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Smoothed l_0 Norm Regularization for Sparse-View X-Ray CT Reconstruction

机译:稀疏视图X射线CT重建平滑L_0规范正则化

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摘要

Low-dose computed tomography (CT) reconstruction is a challenging problem in medical imaging. To complement the standard filtered back-projection (FBP) reconstruction, sparse regularization reconstruction gains more and more research attention, as it promises to reduce radiation dose, suppress artifacts, and improve noise properties. In this work, we present an iterative reconstruction approach using improved smoothed l_0 (SLO) norm regularization which is used to approximate l_0 norm by a family of continuous functions to fully exploit the sparseness of the image gradient. Due to the excellent sparse representation of the reconstruction signal, the desired tissue details are preserved in the resulting images. To evaluate the performance of the proposed SLO regularization method, we reconstruct the simulated dataset acquired from the Shepp-Logan phantom and clinical head slice image. Additional experimental verification is also performed with two real datasets from scanned animal experiment. Compared to the referenced FBP reconstruction and the total variation (TV) regularization reconstruction, the results clearly reveal that the presented method has characteristic strengths. In particular, it improves reconstruction quality via reducing noise while preserving anatomical features.
机译:低剂量计算断层扫描(CT)重建是医学成像的具有挑战性问题。为了补充标准的滤波后投影(FBP)重建,稀疏的正则化重建越来越多的研究注意力,因为它有望减少辐射剂量,抑制伪影和改善噪声性能。在这项工作中,我们使用改进的平滑L_0(SLO)规范正则化的迭代重建方法,该方法用于通过连续函数的系列近似L_0范数来充分利用图像梯度的稀疏性。由于重建信号的优异稀疏表示,所需的组织细节被保留在所得到的图像中。为了评估所提出的SLO正规化方法的性能,我们重建了从SHEPP-Logan Phantom和临床头切片图像获取的模拟数据集。还使用来自扫描动物实验的两个真实数据集进行了额外的实验验证。与参考的FBP重建和总变化(电视)正则化重建相比,结果清楚地表明所提出的方法具有特征强度。特别是,它通过降低噪音来提高重建质量,同时保持解剖学特征。

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