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Enhanced Buried UXO Detection via GPR/EMI Data Fusion

机译:通过GPR / EMI数据融合增强了嵌入式UXO检测

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摘要

This paper investigates the enhancements to detection of buried unexploded ordinances achieved by combining ground penetrating radar (GPR) data with electromagnetic induction (EMI) data. Novel features from both the GPR and the EMI sensors are concatenated as a long feature vector, on which a non-parametric classifier is then trained. The classifier is a boosting classifier based on tree classifiers, which allows for disparate feature values. The fusion algorithm was applied to a government-provided dataset from an outdoor testing site, and significant performance enhancements were obtained relative to classifiers trained solely on the GPR or EMI data. It is shown that the performance enhancements come from a combination of improvements in detection and in clutter rejection.
机译:本文研究了通过结合探地雷达(GPR)数据和电磁感应(EMI)数据来实现对未爆炸掩埋法令的探测的增强。来自GPR和EMI传感器的新颖特征被串联为一个长特征向量,然后在其上训练非参数分类器。分类器是基于树分类器的增强分类器,它允许不同的特征值。将该融合算法应用于来自室外测试站点的政府提供的数据集,相对于仅基于GPR或EMI数据训练的分类器,其性能得到了显着提高。结果表明,性能的增强来自检测和杂波抑制方面的改进。

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