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Numerical modelling and neural networks for landmine detection using ground penetrating radar

机译:探地雷达探测地雷的数值模型和神经网络

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摘要

A numerical modelling case study is presented aiming to investigate aspects of the applicability of artificial neural networks (ANN) to the problem of landmine detection using ground penetrating radar (GPR). An essential requirement of ANN and machine learning in general, is an extensive training set. A good training set should include data from as many scenarios as possible. Therefore, a training set consisting of simulated data from a diverse range of models with varying: topography, soil inhomogeneity, landmines, false alarm targets, height of the antenna, depth of the landmines, has been produced and used. Previous approaches, have employed limited training sets and as a result they often have underestimated the capabilities of ANN. In this preliminary study, a 2D Finite-Difference Time-Domain (FDTD) model has been used as the training platform for ANN. Although a 2D approach is clearly a simplification that cannot directly translate to a practical application, it is a computationally efficient approach to examine the performance of ANN subject to an extensive training set. The results are promising and provide a good basis to further expand this approach in the future by employing even more realistic, but computationally expensive, 3D models and well-characterised, real data sets.
机译:提出了一个数值建模案例研究,旨在研究人工神经网络(ANN)在探地雷达探测地雷问题上的适用性。一般而言,人工神经网络和机器学习的基本要求是广泛的培训。一个好的训练集应该包括尽可能多的场景中的数据。因此,已经产生并使用了由来自各种模型的模拟数据组成的训练集,这些模型具有不同的特征:地形,土壤不均匀性,地雷,虚假警报目标,天线高度,地雷深度。先前的方法采用的训练集有限,因此,它们常常低估了ANN的功能。在此初步研究中,二维有限时域(FDTD)模型已用作ANN的训练平台。尽管2D方法显然是无法直接转换为实际应用的简化方法,但它是一种计算有效的方法,可以在经过大量培训的情况下检查ANN的性能。结果是令人鼓舞的,并为通过将来使用更加现实但计算量大的3D模型和特征明确的真实数据集进一步扩展此方法提供了良好的基础。

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