DocumentCode :
62064
Title :
Constrained {\\rm T}p{\\rm V} Minimization for Enhanced Exploitation of Gradient Sparsity: Application to CT Image Reconstruction
Author :
Sidky, Emil Y. ; Chartrand, Rick ; Boone, John M. ; Xiaochuan Pan
Author_Institution :
Dept. of Radiol., Univ. of Chicago, Chicago, IL, USA
Volume :
2
fYear :
2014
fDate :
2014
Firstpage :
1
Lastpage :
18
Abstract :
Exploiting sparsity in the image gradient magnitude has proved to be an effective means for reducing the sampling rate in the projection view angle in computed tomography (CT). Most of the image reconstruction algorithms, developed for this purpose, solve a nonsmooth convex optimization problem involving the image total variation (TV). The TV seminorm is the ℓ1 norm of the image gradient magnitude, and reducing the ℓ1 norm is known to encourage sparsity in its argument. Recently, there has been interest in employing nonconvex lp quasinorms with for sparsity exploiting image reconstruction, which is potentially more effective than ℓ1 because nonconvex lp is closer to ℓ0-a direct measure of sparsity. This paper develops algorithms for constrained minimization of the total p-variation (TpV), lp of the image gradient. Use of the algorithms is illustrated in the context of breast CT-an imaging modality that is still in the research phase and for which constraints on X-ray dose are extremely tight. The TpV-based image reconstruction algorithms are demonstrated on computer simulated data for exploiting gradient magnitude sparsity to reduce the projection view angle sampling. The proposed algorithms are applied to projection data from a realistic breast CT simulation, where the total X-ray dose is equivalent to two-view digital mammography. Following the simulation survey, the algorithms are then demonstrated on a clinical breast CT data set.
Keywords :
computerised tomography; diagnostic radiography; image reconstruction; image sampling; mammography; medical image processing; minimisation; TV seminorm; TpV-based image reconstruction algorithms; X-ray dose; clinical breast computerised tomography data set; computer simulated data; computerised tomography image reconstruction algorithms; constrained TpV minimization; enhanced exploitation; gradient magnitude sparsity; gradient sparsity; image gradient magnitude; image total variation; imaging modality; nonconvex quasinorms; nonsmooth convex optimization problem; projection view angle; projection view angle sampling; realistic breast computerised tomography simulation; sampling rate; total p-variation; two-view digital mammography; Computed tomography; Image reconstruction; Minimization; Optimization; Sparsity; X-ray detection; Computed tomography; X-ray tomography; image reconstruction; iterative algorithms; optimization;
fLanguage :
English
Journal_Title :
Translational Engineering in Health and Medicine, IEEE Journal of
Publisher :
ieee
ISSN :
2168-2372
Type :
jour
DOI :
10.1109/JTEHM.2014.2300862
Filename :
6714374
Link To Document :
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