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Fast Analysis of C-Scans From Ground Penetrating Radar via 3-D Haar-Like Features With Application to Landmine Detection

机译:通过3-D Haar-Like特征快速分析穿透雷达的C扫描及其在地雷检测中的应用

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摘要

This paper aimed to devise an efficient algorithm applicable to ground penetrating radar (GPR) and to enable an automatic landmine detection. Proposed is a machine learning approach in which we put the main emphasis on fast performance of the scanning procedure analyzing the C-scans, i.e., 3-D images defined over the coordinate system, i.e., , where the time axis can be associated with depth. The approach is based on our proposition of 3-D Haar-like features. Learning of the detector is carried out by boosted decision trees. Practical experiments on metal and plastic antitank mines in a garden soil are carried out. A prototype mobile platform is designed to scan the subsurface of the ground, equipped with a GPR based on a standard vector network analyzer and our original antenna system. We report the results, particularly the following: detection sensitivity, false alarm rates, receiver operating characteristic curves, and times of learning and detection.
机译:本文旨在设计一种适用于探地雷达(GPR)的有效算法,并实现自动地雷检测。提出了一种机器学习方法,其中,我们主要强调扫描过程的快速性能,以分析C扫描,即在坐标系统上定义的3-D图像,即时间轴可以与深度相关联。该方法基于我们对3-D Haar样特征的主张。通过增强的决策树进行检测器的学习。在花园土壤中的金属和塑料反坦克地雷上进行了实际试验。设计了一个原型移动平台,用于扫描地下表面,该平台配备了基于标准矢量网络分析仪的GPR和我们原始的天线系统。我们报告结果,特别是以下内容:检测灵敏度,误报率,接收器工作特性曲线以及学习和检测时间。

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