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Classifying dielectric mine-like objects using the Huynen-Fork polarization parameters

机译:使用Huynen-Fork偏振参数分类介电矿矿矿矿矿矿物物体

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We present a polarimetric approach that can be used to characterize subsurface targets by means of ground-penetrating radar. Several quantities related to the Huynen-Fork parameters are basic to the study. These quantities are all expressible in terms of the elements of Sinclair matrix S, which in turn, can be determined as functions of frequency by an application of the method-of-moment (MoM). The method is applied to a mine-like object buried at various depths in a soil of specified dielectric and moisture properties. The quantities in question are the Stokes parameters, the elevation, azimuth, and polarizability angles, as well as the polarization ratios and the scattering eigenvalues which optimize the backscattered power. Some of these quantities are studied here and displayed in various graphs. These frequency dependent graphs exhibit useful symmetry properties. The plots of the polarizability angle (/spl beta/) vs. frequency seem to remain invariant with target depth, and exhibit resonance features that are later shown to agree well with other standard methods to estimate resonances such as Prony method. A simple analysis of the early-time resonances thus estimated is used to obtain acceptable mine dimensions. The agreement found implies that polarimetric techniques, such as present one, can also be used in the arsenal of techniques yielding target-ID clues.
机译:我们介绍了一种极化方法,可用于通过地面穿透雷达表征地下目标。与Huynen-Fork参数相关的数量是基本的研究。这些数量在Sinclair矩阵S的元素方面都是表示的,这反过来又可以通过应用程序方法(MOM)的应用来确定为频率的函数。该方法应用于以特定电介质和水分性质的土壤中的各种深度掩埋的矿物物体。所讨论的数量是STOKES参数,仰角,方位角和极化角度,以及优化反向散射电力的偏振比和散射特征值。这里研究了这些数量中的一些并以各种图表显示。这些频率依赖性图表表现出有用的对称性。极化角度(/ SPLβ/)与频率的曲线似乎保持不变的目标深度,并且稍后表现出与其他标准方法相同的共振特征,以估计珩柱方法的共振。如此估计的早期共振的简单分析用于获得可接受的矿尺寸。该协议暗示意味着诸如本发明的偏振技术也可以用于产生目标ID线索的技术的库中。

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