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A fast iterative reconstruction method based on the selective total variation for sparse angular CT

机译:基于选择性总变化的稀疏角CT快速迭代重建方法

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Sparse angular Computer Tomography (CT) is a rapidly developing imaging modality that reconstructs high-quality images from sparse data toward low-dose x-rays. The effectiveness of conventional total variation (TV) algorithm is limited by the over-smoothness on the edges and slow convergence. To mitigate this drawback, we proposed an improved fast iterative reconstruction method based on the minimization of selective image TV. The presented selective TV model is derived by linking the regularity metric to the local gradient of images, and selectively applies different degrees of regularization (the value of p) to background and potential signal locations for the purpose of preserving the edge details. In order to further speed up the convergence, we draws on a fast variant of The Iterative-Shrinkage-Thresholding Algorithm (ISTA), which uses a special linear combination of the two previous iterate results as the initial value of next iteration for more accurate correction. Experiments on simulated Shepp-Logan phantom are performed. The results demonstrated that the new method not only protected the edge of the image characteristics, but also significantly improved the convergence speed of the iterative reconstruction.
机译:稀疏角计算机断层扫描(CT)是一种快速发展的成像方式,可从稀疏数据向低剂量X射线重建高质量图像。传统的总变异(TV)算法的有效性受到边缘的过度平滑和收敛速度的限制。为了减轻这个缺点,我们提出了一种基于选择性图像电视最小化的改进的快速迭代重建方法。提出的选择性电视模型是通过将规律性度量与图像的局部梯度相关联而得出的,并有选择地将不同程度的正规化(p的值)应用于背景和潜在信号位置,以保留边缘细节。为了进一步加快收敛速度​​,我们使用了迭代收缩阈值算法(ISTA)的快速变体,该算法使用前两个迭代结果的特殊线性组合作为下一个迭代的初始值,以进行更准确的校正。进行了模拟的Shepp-Logan体模的实验。结果表明,该新方法不仅可以保护图像特征的边缘,而且可以显着提高迭代重建的收敛速度。

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