结合支持向量机和H-Alpha分解的探地雷达地下目标分类

Haoqiu Zhou, Xuan Feng, Yan Zhang, E. Nilot, Minghe Zhang, Zejun Dong, Jiahui Qi
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引用次数: 7

摘要

探地雷达地下目标分类是地球物理领域的研究热点,其目的是根据目标的极化属性和几何特征等属性对不同类型的目标进行分类,现有的分类方法虽然可以对不同类型的目标进行分类,但效率和智能程度不够,特别是在处理大量数据时。支持向量机是一种机器学习方法,用于根据不同类型的样本的属性进行分类。将支持向量机(SVM)与H-Alpha分解相结合,用于探地雷达地下目标分类。我们使用H和$\alpha$作为支持向量机的参数进行目标分类。为了检验这两种方法结合的效果,我们对实验室测量的三种不同类型目标的极化数据进行处理,得到H和$\alpha$的数据,然后使用H和$\alpha$的数据对支持向量机进行测试,结果表明该方法是有效可行的,并且精度较高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combination of Support Vector Machine and H-Alpha Decomposition for Subsurface Target Classification of GPR
Subsurface target classification of GPR is a hot topic of geophysical field which is aimed to classify different kinds of targets based on their attributes, such as polarimetric attributes and geometrical features, although the existing methods can classify different targets, but they are not efficient and intelligent enough, especially in dealing with data of large amounts. Support Vector Machine is a method of Machine Learning which is used to classify different kinds of samples based on their attributes. We combine Support Vector Machine(SVM) with H-Alpha Decomposition for subsurface target classification of GPR. We use H and $\alpha$ as parameters of SVM for target classification. To test the effect of the combination of these two methods, we process the polarimetric data of three different kinds of targets measured in laboratory and obtain the data of H and $\alpha$, then we use the data of H and $\alpha$ to test the support vector machine and it turned out to be effective and feasible, and the accuracy is relatively high.
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