DocumentCode
1764667
Title
A General Framework for Regularized, Similarity-Based Image Restoration
Author
Kheradmand, Amin ; Milanfar, Peyman
Author_Institution
Dept. of Electr. Eng., Univ. of California at Santa Cruz, Santa Cruz, CA, USA
Volume
23
Issue
12
fYear
2014
fDate
Dec. 2014
Firstpage
5136
Lastpage
5151
Abstract
Any image can be represented as a function defined on a weighted graph, in which the underlying structure of the image is encoded in kernel similarity and associated Laplacian matrices. In this paper, we develop an iterative graph-based framework for image restoration based on a new definition of the normalized graph Laplacian. We propose a cost function, which consists of a new data fidelity term and regularization term derived from the specific definition of the normalized graph Laplacian. The normalizing coefficients used in the definition of the Laplacian and associated regularization term are obtained using fast symmetry preserving matrix balancing. This results in some desired spectral properties for the normalized Laplacian such as being symmetric, positive semidefinite, and returning zero vector when applied to a constant image. Our algorithm comprises of outer and inner iterations, where in each outer iteration, the similarity weights are recomputed using the previous estimate and the updated objective function is minimized using inner conjugate gradient iterations. This procedure improves the performance of the algorithm for image deblurring, where we do not have access to a good initial estimate of the underlying image. In addition, the specific form of the cost function allows us to render the spectral analysis for the solutions of the corresponding linear equations. In addition, the proposed approach is general in the sense that we have shown its effectiveness for different restoration problems, including deblurring, denoising, and sharpening. Experimental results verify the effectiveness of the proposed algorithm on both synthetic and real examples.
Keywords
conjugate gradient methods; graph theory; image restoration; iterative methods; matrix algebra; spectral analysis; associated Laplacian matrices; cost function; data fidelity term; fast symmetry preserving matrix balancing; image deblurring algorithm; image denoising; image encoding; image representation; image sharpening; inner conjugate gradient iteration; iterative graph-based framework; kernel similarity; linear equation; normalized graph Laplacian; positive semidefinite vector; regularized similarity-based image restoration; returning zero vector; spectral analysis; symmetric vector; weighted graph; Cost function; Image restoration; Kernel; Laplace equations; Linear programming; Symmetric matrices; Vectors; Deblurring; Denoising; Graph Laplacian; Kernel Similarity Matrix; Sharpening; denoising; graph Laplacian; kernel similarity matrix; sharpening;
fLanguage
English
Journal_Title
Image Processing, IEEE Transactions on
Publisher
ieee
ISSN
1057-7149
Type
jour
DOI
10.1109/TIP.2014.2362059
Filename
6918453
Link To Document