Abstract

In practical applications of computed tomography (CT) imaging, due to the risk of high radiation dose imposed on the patients, it is desired that high quality CT images can be accurately reconstructed from limited projection data. While with limited projections, the images reconstructed often suffer severe artifacts and the edges of the objects are blurred. In recent years, the compressed sensing based reconstruction algorithm has attracted major attention for CT reconstruction from a limited number of projections. In this paper, to eliminate the streak artifacts and preserve the edge structure information of the object, we present a novel iterative reconstruction algorithm based on weighted total difference (WTD) minimization, and demonstrate the superior performance of this algorithm. The WTD measure enforces both the sparsity and the directional continuity in the gradient domain, while the conventional total difference (TD) measure simply enforces the gradient sparsity horizontally and vertically. To solve our WTD-based few-view CT reconstruction model, we use the soft-threshold filtering approach. Numerical experiments are performed to validate the efficiency and the feasibility of our algorithm. For a typical slice of FORBILD head phantom, using 40 projections in the experiments, our algorithm outperforms the TD-based algorithm with more than 60% gains in terms of the root-mean-square error (RMSE), normalized root mean square distance (NRMSD) and normalized mean absolute distance (NMAD) measures and with more than 10% gains in terms of the peak signal-to-noise ratio (PSNR) measure. While for the experiments of noisy projections, our algorithm outperforms the TD-based algorithm with more than 15% gains in terms of the RMSE, NRMSD and NMAD measures and with more than 4% gains in terms of the PSNR measure. The experimental results indicate that our algorithm achieves better performance in terms of suppressing streak artifacts and preserving the edge structure information of the object.

Highlights

  • As an extremely valuable diagnostic tool, computed tomography (CT) has been widely used in medical area

  • With the increase of the iteration numbers, the streak artifacts are effectively reduced by WTDM-soft-threshold filtering (STF) and TD minimization algorithm with soft-threshold filtering (TDM-STF)

  • To solve the problem in few-view CT image reconstruction, we present a novel iterative reconstruction algorithm based on weighted total difference minimization with soft-threshold filtering (WTDM-STF)

Read more

Summary

Introduction

As an extremely valuable diagnostic tool, computed tomography (CT) has been widely used in medical area. With this powerful tool, many valuable internal features can be extract without cutting the object [1,2]. It has great significance to use shorter time of radiation exposure and lower patient radiation dose to reconstruct numerically accurate tomographic images. Few-view CT has been an important CT imaging modality. In this scanning data situation, tomographic image is reconstructed from the projection data collected by sparse angular sampling [5,6,7,8,9]. We mainly focus the iterative reconstruction algorithm for few-view CT

Methods
Results
Conclusion
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call