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GPR Signal Characterization for Automated Landmine and UXO Detection Based on Machine Learning Techniques

机译:基于机器学习技术的自动地雷和UXO检测的GPR信号表征

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Landmine clearance is an ongoing problem that currently affects millions of people around the world. This study evaluates the effectiveness of ground penetrating radar (GPR) in demining and unexploded ordnance detection using 2.3-GHz and 1-GHz high-frequency antennas. An automated detection tool based on machine learning techniques is also presented with the aim of automatically detecting underground explosive artifacts. A GPR survey was conducted on a designed scenario that included the most commonly buried items in historic battle fields, such as mines, projectiles and mortar grenades. The buried targets were identified using both frequencies, although the higher vertical resolution provided by the 2.3-GHz antenna allowed for better recognition of the reflection patterns. The targets were also detected automatically using machine learning techniques. Neural networks and logistic regression algorithms were shown to be able to discriminate between potential targets and clutter. The neural network had the most success, with accuracies ranging from 89% to 92% for the 1-GHz and 2.3-GHz antennas, respectively.
机译:扫雷是一个持续存在的问题,目前影响着全球数百万人。这项研究评估了探地雷达(GPR)在使用2.3 GHz和1 GHz高频天线进行扫雷和未爆炸弹药检测中的有效性。还提出了一种基于机器学习技术的自动检测工具,旨在自动检测地下爆炸物。一项GPR调查是针对一种设计方案进行的,其中包括历史战场上最常见的埋葬物品,例如地雷,弹丸和迫击炮弹。尽管使用2.3 GHz天线提供了更高的垂直分辨率,但可以更好地识别反射图案,但可以使用两个频率来识别掩埋的目标。还使用机器学习技术自动检测了目标。神经网络和逻辑回归算法被证明能够区分潜在目标和混乱情况。神经网络获得了最大的成功,对于1 GHz和2.3 GHz天线,其准确度分别为89%至92%。

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