 NBD_KerUnc
 NBD_KerUnc 
 Image Deconvolution Model
 A repository providing pre-trained models and results for image deconvolution in the presence of kernel/model uncertainty
Project page of the paper 'Deep Learning for Handling Kernel/model Uncertainty in Image Deconvolution' (CVPR 2020)
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Language: Python 
last commit: about 5 years ago  Related projects:
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