Implementation for "Seamless Manga Inpainting with Semantics Awareness" (SIGGRAPH 2021 issue)

Overview

Seamless Manga Inpainting with Semantics Awareness

[SIGGRAPH 2021](To appear) | Project Website | BibTex

Introduction:

Manga inpainting fills up the disoccluded pixels due to the removal of dialogue balloons or ``sound effect'' text. This process is long needed by the industry for the language localization and the conversion to animated manga. It is mostly done manually, as existing methods (mostly for natural image inpainting) cannot produce satisfying results. We present the first manga inpainting method, a deep learning model, that generates high-quality results. Instead of direct inpainting, we propose to separate the complicated inpainting into two major phases, semantic inpainting and appearance synthesis. This separation eases both the feature understanding and hence the training of the learning model. A key idea is to disentangle the structural line and screentone, that helps the network to better distinguish the structural line and the screentone features for semantic interpretation. Detailed description of the system can be found in our [paper](To appear).

Example Results

Belows shows an example of our inpainted manga image. Our method automatically fills up the disoccluded regions with meaningful structural lines and seamless screentones. Example

Prerequisites

  • Python 3.6
  • PyTorch 1.2
  • NVIDIA GPU + CUDA cuDNN

Installation

  • Clone this repo:
git clone https://github.com/msxie92/MangaInpainting.git
cd MangaInpainting
pip install -r requirements.txt

Datasets

1) Images

As most of our training manga images are under copyright. We recommend you to use restored Manga109 dataset. Please download datasets from official websites and then use Manga Restoration to restored the bitonal nature. Please use a larger resolution instead of the predicted one to tolerant the prediction error. Exprically, set scale>1.4.

2) Structural lines

Our model is trained on structural lines extracted by Li et al.. You can download their publically available testing code.

3) Masks

Our model is trained on both regular masks (randomly generated rectangle masks) and irregular masks (provided by Liu et al.). You can download publically available Irregular Mask Dataset from their website. Alternatively, you can download Quick Draw Irregular Mask Dataset by Karim Iskakov which is combination of 50 million strokes drawn by human hand.

Getting Started

Download the pre-trained models using the following links and copy them under ./checkpoints directory.

MangaInpainting

ScreenVAE

Testing

To test the model, create a config.yaml file similar to the example config file and copy it under your checkpoints directory.

In each case, you need to provide an input image (image with a mask) and a mask file. Please make sure that the mask file covers the entire mask region in the input image. To test the model:

python test.py --checkpoints [path to checkpoints] \
      --input [path to the output directory]\
      --mask [path to the output directory]\
      --line [path to the output directory]\
      --output [path to the output directory]

We provide some test examples under ./examples directory. Please download the pre-trained models and run:

python test.py --checkpoints ./checkpoints/mangainpaintor \
      --input examples/test/imgs/ \
      --mask examples/test/masks/ \
      --line examples/test/lines/ \
      --output examples/test/results/

This script will inpaint all images in ./examples/manga/imgs using their corresponding masks in ./examples/manga/mask directory and saves the results in ./checkpoints/results directory.

Model Configuration

The model configuration is stored in a config.yaml file under your checkpoints directory.

Citation

If any part of our paper and code is helpful to your work, please generously cite with:

@inproceedings{xie2021seamless,
	title    ={Seamless Manga Inpainting with Semantics Awareness},
	author   ={Minshan Xie and Menghan Xia and Xueting Liu and Chengze Li and Tien-Tsin Wong},
	journal  = {ACM Transactions on Graphics (SIGGRAPH 2021 issue)},
	month    = {August},
	year     = {2021},
	volume   = {40},
        number   = {4},
        pages    = {96:1--96:11}
}

Reference

Repository for publicly available deep learning models developed in Rosetta community

trRosetta2 This package contains deep learning models and related scripts used by Baker group in CASP14. Installation Linux/Mac clone the package git

81 Dec 29, 2022
Video Frame Interpolation with Transformer (CVPR2022)

VFIformer Official PyTorch implementation of our CVPR2022 paper Video Frame Interpolation with Transformer Dependencies python = 3.8 pytorch = 1.8.0

DV Lab 63 Dec 16, 2022
Implementation of Geometric Vector Perceptron, a simple circuit for 3d rotation equivariance for learning over large biomolecules, in Pytorch. Idea proposed and accepted at ICLR 2021

Geometric Vector Perceptron Implementation of Geometric Vector Perceptron, a simple circuit with 3d rotation equivariance for learning over large biom

Phil Wang 59 Nov 24, 2022
Towards Implicit Text-Guided 3D Shape Generation (CVPR2022)

