首页> 外文期刊>Inverse Problems: An International Journal of Inverse Problems, Inverse Methods and Computerised Inversion of Data >tree-dimensional quantitative microwave imaging )m measured data with multiplicative smoothing d value picking regularization
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tree-dimensional quantitative microwave imaging )m measured data with multiplicative smoothing d value picking regularization

机译:树状定量微波成像(m)乘以平滑d值选取正则化的测量数据

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This paper presents reconstructions of four targets from the 3D Fresnel database. The electromagnetic inverse scattering problem is treated as a nonlinear optimization problem for the complex permittivity in an investigation domain. The goal of this paper is to explore the achievable reconstruction quality when such a quantitative inverse scattering approach is employed on real world measurements, using only single-frequency data. Two regularization techniques to reduce the ill-possedness of the inverse scattering problem are compared. The first one is a multiplicative smoothing regularization, applied directly to the cost function, which yields smoothed reconstructions of the homogeneous Fresnel targets without much experimentation to determine the regularization parameter. The second technique is the recently proposed value picking (VP) regularization which is particularly suited for the class of piecewise (quasi-)homogeneous targets, such as those of the Fresnel database. In contrast to edge-preserving regularization methods, VP regularization does not operate on the spatial distribution of permittivity values, but it clusters them around some reference values, the VP values, in the complex plane. These VP values are included in the cost function as auxiliary optimization variables and their number can be gradually increased using a stepwise relaxed VP regularization scheme. Both regularization strategies are incorporated in a Gauss–Newton minimization framework with line search. It is shown that the reconstruction quality using single-frequency Fresnel data is good when using multiplicative smoothing and even better when using the VP regularization. In particular, the completely blind reconstruction of the mystery target in the database provides us with a detailed quantitative image of a plausible object.reconstructions contain more quantitative information about the shape of the targets and their permittivity. This paper proves that the proposed method is applicable to experimental data in a free space environment and that it yields high quality reconstructions. The ultimate test for any inverse scattering method is a completely blind reconstruction from measurement data. We suspect that our algorithm will pass this test for the mystery target of the 3D Fresnel database, since we were able to give a very detailed description of what the target might be.
机译:本文介绍了从3D菲涅耳数据库重建四个目标的过程。对于研究领域中的复介电常数,电磁逆散射问题被视为非线性优化问题。本文的目的是在仅使用单频数据的情况下,在实际测量中采用这种定量逆散射方法时,探索可实现的重建质量。比较了两种减少逆散射问题的正则化技术。第一个是直接应用于成本函数的乘法平滑正则化,无需进行大量实验来确定正则化参数即可产生均质菲涅耳目标的平滑重构。第二种技术是最近提出的值选取(VP)正则化,它特别适合分段(准)均匀目标的类型,例如菲涅耳数据库的目标。与保留边缘的正则化方法相比,VP正则化不对电容率值的空间分布进行运算,而是将它们围绕复杂平面中的某些参考值VP值进行聚类。这些VP值作为辅助优化变量包含在成本函数中,可以使用逐步放松的VP正则化方案逐渐增加其数量。两种正则化策略都通过行搜索合并到高斯-牛顿最小化框架中。结果表明,在使用乘法平滑时,使用单频菲涅耳数据的重建质量较好,而在使用VP正则化时,重建质量更好。特别是,数据库中神秘目标的完全盲目重建为我们提供了一个合理的目标的详细定量图像。重建包含有关目标形状及其介电常数的更多定量信息。本文证明了该方法适用于自由空间环境中的实验数据,并且可以产生高质量的重建结果。任何反向散射方法的最终测试都是根据测量数据完全盲目重建。我们怀疑我们的算法能否通过3D菲涅耳数据库神秘目标的测试,因为我们能够对目标可能是一个非常详细的描述。

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