| Literature DB >> 24865209 |
Ailong Cai1, Linyuan Wang1, Hanming Zhang1, Bin Yan1, Lei Li1, Xiaoqi Xi1, Jianxin Li1.
Abstract
Linear scan computed tomography (CT) is a promising imaging configuration with high scanning efficiency while the data set is under-sampled and angularly limited for which high quality image reconstruction is challenging. In this work, an edge guided total variation minimization reconstruction (EGTVM) algorithm is developed in dealing with this problem. The proposed method is modeled on the combination of total variation (TV) regularization and iterative edge detection strategy. In the proposed method, the edge weights of intermediate reconstructions are incorporated into the TV objective function. The optimization is efficiently solved by applying alternating direction method of multipliers. A prudential and conservative edge detection strategy proposed in this paper can obtain the true edges while restricting the errors within an acceptable degree. Based on the comparison on both simulation studies and real CT data set reconstructions, EGTVM provides comparable or even better quality compared to the non-edge guided reconstruction and adaptive steepest descent-projection onto convex sets method. With the utilization of weighted alternating direction TV minimization and edge detection, EGTVM achieves fast and robust convergence and reconstructs high quality image when applied in linear scan CT with under-sampled data set.Keywords: Linear scan computed tomography; alternating direction method; edge guided reconstruction; limited angle problem; weighted total variation minimization
Mesh:
Year: 2014 PMID: 24865209 DOI: 10.3233/XST-140429
Source DB: PubMed Journal: J Xray Sci Technol ISSN: 0895-3996 Impact factor: 1.535