W_DIP
Image deconvolution guide
This project presents a method to improve the stability and performance of unsupervised blind image deconvolution using Wiener guidance.
Wiener Guided DIP for Unsupervised Blind Image Deconvolution
13 stars
1 watching
3 forks
Language: Python
last commit: almost 3 years ago Related projects:
Repository | Description | Stars |
---|---|---|
rwenqi/nbd-glra | A MATLAB implementation of a deep learning-based deconvolution algorithm using generalized low-rank approximation for image restoration. | 21 |
jennyzu/bp-dip-deblurring | A Python implementation of an image deblurring technique based on backprojection from a deep learning prior | 6 |
uschmidt83/fourier-deconvolution-network | A software project that provides an implementation of Fourier deconvolution for image restoration using a neural network | 37 |
ysnan/vem-nbd | Provides pre-trained models and benchmark results for noise-blind image deblurring, allowing developers to test and compare different approaches. | 14 |
dong-huo/vdip-deconvolution | A method for blind image deconvolution using variational deep image prior. | 13 |
wdzhao123/apl | Develops a deep learning-based method to detect and remove defocus blur from images | 16 |
ysnan/nbd_kerunc | A repository providing pre-trained models and results for image deconvolution in the presence of kernel/model uncertainty | 14 |
donggong1/learn-optimizer-rgdn | An implementation of deep learning-based optimization method for image deconvolution, which improves the quality of blurry images by generating new blur kernels. | 32 |
deepmed-lab-ecnu/deeprft-aaai2023 | A deep learning-based image deblurring system that explores the impact of frequency selection on restoration quality | 18 |
invokerer/deeprft | Develops deep learning-based methods for removing blur and defocus from images | 244 |
minyuanye/siun | This project develops a deep learning-based image deblurring algorithm using iterative upsampling network architecture | 162 |
subeeshvasu/2018_subeesh_nbd_cvpr | Provides results and tools for image deblurring using CNNs to handle kernel uncertainty | 5 |
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/dcls | A software framework for performing blind image super-resolution using constrained least squares optimization | 23 |
algolzw/daclip-uir | This project controls vision-language models to restore degraded images in various environments and conditions. | 662 |