BiT
Deblurring method
Develops a deep learning-based method for deblurring images and videos from motion blur
[CVPR2023] Blur Interpolation Transformer for Real-World Motion from Blur
225 stars
8 watching
7 forks
Language: Python
last commit: 11 months ago beam-splittercomputer-visioncvprcvpr2023datasetdeblurringdeep-learningimage-enhancementimage-restorationimage-to-videolow-level-visionpytorchpytorch-implementationreal-world-datavideo-deblurringvideo-enhancementvideo-frame-interpolationvideo-restoration
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