Publication | Closed Access
Image Restoration Using Joint Patch-Group-Based Sparse Representation
112
Citations
64
References
2020
Year
DeblurringSparse RepresentationImage AnalysisEngineeringGroup-based Sparse RepresentationPattern RecognitionBiomedical ImagingImage DenoisingInverse ProblemsImage RestorationVideo RestorationSparse Representation ModelsComputer Vision
Sparse representation has achieved great success in various image processing and computer vision tasks. For image processing, typical patch-based sparse representation (PSR) models usually tend to generate undesirable visual artifacts, while group-based sparse representation (GSR) models lean to produce over-smooth effects. In this paper, we propose a new sparse representation model, termed joint patch-group based sparse representation (JPG-SR). Compared with existing sparse representation models, the proposed JPG-SR provides an effective mechanism to integrate the local sparsity and nonlocal self-similarity of images. We then apply the proposed JPG-SR to image restoration tasks, including image inpainting and image deblocking. An iterative algorithm based on the alternating direction method of multipliers (ADMM) framework is developed to solve the proposed JPG-SR based image restoration problems. Experimental results demonstrate that the proposed JPG-SR is effective and outperforms many state-of-the-art methods in both objective and perceptual quality.
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