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Predicting GPR Target Locations Using Time Delay Differences

机译:使用时延差异预测GPR目标位置

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We describe an efficient approach for finding probable target areas quickly with a minimal number of Ground Penetrating Radar (GPR) measurements. Since a potential GPR target creates a hyperbolic signature in the space-time domain, our approach uses the time delay differences from consecutive GPR A-Scan data to estimate the location of the apex of the hyperbolic signature, thus locating a target. This apex prediction method uses many fewer measurements than a full backprojection algorithm. Regions of low target probability are determined using a Neyman-Pearson detection approach in order to eliminate redundant measurements. In this regard, our approach is especially suitable as a pre-screener: other sensors that are more accurate, but require more measurement time, can then be applied only to high probability-of-target areas to corroborate results, differentiate between targets, or provide more accurate location measurements. Compared to a standard backprojection algorithm more signal-to-noise ratio (SNR) is needed to achieve similar detection performance. This SNR loss can be reduced by using a more conservative algorithm which reduces the step size of the GPR antenna. Results from experimental data collected at a model mine field at the Georgia Institute of Technology show that target positions can be found accurately using less than 10% of the measurements utilized by conventional imaging algorithms.
机译:我们描述了一种有效的方法,可通过最少的探地雷达(GPR)测量来快速找到可能的目标区域。由于潜在的GPR目标在时空域中创建了双曲线签名,因此我们的方法使用与连续GPR A-Scan数据的时延差异来估计双曲线签名的顶点位置,从而定位目标。这种顶点预测方法比完整的反投影算法使用更少的测量值。使用Neyman-Pearson检测方法确定目标概率较低的区域,以消除多余的测量值。在这方面,我们的方法特别适合用作预筛选器:其他更精确但需要更多测量时间的传感器只能用于高目标概率区域,以证实结果,区分目标或提供更准确的位置测量。与标准反投影算法相比,需要更多的信噪比(SNR)才能实现类似的检测性能。 SNR损失可以通过使用更保守的算法来减少,该算法可以减小GPR天线的步长。在佐治亚理工学院的模型矿场收集的实验数据的结果表明,使用常规成像算法所用测量值的不到10%即可准确找到目标位置。

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