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UXO target detection using magnetometry and EM survey data

机译:UXO目标检测使用磁体和EM调查数据

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Digital filtering, principal component analysis (PCA), and an automated anomaly picker have been used to improve and automate target selection of unexploded ordnance (UXO). This is the first step in a three part program to develop new data analysis methods to automate target selection and improve discrimination of UXO from clutter and ordnance explosive waste (OEW) using magnetometry (Mag) and electromagnetic induction (EM) survey data. Traditionally, target detection has been accomplished by a time-consuming manual interactive data analysis approach. Experts screen the magnetometer data and select potential UXO targets based on their intuitive experience. EM data has been used in a secondary role in this process and the anomaly picking included classification and operator bias. In this program, the target detection step will use all of the data available and a separate classifier process will be used for identification and discrimination. Digital filtering is being used to enhance important features and reduce noise, while principal component analysis is being used to fuse three channels of data and reduce noise. Seven 50 meter-square data sets from two test sites were used to investigate these techniques. Features of interest are enhanced using filtering techniques. Inspection of the first- principal component suggests that data fusion of the magnetometer and EM data can be successfully accomplished. The new image consisting of circular features of varying diameters and intensities represent significant features present in all three data channels. Data with strong magnetometer and EM signals have the greatest intensity and in most cases noise is reduced. An automated anomaly picker has been designed to select targets from Mag, EM and PCA images. The method is fast and efficient as well as providing user options to control pick criteria.
机译:数字滤波,主成分分析(PCA)和自动异常选择器已被用于改进和自动化未爆炸的爆发(UXO)的目标。这是三部分计划的第一步,开发新的数据分析方法,以自动化目标选择,并使用磁体(MAG)和电磁感应(EM)测量数据从杂波和爆炸物废物(OEW)中改善UXO的辨别。传统上,目标检测已经通过耗时的手动交互数据分析方法完成。专家屏幕屏蔽磁力计数据并根据其直观体验选择潜在的UXO目标。在此过程中,EM数据已被用于次要角色,并包括分类和运营商偏置的异常选择。在该程序中,目标检测步骤将使用可用的所有数据,并且单独的分类器进程将用于识别和辨别。正在使用数字滤波来增强重要特征并降低噪声,而主要成分分析用于熔断三个数据通道并降低噪声。使用来自两个测试站点的七个50米方形的数据集来研究这些技术。使用过滤技术增强了感兴趣的功能。检查第一主成分的检查表明,可以成功完成磁力计和EM数据的数据融合。由不同直径和强度的圆形特征组成的新图像代表了所有三个数据通道中存在的重要特征。具有强磁力计和EM信号的数据具有最大的强度,并且在大多数情况下噪声减小。自动异常选择器旨在选择来自Mag,EM和PCA图像的目标。该方法快速有效,提供用户选项来控制选择标准。

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