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首页> 外文期刊>IEEE transactions on industrial informatics >Accelerated Structure-Aware Sparse Bayesian Learning for Three-Dimensional Electrical Impedance Tomography
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Accelerated Structure-Aware Sparse Bayesian Learning for Three-Dimensional Electrical Impedance Tomography

机译:三维电阻抗层析成像的加速结构感知稀疏贝叶斯学习

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摘要

In this paper, we consider the reconstruction of three-dimensional (3-D) conductivity distribution using electrical impedance tomography (EIT) technique. A high-resolution and efficient algorithm is developed to solve the EIT inverse problem. The presented algorithm is extended upon a recently proposed novel EIT reconstruction approach based on structure-aware sparse Bayesian learning (SA-SBL). The correlation between proximal layers in the 3-D geometry are incorporated into the structure prior to improve the reconstruction accuracy. In addition, an efficient approach based on approximate message passing is developed to accelerate the large-scale 3-D learning process. To validate the algorithm, numerical experiments using real recorded data are conducted. The visual and quantitative-metric comparisons show that the proposed method outperforms the existing methods in terms of reconstruction accuracy and computational complexity in all test cases. The SA-SBL-based reconstruction approach can preserve the 3-D structure of medical volume, reduce the systematic artifacts, and improve the computational efficiency.
机译:在本文中,我们考虑使用电阻抗层析成像(EIT)技术重建三维(3-D)电导率分布。开发了一种高分辨率,高效的算法来解决EIT反问题。提出的算法是在最近提出的基于结构感知的稀疏贝叶斯学习(SA-SBL)的新型EIT重建方法的基础上扩展的。在提高重建精度之前,将3-D几何中的近端层之间的相关性并入结构中。此外,开发了一种基于近似消息传递的有效方法来加速大规模3D学习过程。为了验证该算法,使用实际记录的数据进行了数值实验。视觉和定量指标的比较表明,在所有测试案例中,该方法在重构精度和计算复杂度方面均优于现有方法。基于SA-SBL的重建方法可以保留医疗量的3-D结构,减少系统伪像,并提高计算效率。

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