Title :
A General-Thresholding Solution for
Regularized CT Reconstruction
Author :
Chuang Miao ; Hengyong Yu
Author_Institution :
Winston Salem, Wake Forest Univ. Health Sci., Salem, NC, USA
Abstract :
It is well known that l1 minimization can be used to recover sufficiently sparse unknown signals in the compressive sensing field. The l p regularization method, a generalized version between the well-known l1 regularization and the l0 regularization, has been proposed for a sparser solution. In this paper, we derive several quasi-analytic thresholding representations for the lp(0 <; p <; 1) regularization. The derived representations are exact matches for the well-known soft-threshold filtering for the l1 regularization and the hard-threshold filtering for the l0 regularization. The error bounds of the approximate general formulas are analyzed. The general-threshold representation formulas are incorporated into an iterative thresholding framework for a fast solution of an l p regularized computed tomography (CT) reconstruction. A series of simulated and realistic data experiments are conducted to evaluate the performance of the proposed general-threshold filtering algorithm for CT reconstruction, and it is also compared with the well-known re-weighted approach. Compared with the re-weighted algorithm, the proposed general-threshold filtering algorithm can substantially reduce the necessary view number for an accurate reconstruction of the Shepp-Logan phantom. In addition, the proposed general-threshold filtering algorithm performs well in terms of image quality, reconstruction accuracy, convergence speed, and sensitivity to parameters.
Keywords :
compressed sensing; computerised tomography; image filtering; image reconstruction; image segmentation; minimisation; phantoms; Shepp-Logan phantom; compressive sensing field; computed tomography reconstruction; general-threshold filtering algorithm; general-thresholding solution; hard-threshold filtering; image quality; iterative thresholding framework; l1 minimization; quasianalytic thresholding representation; regularization method; regularized CT reconstruction; reweighted algorithm; soft-threshold filtering; sparse unknown signal; $l_{p}$ regularization; Compressive sensing; least square; sparsity; thresholding representation;
Journal_Title :
Image Processing, IEEE Transactions on
DOI :
10.1109/TIP.2015.2468175