南方医科大学学报 ›› 2015, Vol. 35 ›› Issue (03): 375-.

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基于边缘检测算子的Huber正则化阈值选择方法在低剂量CT重建中的应用

张善立,张华,胡德斌,曾栋,边兆英,路利军,马建华,黄静   

  • 出版日期:2015-03-20 发布日期:2015-03-20

Edge-detecting operator-based selection of Huber regularization threshold for low-dose
computed tomography imaging

  • Online:2015-03-20 Published:2015-03-20

摘要: 目的研究两种不同的Huber正则化阈值自适应选取方法及其在低剂量CT迭代重建中的应用。方法针对低剂量CT重
建采用基于Huber正则化的迭代重建技术,Huber正则化阈值的选取分别基于全局和局部边缘保持算子。结果仿真数据的实
验结果表明,两类Huber正则化阈值自适应选取方法均能较好地抑制重建图像中的噪声和伪影。结论两类Huber正则化阈值
自适应选择方法均可实现低剂量CT优质重建。

Abstract: Objective To compare two methods for threshold selection in Huber regularization for low-dose computed
tomography imaging. Methods Huber regularization-based iterative reconstruction (IR) approach was adopted for low-dose
CT image reconstruction and the threshold of Huber regularization was selected based on global versus local edge-detecting
operators. Results The experimental results on the simulation data demonstrated that both of the two threshold selection
methods in Huber regularization could yield remarkable gains in terms of noise suppression and artifact removal. Conclusion
Both of the two methods for threshold selection in Huber regularization can yield high-quality images in low-dose CT image
iterative reconstruction.