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Compressed sensing based cone-beam computed tomography reconstruction with a first-order method

机译:基于压缩感测的锥束计算机层析成像的一阶重建

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摘要

>Purpose: This article considers the problem of reconstructing cone-beam computed tomography (CBCT) images from a set of undersampled and potentially noisy projection measurements.>Methods: The authors cast the reconstruction as a compressed sensing problem based on ℓ1 norm minimization constrained by statistically weighted least-squares of CBCT projection data. For accurate modeling, the noise characteristics of the CBCT projection data are used to determine the relative importance of each projection measurement. To solve the compressed sensing problem, the authors employ a method minimizing total-variation norm, satisfying a prespecified level of measurement consistency using a first-order method developed by Nesterov.>Results: The method converges fast to the optimal solution without excessive memory requirement, thanks to the method of iterative forward and back-projections. The performance of the proposed algorithm is demonstrated through a series of digital and experimental phantom studies. It is found a that high quality CBCT image can be reconstructed from undersampled and potentially noisy projection data by using the proposed method. Both sparse sampling and decreasing x-ray tube current (i.e., noisy projection data) lead to the reduction of radiation dose in CBCT imaging.>Conclusions: It is demonstrated that compressed sensing outperforms the traditional algorithm when dealing with sparse, and potentially noisy, CBCT projection views.
机译:>目的:本文考虑了从一组欠采样和可能有噪声的投影测量中重建锥束计算机断层扫描(CBCT)图像的问题。>方法:作为基于ℓ1范数最小化的压缩感知问题,受CBCT投影数据的统计加权最小二乘约束。为了进行精确的建模,CBCT投影数据的噪声特征用于确定每个投影测量的相对重要性。为了解决压缩感测问题,作者采用了一种由Nesterov开发的一阶方法,将总方差范数最小化,从而满足预定的测量一致性水平。>结果:该方法可以快速收敛到由于采用了迭代的正向和反向投影方法,因此无需过多的内存需求即可获得最佳解决方案。通过一系列数字和实验模型研究证明了该算法的性能。发现使用所提出的方法可以从欠采样和可能有噪声的投影数据中重建高质量的CBCT图像。稀疏采样和X射线管电流(即嘈杂的投影数据)的减少都会导致CBCT成像中辐射剂量的减少。>结论:在压缩处理中,压缩感知优于传统算法CBCT投影视图稀疏且可能有噪声。

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