基于混凝土块体夹杂物实验数据集的探地雷达特征提取与选择

F. Queiroz, D. Vieira, X. L. Travassos, M. F. Pantoja
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引用次数: 3

摘要

探地雷达系统已成功地用于获取混凝土结构状况。此外,根据探地雷达探测到的迹线,可以用简单的模型对混凝土中的夹杂物进行判别。在这项工作中,在控制条件下对不同夹杂物的混凝土块进行了探测。从该实验数据集的Ascans中提取了一些特征。为了得到有效的模型,将原始数据提交到特征选择和空间约简方法中。无需复杂的数据预处理,可获得精度高、可解释性强、计算量少的模型。
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Feature Extraction and Selection in Ground Penetrating Radar with Experimental Data Set of Inclusions in Concrete Blocks
Ground Penetrating Radar systems have been successfully used to access concrete structures conditions. Moreover, inclusions in concrete can be discriminated by simple models based on traces obtained by GPR. In this work, concrete blocks with different inclusions were probed in controlled conditions. Some features were extracted from Ascans of this experimental data set. To get efficient models, raw data were submitted to features selection and space reduction methods. Without complex data pre-processing, good accuracy and more explainable models with less computational burden were obtained.
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