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A Fourier-based compressed sensing technique for accelerated CT image reconstruction using first-order methods

机译:基于傅立叶的压缩传感技术,用于使用一阶方法加速CT图像重建

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摘要

As a solution to iterative CT image reconstruction, first-order methods are prominent for the large-scale capability and the fast convergence rate . In practice, the CT system matrix with a large condition number may lead to slow convergence speed despite the theoretically promising upper bound. The aim of this study is to develop a Fourier-based scaling technique to enhance the convergence speed of first-order methods applied to CT image reconstruction. Instead of working in the projection domain, we transform the projection data and construct a data fidelity model in Fourier space. Inspired by the filtered backprojection formalism, the data are appropriately weighted in Fourier space. We formulate an optimization problem based on weighted least-squares in the Fourier space and total-variation (TV) regularization in image space for parallel-beam, fan-beam and cone-beam CT geometry. To achieve the maximum computational speed, the optimization problem is solved using a fast iterative shrinkage-thresholding algorithm with backtracking line search and GPU implementation of projection/backprojection. The performance of the proposed algorithm is demonstrated through a series of digital simulation and experimental phantom studies. The results are compared with the existing TV regularized techniques based on statistics-based weighted least-squares as well as basic algebraic reconstruction technique. The proposed Fourier-based compressed sensing (CS) method significantly improves both the image quality and the convergence rate compared to the existing CS techniques.
机译:作为迭代CT图像重建的解决方案,一阶方法因其大规模能力和快速收敛速度而著称。在实践中,尽管理论上有希望的上限,但条件数较大的CT系统矩阵可能会导致收敛速度变慢。这项研究的目的是开发一种基于傅立叶的缩放技术,以提高应用于CT图像重建的一阶方法的收敛速度。代替在投影域中工作,我们变换投影数据并在傅立叶空间中构建数据保真度模型。受到过滤后的反投影形式主义的启发,数据在傅立叶空间中得到了适当的加权。我们基于傅立叶空间中的加权最小二乘和平行光束,扇形光束和锥形光束CT几何的图像空间中的总变化(TV)正则化,制定了一个优化问题。为了获得最大的计算速度,使用快速迭代收缩阈值算法,回溯线搜索和GPU实现投影/反投影来解决优化问题。通过一系列数字仿真和实验模型研究证明了该算法的性能。将结果与现有的基于统计加权最小二乘的电视正则化技术以及基本的代数重构技术进行比较。与现有的CS技术相比,基于傅里叶的压缩感知(CS)方法可以显着提高图像质量和收敛速度。

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