Towards Implicit Text-Guided 3D Shape Generation Towards Implicit Text-Guided 3D Shape Generation (CVPR2022) Code for the paper [Towards Implicit Text

55 Dec 16, 2022
Code for "Unsupervised Source Separation via Bayesian inference in the latent domain"

LQVAE-separation Code for "Unsupervised Source Separation via Bayesian inference in the latent domain" Paper Samples GT Compressed Separated Drums GT

Michele Mancusi 30 Oct 25, 2022
VideoGPT: Video Generation using VQ-VAE and Transformers

VideoGPT: Video Generation using VQ-VAE and Transformers [Paper][Website][Colab][Gradio Demo] We present VideoGPT: a conceptually simple architecture

Wilson Yan 470 Dec 30, 2022
🔮 Execution time predictions for deep neural network training iterations across different GPUs.

Habitat: A Runtime-Based Computational Performance Predictor for Deep Neural Network Training Habitat is a tool that predicts a deep neural network's

Geoffrey Yu 44 Dec 27, 2022
Caffe: a fast open framework for deep learning.

Caffe Caffe is a deep learning framework made with expression, speed, and modularity in mind. It is developed by Berkeley AI Research (BAIR)/The Berke

Berkeley Vision and Learning Center 33k Dec 28, 2022
Pre-trained BERT Models for Ancient and Medieval Greek, and associated code for LaTeCH 2021 paper titled - "A Pilot Study for BERT Language Modelling and Morphological Analysis for Ancient and Medieval Greek"

Ancient Greek BERT The first and only available Ancient Greek sub-word BERT model! State-of-the-art post fine-tuning on Part-of-Speech Tagging and Mor

Pranaydeep Singh 22 Dec 08, 2022
Learning Optical Flow from a Few Matches (CVPR 2021)

Learning Optical Flow from a Few Matches This repository contains the source code for our paper: Learning Optical Flow from a Few Matches CVPR 2021 Sh

Shihao Jiang (Zac) 159 Dec 16, 2022
PaddlePaddle GAN library, including lots of interesting applications like First-Order motion transfer, wav2lip, picture repair, image editing, photo2cartoon, image style transfer, and so on.

English | 简体中文 PaddleGAN PaddleGAN provides developers with high-performance implementation of classic and SOTA Generative Adversarial Networks, and s

6.4k Jan 09, 2023
Black-Box-Tuning - Black-Box Tuning for Language-Model-as-a-Service

Black-Box-Tuning Source code for paper "Black-Box Tuning for Language-Model-as-a-Service". Being busy recently, the code in this repo and this tutoria

Tianxiang Sun 149 Jan 04, 2023
StudioGAN is a Pytorch library providing implementations of representative Generative Adversarial Networks (GANs) for conditional/unconditional image generation.

StudioGAN is a Pytorch library providing implementations of representative Generative Adversarial Networks (GANs) for conditional/unconditional image generation.

3k Jan 08, 2023
KaziText is a tool for modelling common human errors.

KaziText KaziText is a tool for modelling common human errors. It estimates probabilities of individual error types (so called aspects) from grammatic

ÚFAL 3 Nov 24, 2022
This is a repository for a No-Code object detection inference API using the OpenVINO. It's supported on both Windows and Linux Operating systems.

OpenVINO Inference API This is a repository for an object detection inference API using the OpenVINO. It's supported on both Windows and Linux Operati

BMW TechOffice MUNICH 68 Nov 24, 2022
Wordle-solver - Wordle answer generation program in python

🟨 Wordle Solver 🟩 Wordle answer generation program in python ✔️ Requirements U

Dahyun Kang 4 May 28, 2022
arxiv-sanity, but very lite, simply providing the core value proposition of the ability to tag arxiv papers of interest and have the program recommend similar papers.

arxiv-sanity, but very lite, simply providing the core value proposition of the ability to tag arxiv papers of interest and have the program recommend similar papers.

Andrej 671 Dec 31, 2022
A simple rest api serving a deep learning model that classifies human gender based on their faces. (vgg16 transfare learning)

this is a simple rest api serving a deep learning model that classifies human gender based on their faces. (vgg16 transfare learning)

crispengari 5 Dec 09, 2021
NLP made easy

GluonNLP: Your Choice of Deep Learning for NLP GluonNLP is a toolkit that helps you solve NLP problems. It provides easy-to-use tools that helps you l

Distributed (Deep) Machine Learning Community 2.5k Jan 04, 2023
Scikit-learn compatible estimation of general graphical models

skggm : Gaussian graphical models using the scikit-learn API In the last decade, learning networks that encode conditional independence relationships

213 Jan 02, 2023