Assessment of statistical-based clutter reduction techniques on ground-coupled GPR data for the detection of buried objects in soils

Elias Tebchrany, F. Sagnard, V. Baltazart, J. Tarel, Xavier Dérobert
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引用次数: 16

Abstract

A bi-static Ground Penetrating Radar (GPR) has been developed for the detection of cracks and buried pipes in urban grounds. It is made of two shielded Ultra Wide Band (UWB) bowtie-slot antennas operating in the frequency band [0.3;4] GHz. GPR signals contain not only responses of targets, but also unwanted effects from antenna coupling in air and in the soil, system ringing, and soil reflections that can mask the proper detection of useful information. Thus, it appears necessary to propose and assess several clutter reduction techniques as pre-processing techniques to improve the signal-to-noise ratio, discriminate overlapping responses issued from the targets and the clutter, and ease the use of data processing algorithms for target detection, identification or reconstruction. In this work, we have evaluated on Bscan profiles three different statistical data analysis such as mean subtraction, Principal Component Analysis (PCA), and Independent Component Analysis (ICA) considering a shallow and a medium depth target. The receiver operating characteristics (ROC) graph has allowed to evaluate the performance of each data processing in simulations and measurements to further draw a comparison in order to select the technique most adapted to a given soil structure with its radar probing system.
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基于统计的地耦合探地雷达数据杂波抑制技术在土壤中埋地目标探测中的评估
研制了一种用于城市地面裂缝和埋管探测的双源探地雷达。它由两个在[0.3;4]GHz频段工作的屏蔽超宽带(UWB)领结槽天线组成。GPR信号不仅包含目标的响应,还包含来自天线在空气和土壤中的耦合、系统振铃和土壤反射的有害影响,这些影响会掩盖对有用信息的正确检测。因此,有必要提出和评估几种杂波减少技术作为预处理技术,以提高信噪比,区分目标和杂波发出的重叠响应,并简化数据处理算法在目标检测、识别或重建中的使用。在这项工作中,我们对Bscan剖面进行了三种不同的统计数据分析,如平均减法、主成分分析(PCA)和独立成分分析(ICA),考虑了浅层和中深度目标。接收机工作特性(ROC)图允许评估模拟和测量中每个数据处理的性能,以进一步进行比较,以便选择最适合给定土壤结构及其雷达探测系统的技术。
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