MPRNet
Image restoration model
A deep learning model designed to progressively restore degraded images by iteratively refining the degradation and its representation in the image
[CVPR 2021] Multi-Stage Progressive Image Restoration. SOTA results for Image deblurring, deraining, and denoising.
1k stars
16 watching
192 forks
Language: Python
last commit: 7 months ago computer-visioncvpr-2021cvpr2021cvpr21image-deblurringimage-denoisingimage-derainingimage-restorationlow-level-visionmultistage-networkprogressive-restorationpytorch
Related projects:
Repository | Description | Stars |
---|---|---|
swz30/restormer | Proposes an efficient neural architecture model for high-resolution image restoration tasks | 1,805 |
cszn/srmd | Develops a single convolutional network to handle various image degradations with improved scalability and efficiency | 426 |
cszn/ircnn | This project trains deep CNN denoisers to improve image restoration tasks such as deblurring and demosaicking through model-based optimization methods. | 600 |
algolzw/daclip-uir | This project controls vision-language models to restore degraded images in various environments and conditions. | 668 |
xlearning-scu/2022-cvpr-airnet | Restores degraded images by combining multiple tasks of dehazing, denoising and deraining in a single framework | 176 |
cszn/dpsr | A deep learning-based method to improve image quality by reducing blur effects | 836 |
algolzw/image-restoration-sde | Image restoration software using stochastic differential equations | 580 |
mc-e/deep-generalized-unfolding-networks-for-image-restoration | An image restoration framework using neural networks with interpretable and adaptive structure for diverse applications | 131 |
codeslake/pvdnet | An open-source implementation of a deep learning model for video deblurring and motion estimation. | 114 |
hongguangzhang/dmphn-cvpr19-master | An image deblurring technique utilizing a hierarchical network architecture | 194 |
siavashbigdeli/dmsp | A MATLAB implementation of an image restoration algorithm based on a deep mean-shift prior | 33 |
lingyanruan/lakdnet | An image deblurring model that revisits the use of convolutional neural networks to improve efficiency and performance compared to transformers. | 97 |
hyeongseokson1/kpac | An implementation of a deep learning model for deblurring images affected by defocus. | 58 |
radimspetlik/si-ddpm-fmo | A Python-based framework for training and evaluating deep learning models for single-image deblurring, shape, and trajectory recovery of fast-moving objects. | 5 |
subeeshvasu/2018_subeesh_nbd_cvpr | Provides results and tools for image deblurring using CNNs to handle kernel uncertainty | 5 |