Image Super-Resolution for Anime-Style Art
fork from : https://github.com/nagadomi/waifu2x.git

nagadomi 620bd9c328 Fix undefined variable in convert_data.lua 10 tahun lalu
appendix d01d0987e5 support for removing url_cache 10 tahun lalu
assets c4657b4720 disabling the photo model in web.lua 10 tahun lalu
cache 1273b3609e first commit 10 tahun lalu
data 7c9933865c Fix .gitignore 10 tahun lalu
images cc15a877bd Update supplementary material 10 tahun lalu
lib b5db84d42e Change the jpeg config for the photo model 10 tahun lalu
models bcbebe5f77 Update denosing models 10 tahun lalu
tools 7ac7923345 Don't run model2 benchmark when model2_dir is not specified 10 tahun lalu
.gitattributes dd64c0004d Add .gitattributes 10 tahun lalu
.gitignore 7c9933865c Fix .gitignore 10 tahun lalu
LICENSE f2f5c882eb add LICENSE and NOTICE 10 tahun lalu
NOTICE f2f5c882eb add LICENSE and NOTICE 10 tahun lalu
README.md b385dfef0b Update README.md 10 tahun lalu
convert_data.lua 620bd9c328 Fix undefined variable in convert_data.lua 10 tahun lalu
train.lua 42bd89151e Add -gpu option in train.lua 10 tahun lalu
train.sh 903d945652 cleanup 10 tahun lalu
train_ukbench.sh b5db84d42e Change the jpeg config for the photo model 10 tahun lalu
waifu2x.lua 4a4885c856 Add -white_noise option 10 tahun lalu
web.lua c4657b4720 disabling the photo model in web.lua 10 tahun lalu

README.md

waifu2x

Image Super-Resolution for anime-style-art using Deep Convolutional Neural Networks.

Demo-Application can be found at http://waifu2x.udp.jp/ .

Summary

Click to see the slide show.

slide

References

waifu2x is inspired by SRCNN [1]. 2D character picture (HatsuneMiku) is licensed under CC BY-NC by piapro [2].

Public AMI

TODO

Third Party Software

Third-Party

Dependencies

Hardware

  • NVIDIA GPU

Platform

lualocks packages (excludes torch7's default packages)

  • lua-csnappy
  • md5
  • uuid
  • turbo

Installation

Setting Up the Command Line Tool Environment

(on Ubuntu 14.04)

Install CUDA

See: NVIDIA CUDA Getting Started Guide for Linux

Download CUDA

sudo dpkg -i cuda-repo-ubuntu1404_7.5-18_amd64.deb
sudo apt-get update
sudo apt-get install cuda

Install Package

sudo apt-get install libsnappy-dev

Install Torch7

See: Getting started with Torch

And install luarocks packages.

luarocks install graphicsmagick # upgrade
luarocks install lua-csnappy
luarocks install md5
luarocks install uuid
PREFIX=$HOME/torch/install luarocks install turbo # if you need to use web application

Getting waifu2x

git clone --depth 1 https://github.com/nagadomi/waifu2x.git

Validation

Testing the waifu2x command line tool.

th waifu2x.lua

Web Application

th web.lua

View at: http://localhost:8812/

Command line tools

Noise Reduction

th waifu2x.lua -m noise -noise_level 1 -i input_image.png -o output_image.png
th waifu2x.lua -m noise -noise_level 2 -i input_image.png -o output_image.png

2x Upscaling

th waifu2x.lua -m scale -i input_image.png -o output_image.png

Noise Reduction + 2x Upscaling

th waifu2x.lua -m noise_scale -noise_level 1 -i input_image.png -o output_image.png
th waifu2x.lua -m noise_scale -noise_level 2 -i input_image.png -o output_image.png

See also th waifu2x.lua -h.

Video Encoding

* avconv is alias of ffmpeg on Ubuntu 14.04.

Extracting images and audio from a video. (range: 00:09:00 ~ 00:12:00)

mkdir frames
avconv -i data/raw.avi -ss 00:09:00 -t 00:03:00 -r 24 -f image2 frames/%06d.png
avconv -i data/raw.avi -ss 00:09:00 -t 00:03:00 audio.mp3

Generating a image list.

find ./frames -name "*.png" |sort > data/frame.txt

waifu2x (for example, noise reduction)

mkdir new_frames
th waifu2x.lua -m noise -noise_level 1 -resume 1 -l data/frame.txt -o new_frames/%d.png

Generating a video from waifu2xed images and audio.

avconv -f image2 -r 24 -i new_frames/%d.png -i audio.mp3 -r 24 -vcodec libx264 -crf 16 video.mp4

Training Your Own Model

Notes: If you have cuDNN library, you can use cudnn kernel with -backend cudnn option. And you can convert trained cudnn model to cunn model with tools/cudnn2cunn.lua.

Data Preparation

Genrating a file list.

find /path/to/image/dir -name "*.png" > data/image_list.txt

You should use noise free images. In my case, waifu2x is trained with 6000 high-resolution-noise-free-PNG images.

Converting training data.

th convert_data.lua

Training a Noise Reduction(level1) model

mkdir models/my_model
th train.lua -model_dir models/my_model -method noise -noise_level 1 -test images/miku_noisy.png
th cleanup_model.lua -model models/my_model/noise1_model.t7 -oformat ascii
# usage
th waifu2x.lua -model_dir models/my_model -m noise -noise_level 1 -i images/miku_noisy.png -o output.png

You can check the performance of model with models/my_model/noise1_best.png.

Training a Noise Reduction(level2) model

th train.lua -model_dir models/my_model -method noise -noise_level 2 -test images/miku_noisy.png
th cleanup_model.lua -model models/my_model/noise2_model.t7 -oformat ascii
# usage
th waifu2x.lua -model_dir models/my_model -m noise -noise_level 2 -i images/miku_noisy.png -o output.png

You can check the performance of model with models/my_model/noise2_best.png.

Training a 2x UpScaling model

th train.lua -model_dir models/my_model -method scale -scale 2 -test images/miku_small.png
th cleanup_model.lua -model models/my_model/scale2.0x_model.t7 -oformat ascii
# usage
th waifu2x.lua -model_dir models/my_model -m scale -scale 2 -i images/miku_small.png -o output.png

You can check the performance of model with models/my_model/scale2.0x_best.png.