Prediction of Size of Buried Objects using Ground Penetrating Radar and Machine Learning Techniques

Nairit Barkataki, Sharmistha Mazumdar, Rajdeep Talukdar, Priyanka Chakraborty, B. Tiru, Utpal Sarma
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引用次数: 2

Abstract

Ground penetrating radar (GPR) uses electromagnetic (EM) wave to detect the subsurface objects. Interpretation and analysis of GPR signals are still challenging tasks as it requires skilled user (geologists in most cases). Particularly difficult is the prediction of the object sizes. This paper proposes a new method for predicting size of buried objects. First, standard scaling pre-processing techniques are used to optimise the B-Scan data. The features are then supplied to Random Forest (RF) and Support Vector Machine (SVM) classifiers to automatically predict the size of the buried object. The proposed feature based RF classifier shows similar performance in the accuracy of classification compared to SVM (Radial Basis Function kernel) system.
利用探地雷达和机器学习技术预测埋藏物体的大小
探地雷达(GPR)是一种利用电磁波探测地下物体的雷达。GPR信号的解释和分析仍然是一项具有挑战性的任务,因为它需要熟练的用户(大多数情况下是地质学家)。特别困难的是物体大小的预测。本文提出了一种预测埋藏物尺寸的新方法。首先,采用标准缩放预处理技术对b扫描数据进行优化。然后将这些特征提供给随机森林(RF)和支持向量机(SVM)分类器,以自动预测被埋物体的大小。所提出的基于特征的射频分类器在分类精度上与SVM (Radial Basis Function kernel,径向基函数核)系统相当。
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