Gengsheng L. ZengYa LiAlexander A. Zamyatin
Iterative image reconstruction with the total-variation (TV) constraint has become an active research area in recent years, especially in x-ray CT and MRI. Based on Green's one-step-late algorithm, this paper develops a transmission noise weighted iterative algorithm with a TV prior. This paper compares the reconstructions from this iterative TV algorithm with reconstructions from our previously developed non-iterative reconstruction method that consists of a noise-weighted filtered backprojection (FBP) reconstruction algorithm and a nonlinear edge-preserving post filtering algorithm. This paper gives a mathematical proof that the noise-weighted FBP provides an optimal solution. The results from both methods are compared using clinical data and computer simulation data. The two methods give comparable image quality, while the non-iterative method has the advantage of requiring much shorter computation times.
马继明 Ma Jiming张建奇 Zhang Jianqi宋顾周 Song Guzhou王群书 Wang Qunshu韩长材 Han Changcai段宝军 Duan Baojun
Frank DennerleinHolger KunzeFrédéric Noo
Z. F. TianXiaoli JiaTinsu PanS Jiang
Daniël M. PeltKees Joost Batenburg