IEEE Trans Biomed Eng. 2019 Feb;66(2):509-520. doi: 10.1109/TBME.2018.2849648. Epub 2018 Jun 21.
This paper proposes a novel microwave imaging (MWI) multifrequency technique, which combines compressive sensing (CS) with the well-known distorted Born iterative method. CS strategies are emerging as a promising tool in MWI applications, which can improve reconstruction quality and/or reduce the number of data samples.
The proposed approach is based on iterative shrinkage thresholding algorithm (ISTA), which has been modified to include an automatic and adaptive selection of multithreshold values.
This adaptive multithreshold ISTA implementation is applied in reconstruction of two-dimensional (2-D) numerical heterogeneous breast phantoms, where it outperforms the standard thresholding implementation. We show that our approach is also successful in 3-D simulations of a realistic imaging experiment, despite the mismatch between the data and our algorithm's forward model.
These results suggest that the proposed algorithm is a promising tool for medical MWI applications.
Important novelties of this approach are the use of multiple thresholds to recover the different unknowns in the Debye model as well as the adaptive selection of these thresholds. Moreover, we have shown that employing modified hard constraints inside the linear step of the inversion procedure can enhance reconstruction quality.
本文提出了一种新颖的微波成像(MWI)多频率技术,将压缩感知(CS)与著名的扭曲 Born 迭代方法相结合。CS 策略作为 MWI 应用中的一种有前途的工具,可以提高重建质量和/或减少数据样本数量。
所提出的方法基于迭代收缩阈值算法(ISTA),该算法已被修改为包括多阈值的自动和自适应选择。
这种自适应多阈值 ISTA 实现应用于二维(2-D)数值异质乳房幻影的重建中,其性能优于标准阈值实现。我们表明,即使在数据与我们算法的正向模型之间存在不匹配的情况下,我们的方法在真实成像实验的 3-D 模拟中也取得了成功。
这些结果表明,所提出的算法是医学 MWI 应用的一种有前途的工具。
该方法的重要新颖之处在于使用多个阈值来恢复 Debye 模型中的不同未知量,以及自适应选择这些阈值。此外,我们已经表明,在反演过程的线性步骤中使用修改后的硬约束可以提高重建质量。