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A new value picking regularization strategy-application to the 3-D electromagnetic inverse scattering problem

机译:一种新的值拾取正则化策略 - 在三维电磁逆散射问题中的应用

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摘要

The nonlinear electromagnetic inverse scattering problem of reconstructing a possibly quasi-piecewise constant inhomogeneous complex permittivity profile is solved by iterative minimization of a pixel-based data fit cost function. Because of the ill-posedness it is necessary to introduce some form of regularization. Many authors apply a smoothing constraint on the reconstructed permittivity profile, but such regularization smooths away sharp edges. In this paper, a simple yet effective regularization strategy, the value picking (VP) regularization, is proposed. This new technique is capable of reconstructing piecewise constant permittivity profiles without degrading the edges. It is based on the knowledge that only a few different permittivity values occur in such profiles, the values of which need not be known in advance. VP regularization does not impose this a priori information in a strict sense, such that it can be applied also to profiles that are only approximately piecewise constant. The VP regularization is introduced in the solution of the inverse problem by adding a choice function to the data fit cost function for every permittivity unknown in the discretized problem. When minimized, the choice function forces the corresponding permittivity unknown to be close to one member of a set of auxiliary variables, the VP values, which are continuously updated throughout the iterations. To minimize the regularized cost function, a half quadratic Gauss-Newton optimization technique is presented. Finally, a stepwise relaxed VP regularization scheme is proposed, in which the number of VP values is gradually increased. This scheme is tested with synthetic and measured scattering data, obtained from inhomogeneous 3-D targets, and is shown to achieve high reconstruction quality.
机译:通过迭代最小化基于像素的数据拟合成本函数,解决了重建可能的准分段恒定不均匀复介电常数分布的非线性电磁逆散射问题。由于不适,有必要引入某种形式的正则化。许多作者在重建的介电常数轮廓上应用了平滑约束,但是这种正则化平滑了锐利的边缘。在本文中,提出了一种简单而有效的正则化策略,即值选取(VP)正则化。这项新技术能够重建分段恒定介电常数曲线而不会降低边缘。基于这样的认识,在这样的曲线中仅出现几个不同的介电常数值,而不必事先知道其值。 VP正则化并不严格意义上强加此先验信息,因此它也可以应用于仅近似分段恒定的轮廓。通过为离散问题中未知的每个介电常数将选择函数添加到数据拟合成本函数中,在反问题的解决方案中引入了VP正则化。当最小化时,选择函数会迫使相应的电容率未知数接近一组辅助变量VP值中的一个,该变量在整个迭代过程中会不断更新。为了最小化正则成本函数,提出了一种半二次高斯-牛顿优化技术。最后,提出了一种逐步放松的VP正则化方案,其中VP值的数量逐渐增加。该方案通过从非均匀3D目标获得的合成和测量的散射数据进行了测试,并显示出较高的重建质量。

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