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Model-based statistical sensor fusion for unexploded ordnance detection

机译:基于模型的统计传感器融合,用于未爆弹药检测

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Detection and remediation of unexploded ordnance (UXO) represents a major challenge on closed, closing, and transferred military ranges as well as on active installations. The detection problem is exacerbated by the fact that on sites contaminated with UXO, extensive surface and sub-surface clutter and shrapnel is also present. Traditional methods used for UXO remediation have difficulty distinguishing buried UXO from these anthropic clutter items as well as from naturally occurring magnetic geologic noise, and thus incur prohibitively high false alarm rates. The reduction of the false alarm rate has proven to be the greatest challenge for UXO remediation. In this paper, sensor fusion techniques are applied to field data from magnetometer and electromagnetic induction (EMI) sensors in order to determine to what degree such an approach results in false alarm mitigation. The adoption of a model consisting of multiple non colocated dipoles is shown to improve our ability to predict measured signatures. A Monte Carlo fitting procedure in which multiple initial conditions is utilized for the inversion process. The statistical uncertainty in the feature space is explicitly treated using a Bayesian processor to discriminate targets from clutter. Substantial reduction of the false alarm rate is achieved for a recently developed frequency-domain EMI system. Furthermore, we investigate the effects of the processing bandwidth on discrimination performance for the frequency-domain system. The results indicate that performance can be improved by limiting the processing bandwidth to those frequencies that are the most robust to naturally occurring geological noise.
机译:未爆炸的军械(UXO)的检测和修复代表了对封闭,关闭和转移的军队以及积极安装的主要挑战。通过以下情况,检测问题加剧了,在污染UXO,广泛的表面和副表面杂波和弹片的情况下也存在。用于UXO修复的传统方法难以将埋地的UXO与这些人类杂乱物品以及自然发生的磁性地质噪声不同,因此产生了非常高的误报率。误报率的减少已被证明是UXO修复的最大挑战。在本文中,传感器融合技术应用于来自磁力计和电磁感应(EMI)传感器的现场数据,以便确定这种方法在多大程度上导致错误警报缓解。采用由多个非共聚偶极子组成的模型,显示提高我们预测测量签名的能力。蒙特卡罗配件程序,其中使用多种初始条件进行反转过程。使用贝叶斯处理器明确地处理特征空间中的统计不确定性以区分杂乱的目标。对于最近开发的频域EMI系统,实现了虚假报警速率的大量减少。此外,我们研究了处理带宽对频域系统辨别性能的影响。结果表明,通过将处理带宽限制到对自然发生的地质噪声最强大的频率来改善性能。

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