微波成像中改进目标检测的两阶段高斯-牛顿重建技术

P. Meaney, N. K. Yagnamurthy, Dun Li, E. Demidenko, K. Paulsen
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引用次数: 5

摘要

我们开发了一种两阶段高斯-牛顿迭代重建技术,以提高微波层析成像系统的总体图像质量。它已被应用于模拟,幻影和体内乳房成像实验,与我们原始的Levenberg-Marquardt方法相比,在恢复属性分布方面具有可量化的改进。后一种方法在每次迭代结束时结合空间滤波作为稳定重建过程的手段。然而,稳定导致成像区域内的精细结构模糊,特别是在小的高对比度物体的情况下。新技术利用原始方法作为两步策略的第一阶段,允许算法在理想解的邻域内识别分布,而不会收敛到不需要的局部最小值。这个中间结果随后被用作第二阶段过程的初始估计——一个基于tikhonov的重构,带有加权欧几里得距离惩罚项,以约束最终结果在中间解的附近,同时允许电场最小化的充分影响,而不会对第一步的空间平滑产生有害影响。虽然这种方法在微波检查中增强了乳房内部特征的恢复,但它也提高了我们恢复小的、高对比度物体的能力。本文说明了在实验室环境中小物体回收的可量化改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A 2-stage Gauss-Newton reconstruction technique for improved object detection in microwave imaging
We have developed a 2-stage Gauss-Newton iterative reconstruction technique to improve the general image quality with our microwave tomographic imaging system. It has been applied to simulation, phantom and in vivo breast imaging experiments with quantifiable improvement in the recovered property distributions over those achieved with our original, Levenberg-Marquardt approach. The latter method incorporates spatial filtering at the end of each iteration as a means of stabilizing the reconstruction process. However, the stabilization resulted in blurring of fine structures within the imaging region, particularly in the case of small high contrast objects. The new technique utilizes the original approach as the first stage in a 2-step strategy, allowing the algorithm to identify a distribution in the neighborhood of the ideal solution without converging to an unwanted local minimum. This intermediate result is subsequently employed as an initial estimate for the second stage process-a Tikhonov-based reconstruction with a weighted Euclidean distance penalty term to constrain the final result to be within the vicinity of the intermediate solution while allowing full impact of the electric field minimization without the detrimental effects of the spatial smoothing of the first step. While this approach has enhanced the recovery of features internal to the breast during microwave examinations, it has also improved our capability to recover small, high-contrast objects. This paper illustrates quantifiable improvements in the recovery of small objects in a laboratory setting.
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