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Optimization-based image reconstruction in x-ray computed tomography by sparsity exploitation of local continuity and nonlocal spatial self-similarity

机译:通过稀疏利用局部连续性和非局部空间自相似性在X射线计算机断层摄影中基于优化的图像重建

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摘要

The additional sparse prior of images has been the subject of much research in problems of sparse-view computed tomography (CT) reconstruction. A method employing the image gradient sparsity is often used to reduce the sampling rate and is shown to remove the unwanted artifacts while preserve sharp edges, but may cause blocky or patchy artifacts. To eliminate this drawback, we propose a novel sparsity exploitation-based model for CT image reconstruction. In the presented model, the sparse representation and sparsity exploitation of both gradient and nonlocal gradient are investigated. The new model is shown to offer the potential for better results by introducing a similarity prior information of the image structure. Then, an effective alternating direction minimization algorithm is developed to optimize the objective function with a robust convergence result. Qualitative and quantitative evaluations have been carried out both on the simulation and real data in terms of accuracy and resolution properties. The results indicate that the proposed method can be applied for achieving better image-quality potential with the theoretically expected detailed feature preservation.
机译:图像的额外稀疏先验一直是稀疏视图计算机断层扫描(CT)重建问题中许多研究的主题。采用图像梯度稀疏性的方法通常用于降低采样率,并且显示出在保留锋利边缘的同时去除不想要的伪影的方法,但是可能会导致块状或斑驳的伪影。为了消除这一缺陷,我们提出了一种基于稀疏性的新型CT图像重建模型。在提出的模型中,研究了梯度和非局部梯度的稀疏表示和稀疏性开发。通过引入图像结构的相似先验信息,新模型显示出可能提供更好的结果。然后,开发了一种有效的交变方向最小化算法,以优化的目标函数并具有鲁棒的收敛结果。就准确度和分辨率属性而言,已经在模拟和真实数据上进行了定性和定量评估。结果表明,所提出的方法可以在理论上预期的详细特征保留的情况下用于实现更好的图像质量潜力。

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