Title :
Structural prior enhanced compressed sensing for CT reconstruction with incomplete data
Author :
Le Shen ; Yuxiang Xing ; Xin Jin
Author_Institution :
Nuctech Co., Beijing, China
fDate :
Oct. 27 2013-Nov. 2 2013
Abstract :
CT image reconstruction from incomplete projection data is a challenging problem. Among massive reconstruction methods, iterative reconstruction based on compressed sensing (CS) is a promising one that enables us to accurately recovery signals from highly under-sample data when the signals have a sparse representation, which usually can be done by the constrained l1 minimization. The total variation (TV) minimization is a commonly used sparsity constraint, which assumes the target image is piece-wise constant. TV based CS algorithm has been successfully applied to solve many computed tomography problems, such as few views and interior reconstruction. In this work, we proposed a novel CS algorithm combined with a prior image to enhance the TV sparsity, namely structural prior enhanced compressed sensing (SPECS). Numerical simulation indicates SPECS is effective and robust for many kinds of incomplete data cases.
Keywords :
compressed sensing; computerised tomography; image reconstruction; iterative methods; medical image processing; CS algorithm; CT image reconstruction; SPECS; TV based CS algorithm; TV sparsity; computed tomography problems; constrained minimization; high undersample data; iterative reconstruction; numerical simulation; piece-wise constant; signal recovery; sparse representation; sparsity constraint; structural prior enhanced compressed sensing; total variation minimization; Compressed sensing; Computed tomography; Detectors; Image reconstruction; Reconstruction algorithms; TV; Transforms;
Conference_Titel :
Nuclear Science Symposium and Medical Imaging Conference (NSS/MIC), 2013 IEEE
Conference_Location :
Seoul
Print_ISBN :
978-1-4799-0533-1
DOI :
10.1109/NSSMIC.2013.6829247