GPEN

Face restoration tool

An open-source software project that develops and provides tools for restoring degraded faces in images using Generative Pre-trained Networks.

GitHub

2k stars
56 watching
451 forks
Language: Jupyter Notebook
last commit: 11 months ago

Related projects:

Repository Description Stars
tencentarc/gfpgan An algorithm for restoring damaged or obscured faces in images 35,912
sczhou/codeformer A deep learning-based framework for enhancing and restoring images of faces in various conditions 15,900
cszn/kair Image restoration toolbox with training and testing codes for various deep learning-based methods 2,968
xpixelgroup/diffbir Generative model for blind image restoration and other related tasks using diffusion prior 3,395
cmusatyalab/openface A general-purpose face recognition system with deep neural networks. 15,146
postech-cvlab/pytorch-studiogan A comprehensive PyTorch library providing implementations of various Generative Adversarial Networks (GANs) for image generation and evaluation. 3,430
clovaai/stargan-v2 A Python implementation of an image-to-image translation model for generating diverse images across multiple domains. 3,506
lucidrains/dalle2-pytorch An implementation of DALL-E 2's text-to-image synthesis neural network in PyTorch 11,148
xinntao/esrgan Software implementation of enhanced image restoration algorithm using Generative Adversarial Networks 6,035
nvlabs/stylegan2 Improves upon the state-of-the-art architecture for generating high-quality images using a GAN-based approach 10,996
kwaivgi/liveportrait An implementation of portrait animation with stitching and retargeting control using PyTorch 13,058
systemerrorwang/white-box-cartoonization An implementation of a deep learning-based facial cartoonization system using TensorFlow 3,958
xinntao/real-esrgan Develops algorithms for practical image and video restoration using synthetic data 28,519
sanghyun-son/edsr-pytorch Provides a PyTorch implementation of single image super-resolution 2,443
open-mmlab/mmagic A toolkit for building and experimenting with generative AI models for image and video generation, restoration, enhancement, and other tasks. 6,945