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Non-convex compressed sensing CT reconstruction based on tensor discrete Fourier slice theorem

机译:张量离散傅里叶切片定理的非凸压缩感知CT重建

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X-ray computed tomography (CT) scanners provide clinical value through high resolution and fast imaging. However, achievement of higher signal-to-noise ratios generally requires emission of more X-rays, resulting in greater dose delivered to the body of the patient. This is of concern, as higher dose leads to greater risk of cancer, particularly for those exposed at a younger age. Therefore, it is desirable to achieve comparable scan quality while limiting X-ray dose. One means to achieve this compound goal is the use of compressed sensing (CS). A novel framework is presented to combine CS theory with X-ray CT. According to the tensor discrete Fourier slice theorem, the 1-D DFT of discrete Radon transform data is exactly mapped on a Cartesian 2-D DFT grid. The nonuniform random density sampling of Fourier coefficients is made feasible by uniformly sampling projection angles at random. Application of the non-convex CS model further reduces the sufficient number of measurements by enhancing sparsity. The numerical results show that, with limited projection data, the non-convex CS model significantly improves reconstruction performance over the convex model.
机译:X射线计算机断层扫描(CT)扫描仪可通过高分辨率和快速成像来提供临床价值。然而,实现更高的信噪比通常需要发射更多的X射线,从而导致更多的剂量被输送到患者体内。这是令人担忧的,因为更高的剂量会导致更大的癌症风险,特别是对于那些年龄较小的人。因此,期望在限制X射线剂量的同时获得可比的扫描质量。实现此复合目标的一种方法是使用压缩感知(CS)。提出了将CS理论与X射线CT相结合的新颖框架。根据张量离散傅立叶切片定理,离散Radon变换数据的一维DFT精确映射到笛卡尔二维DFT网格上。通过随机地均匀采样投影角,使傅里叶系数的非均匀随机密度采样成为可能。非凸CS模型的应用通过增强稀疏性进一步减少了足够的测量次数。数值结果表明,在有限的投影数据的情况下,非凸面CS模型相对于凸面模型显着提高了重建性能。

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