DocumentCode :
1339617
Title :
Globally convergent edge-preserving regularized reconstruction: an application to limited-angle tomography
Author :
Delaney, Alexander H. ; Bresler, Yoram
Author_Institution :
Sunnyvale, CA, USA
Volume :
7
Issue :
2
fYear :
1998
fDate :
2/1/1998 12:00:00 AM
Firstpage :
204
Lastpage :
221
Abstract :
We introduce a generalization of a deterministic relaxation algorithm for edge-preserving regularization in linear inverse problems. This algorithm transforms the original (possibly nonconvex) optimization problem into a sequence of quadratic optimization problems, and has been shown to converge under certain conditions when the original cost functional being minimized is strictly convex. We prove that our more general algorithm is globally convergent (i.e., converges to a local minimum from any initialization) under less restrictive conditions, even when the original cost functional is nonconvex. We apply this algorithm to tomographic reconstruction from limited-angle data by formulating the problem as one of regularized least-squares optimization. The results demonstrate that the constraint of piecewise smoothness, applied through the use of edge-preserving regularization, can provide excellent limited-angle tomographic reconstructions. Two edge-preserving regularizers-one convex, the other nonconvex-are used in numerous simulations to demonstrate the effectiveness of the algorithm under various limited-angle scenarios, and to explore how factors, such as the choice of error norm, angular sampling rate and amount of noise, affect the reconstruction quality and algorithm performance. These simulation results show that for this application, the nonconvex regularizer produces consistently superior results
Keywords :
computerised tomography; convergence of numerical methods; deterministic algorithms; edge detection; image reconstruction; image sampling; inverse problems; least squares approximations; noise; optimisation; smoothing methods; tomography; algorithm performance; angular sampling rate; convex cost functional; deterministic relaxation algorithm; edge-preserving regularized reconstruction; error norm; globally convergent reconstruction; limited-angle data; limited-angle tomography; linear inverse problems; noise; nonconvex optimization problem; nonconvex regularizer; piecewise smoothness; quadratic optimization problems; reconstruction quality; regularized least-squares optimization; simulation results; simulations; tomographic reconstruction; Application software; Bayesian methods; Computer errors; Cost function; Electron microscopy; Entropy; Image reconstruction; Inverse problems; Iterative algorithms; Tomography;
fLanguage :
English
Journal_Title :
Image Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1057-7149
Type :
jour
DOI :
10.1109/83.660997
Filename :
660997
Link To Document :
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