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Efficient Multitask Structure-Aware Sparse Bayesian Learning for Frequency-Difference Electrical Impedance Tomography

机译:高效的多任务结构感知稀疏贝叶斯学习频率差分电阻断层扫描

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摘要

Frequency-difference electrical impedance tomography (fdEIT) was originally developed to mitigate the systematic artifacts induced by modeling errors when a baseline dataset is unavailable. Instead of fine anatomical imaging, only coarse anomaly detection has been addressed in current fdEIT research mainly due to its low spatial resolution. On the other hand, there has been not enough study on fdEIT reconstruction algorithm as well. In this article, we propose an efficient and high-spatial-resolution algorithm for simultaneously reconstructing multiple fdEIT frames corresponding to inject currents with multiple frequencies. The electrical impedance tomography reconstruction problem is considered within a hierarchical Bayesian framework, where both intratask spatial clustering and intertask dependency are automatically learned and exploited in an unsupervised manner. The computation is accelerated by adopting a modified marginal likelihood maximization approach. Real-data experiments are conducted to verify the recovery performance of the proposed algorithm.
机译:频率差异电阻断层扫描(FDEIE)最初是开发的,以减轻通过在基线数据集不可用时建模错误引起的系统伪影。代替细微的解剖成像,仅在当前的FDEIT研究中才能解决粗大的异常检测,主要是由于其空间分辨率低。另一方面,对FDEIT重建算法并没有足够的研究。在本文中,我们提出了一种用于同时重建对应于具有多个频率的注入电流的多个FDEIET帧的高空间分辨率算法。在分层贝叶斯框架内考虑电阻抗断层扫描重建问题,其中introusast空间聚类和intertask依赖关系都以无监督的方式自动学习和利用。通过采用修改的边际似然最大化方法,计算被加速。进行真实数据实验以验证所提出的算法的恢复性能。

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