用三步法求解探地雷达全非线性逆问题

L. V. van Kempen, N. T. Thành, H. Sahli, D. Hào
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引用次数: 2

摘要

为了从探地雷达测量数据中提取准确的定量信息,需要解决非线性逆问题。本文将这类问题表述为非凸的非线性最小二乘问题。求解非凸优化问题需要对最优解有良好的初始估计。因此,我们采用三步法来解决上述非凸问题。首先对线性化问题的定性解进行估计,以获得对地下散射体的检测和支持。为此,首先提出了合成孔径雷达(SAR)。第二步是对线性化问题进行定性求解,得到被测物体材料参数值的初步猜测。为此提出的方法是代数重构技术(algeaic Reconstruction Technique, ART),这是一种迭代方法,从第一步给出的初始值开始,不断改进,直到达到最优。最后一步是用变分法求解非线性逆问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Solving the full nonlinear inverse problem for GPR using a three step method
In order to extract accurate quantitative information out of Ground Penetrating Radar (GPR) measurement data, one needs to solve a nonlinear inverse problem. In this paper we formulate such problem as a nonlinear least squares problem which is non convex. Solving a non-convex optimization problem requires a good initial estimation of the optimal solution. Therefore we use a three step method to solve the above non-convex problem. In a first step the qualitative solution of the linearized problem is estimated to obtain the detection and support of the subsurface scatterers. For this first step Synthetic Aperture Radar (SAR) is proposed. The second step consists out of a qualitative solution of the linearized problem to obtain a first guess for the material parameter values of the detected objects. The method proposed for this is Algebraic Reconstruction Technique (ART), which is an iterative method, starting from the initial value, given by the first step, and improving on this until an optimum is achieved. The final step then consists out of the solution of the nonlinear inverse problem using a variational method.
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