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Localization and backscattering density estimation from GPR data with neural network

机译:利用神经网络从GPR数据进行定位和反向散射密度估计

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An adaptive linear neuron network is employed for reversing the location and back scattering density of objects from ground penetrating radar data. The processing avoids the disadvantage of unknown electromagnetic velocity in a medium for the specific rebar detecting application. Based on the common-offset reflection GPR survey model, the network was derived by reconstructing and compressing the reflected signal matrix. The location and scattering density of the targets under investigation are extracted by fitting the output of the network to the measured data. Finally, experiments with high-resolution configurations confirmed the reliability of the proposed method, and further developments are discussed.
机译:自适应线性神经元网络用于从穿透地面的雷达数据中反转物体的位置和反向散射密度。该处理避免了特定钢筋检测应用中介质中电磁速度未知的缺点。基于共偏移反射GPR测量模型,通过重构和压缩反射信号矩阵来推导网络。通过将网络的输出与测量数据拟合,可以提取被调查目标的位置和散射密度。最后,高分辨率配置的实验证实了该方法的可靠性,并讨论了进一步的发展。

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