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A Graph-based Framework for Image Restoration
Amin Kheradmand, Peyman Milanfar Department of Electrical Engineering University of California, Santa Cruz
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Restoration algorithm
Motivation With existing hand held cameras, degradations in the form of noise/blur in the captured images are inevitable. Restoration algorithm input image enhanced output
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kernel similarity matrix
Motivation Graph-based representation is an effective way for describing the underlying structure of images. kernel similarity matrix
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Contributions We have developed a general regularization framework based on a new definition of the graph Laplacian for different restoration problems. blurry input deblurred output
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Contributions We have proposed a data-adaptive sharpening algorithm.
input image output image
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Examples (deblurring)
blurry input deblurred output
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Examples (deblurring)
blurry input deblurred output
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Examples (denoising) noisy input denoised output
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Examples (denoising) noisy input denoised output
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Examples (sharpening)
input image output image
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References [1] A. Kheradmand, and P. Milanfar, “Non-linear structure-aware image sharpening with difference of smoothing operators”, Frontiers in ICT, Computer Image Analysis, vol. 2, no. 22, 2015. [2] A. Kheradmand, and P. Milanfar, “A general framework for regularized, similarity-based image restoration”, IEEE Transactions on Image Processing, vol. 23, No. 12, pp , Dec [3] A. Kheradmand and P. Milanfar, “Motion deblurring with graph Laplacian regularization”, Digital Photography and Mobile Imaging XI conference, IS&T/SPIE Electronic Imaging 2015, San Francisco, CA. [4] A. Kheradmand, and P. Milanfar, “A general framework for kernel similarity-based image denoising,” IEEE Global Conference on Signal and Information Processing (GlobalSIP), Dec. 2013, Austin, TX.
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