Fried-Rice-Lab/FriedRiceLab
Official repository of the Fried Rice Lab, including code resources of the following our works: ESWT [arXiv], etc. This repository also implements many useful features and out-of-the-box image restoration models.
This project offers tools and pre-trained models for enhancing digital images. It can take a low-resolution or noisy image and output a clearer, higher-resolution version. Scientists, researchers, and engineers working with visual data that needs quality improvement, such as in medical imaging or satellite imagery, would find this useful.
210 stars. No commits in the last 6 months.
Use this if you need to restore or improve the quality of images, such as increasing resolution or removing noise, and want access to a variety of established image restoration models.
Not ideal if your primary goal is general image manipulation like cropping or color correction, or if you don't work with image quality enhancement tasks.
Stars
210
Forks
27
Language
Python
License
MIT
Category
Last pushed
Aug 03, 2024
Commits (30d)
0
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