Second-Order Total Variation and Primal-Dual Algorithm for CT Image Reconstruction
Abstract
In this paper, we proposed a regularization model based on second-order total variation for CT image reconstruction, which could eliminate the 'staircase' caused by total variation (TV) minimization. Moreover, some properties of second-order total variation were investigated, and a primal-dual algorithm for the proposed model was presented. Some numerical experiments for various projection data were conducted to demonstrate the efficiency of the proposed model and algorithm.
About this article
Abstract View
- 33200
Pdf View
- 4240