv As di

Sameer Khanna 2 Aug 20, 2022
Irrigation controller for Home Assistant

Irrigation Unlimited This integration is for irrigation systems large and small. It can offer some complex arrangements without large and messy script

Robert Cook 176 Jan 02, 2023
PyTorch implementation of Advantage Actor Critic (A2C), Proximal Policy Optimization (PPO), Scalable trust-region method for deep reinforcement learning using Kronecker-factored approximation (ACKTR) and Generative Adversarial Imitation Learning (GAIL).

PyTorch implementation of Advantage Actor Critic (A2C), Proximal Policy Optimization (PPO), Scalable trust-region method for deep reinforcement learning using Kronecker-factored approximation (ACKTR)

Ilya Kostrikov 3k Dec 31, 2022
Neural Caption Generator with Attention

Neural Caption Generator with Attention Tensorflow implementation of "Show

Taeksoo Kim 510 Nov 30, 2022
DM-ACME compatible implementation of the Arm26 environment from Mujoco

ACME-compatible implementation of Arm26 from Mujoco This repository contains a customized implementation of Mujoco's Arm26 model, that can be used wit

1 Dec 24, 2021
Code for "Solving Graph-based Public Good Games with Tree Search and Imitation Learning"

Code for "Solving Graph-based Public Good Games with Tree Search and Imitation Learning" This is the code for the paper Solving Graph-based Public Goo

Victor-Alexandru Darvariu 3 Dec 05, 2022
Example scripts for the detection of lanes using the ultra fast lane detection model in ONNX.

Example scripts for the detection of lanes using the ultra fast lane detection model in ONNX.

Ibai Gorordo 35 Sep 07, 2022
Implementation of parameterized soft-exponential activation function.

Soft-Exponential-Activation-Function: Implementation of parameterized soft-exponential activation function. In this implementation, the parameters are

Shuvrajeet Das 1 Feb 23, 2022
Materials for upcoming beginner-friendly PyTorch course (work in progress).

Learn PyTorch for Deep Learning (work in progress) I'd like to learn PyTorch. So I'm going to use this repo to: Add what I've learned. Teach others in

Daniel Bourke 2.3k Dec 29, 2022
Make a surveillance camera from your raspberry pi!

rpi-surveillance Make a surveillance camera from your Raspberry Pi 4! The surveillance is built as following: the camera records 10 seconds video and

Vladyslav 62 Feb 03, 2022
On the adaptation of recurrent neural networks for system identification

On the adaptation of recurrent neural networks for system identification This repository contains the Python code to reproduce the results of the pape

Marco Forgione 3 Jan 13, 2022
High-performance moving least squares material point method (MLS-MPM) solver.

High-Performance MLS-MPM Solver with Cutting and Coupling (CPIC) (MIT License) A Moving Least Squares Material Point Method with Displacement Disconti

Yuanming Hu 2.2k Dec 31, 2022
ATAC: Adversarially Trained Actor Critic

ATAC: Adversarially Trained Actor Critic Adversarially Trained Actor Critic for Offline Reinforcement Learning by Ching-An Cheng*, Tengyang Xie*, Nan

Microsoft 41 Dec 08, 2022
Spherical Confidence Learning for Face Recognition, accepted to CVPR2021.

Sphere Confidence Face (SCF) This repository contains the PyTorch implementation of Sphere Confidence Face (SCF) proposed in the CVPR2021 paper: Shen

Maths 70 Dec 09, 2022
custom pytorch implementation of MoCo v3

MoCov3-pytorch custom implementation of MoCov3 [arxiv]. I made minor modifications based on the official MoCo repository [github]. No ViT part code an

39 Nov 14, 2022
Machine Learning Model deployment for Container (TensorFlow Serving)

try_tf_serving ├───dataset │ ├───testing │ │ ├───paper │ │ ├───rock │ │ └───scissors │ └───training │ ├───paper │ ├───rock

Azhar Rizki Zulma 5 Jan 07, 2022
Learning from Guided Play: A Scheduled Hierarchical Approach for Improving Exploration in Adversarial Imitation Learning Source Code

Learning from Guided Play: A Scheduled Hierarchical Approach for Improving Exploration in Adversarial Imitation Learning Source Code

STARS Laboratory 8 Sep 14, 2022