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Model-Based Statistical Signal Processing For UXO Discrimination: Performance Results From The JPG-V Demonstration

机译:UXO识别的基于模型的统计信号处理:JPG-V演示的性能结果

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Detection and remediation of unexploded ordnance (UXO) represents a major challenge. 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. In this research, model-based statistical signal processing 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. Features of the target signatures are extracted by inverting the measured sensor data associated with an anomaly using the associated physical, or forward, model. The statistical uncertainty in the feature space is explicitly treated using statistical processors, including generalized likelihood ratio tests and support vector machines, to discriminate targets from clutter. This approach has been evaluated on data collected in a recent field trial that was performed at JPG. Results are presented for one area in which ground truth was known, and for two others in which the ground truth was not known. Substantial reduction of the false alarm rate is achieved for two different platforms, the GEM-3 and the MTADS system. For example, using data from the GEM-3 in one area, the number of false targets was reduced from 181 to 20 with 100% detection of all UXO objects.
机译:未爆炸弹药(UXO)的检测和修复是一项重大挑战。由于在未爆弹药污染的地点上还存在大量的表面和亚表面的杂物和弹片,从而使检测问题更加严重。用于UXO修复的传统方法很难将掩埋的UXO与这些人为杂物以及自然发生的磁性地质噪声区分开来,因此会产生令人难以置信的高误报率。在这项研究中,基于模型的统计信号处理技术被应用于来自磁力计和电磁感应(EMI)传感器的现场数据,以确定这种方法在多大程度上导致了误报缓解。通过使用关联的物理或正向模型反转与异常关联的已测量传感器数据,可以提取目标签名的特征。使用统计处理器(包括广义似然比检验和支持向量机)明确处理特征空间中的统计不确定性,以将目标与混乱区分开。已经根据最近在JPG上进行的现场试验收集的数据对这种方法进行了评估。给出了一个领域的事实,其中已知基础事实,以及另外两个领域的结果,其中未知领域。对于GEM-3和MTADS系统这两个不同的平台,可以大大降低误报率。例如,在一个区域中使用GEM-3中的数据,通过对所有UXO对象进行100%检测,错误目标的数量从181个减少到20个。

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