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Awesome Super Resolution

Lots of SISR (Single Image Super Resolution) implementations in tensorflow maybe w/ pre-trained model!

maybe later, this repo could be supported via pip package.

Currently, Work-In-Progress

Total alerts Language grade: Python License: MIT

Usage

PIP

[not available yet :(]

Download

$ git clone https://github.com/kozistr/Awesome-Super-Resolution
$ cd ./Awesome-Super-Resolution

Dependency Install

$ pip3 install -r ./requirements.txt

Train / Eval / Inference

$ python3 train.py [w/ some parameters]
$ python3 eval.py [w/ some parameters]
$ python3 inference.py [w/ some parameters]

DataSets

  • DIV2K
  • Flicker2K
  • Set*

Repo Tree

│
├── assets (dir, images used in readme.md)
├── models
│    ├── vgg16.py (VGG19 model loader)
│    ├── vgg19.py (VGG16 model loader)
│    ├── xxx (dir, model name)
│    │     ├── logs      (tensorboard logs)
│    │     ├── config.py (configurations)
│    │     ├── model.py  (model script)
│    │     └── readme.md (results & explains)
│    └── ... (dir, model name)
│          └── ...
├── train.py       (trainer)
├── eval.py        (evaluator)
├── inference.py   (inferencer)
├── ops.py         (useful tf operators)
├── utils.py       (useful image utilities)
├── metrics.py     (metrics for evaluating SR Model)
├── dataloader.py  (dataset loader / feeder)
└── readme.py      (readme)

Papers & Codes

Name Summary Paper Code
2015
SRCNN Image Super-Resolution Using Deep Convolutional Networks [arXiv] [code]
2016
SRGAN Photo-Realistic Single Image Super-Resolution Using a Generative Adversarial Network [arXiv] [code]
FSRGAN Accelerating the Super-Resolution Convolutional Neural Network [arXiv] [code]
EnhanceNet Single Image Super-Resolution Through Automated Texture Synthesis [arXiv] [code]
2017
LapSRN Deep Laplacian Pyramid Networks for Fast and Accurate Super-Resolution [arXiv] [code]
EDSR Enhanced Deep Residual Networks for Single Image Super-Resolution [arXiv] [code]
2018
RCAN Image Super-Resolution Using Very Deep Residual Channel Attention Networks [arXiv] [code]
ESRGAN Enhanced SRGAN. Champion PIRM Challenge on Perceptual Super-Resolution [arXiv] [code]
FEQE Fast and Efficient Image Quality Enhancement via Desubpixel Convolutional Neural Networks [ECCV] [code]
IDN Fast and Accurate Single Image Super-Resolution via Information Distillation Network [ECCV] [code]
2019
NNTSR Image Super-Resolution by Neural Texture Transfer [arXiv] [code]

Pre-Trained Models

It's on the plan, but, because of the lack of hardware resources, it can be.

To-Be-Done

  1. TBD

ETC

Any suggestions and PRs and issues are WELCOME :)

Author

HyeongChan Kim / @kozistr

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