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Triplanar Imaging of 3-D GPR Data for Deep-Learning-Based Underground Object Detection

机译:基于深度学习的地下对象检测的三百合成像

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摘要

This article proposes a deep-learning-based underground object classification technique that uses triplanar ground-penetrating radar images consisting of B-, C-, and D-scan images. Although multichannel ground-penetrating radar (GPR) systems provide three-dimensional (3-D) information about underground objects, there is currently no suitable technique available for processing 3-D data as opposed to 2-D images. In this article, a triplanar deep convolutional neural network technique is proposed for use in processing 3-D GPR data for use in automatized underground object classification. The proposed method was validated experimentally using 3-D GPR road scanning data obtained from urban roads in Seoul, South Korea. In addition, the classification performance of the method was compared to that of a conventional method that uses only B-scan-images. The results of the validation and comparison tests reveal that the classification performance of the proposed technique is notably better than that of the conventional B-scan-image-based method and that its use results in decrease misclassification ratios.
机译:本文提出了一种基于深度学习的地下对象分类技术,其使用由B-,C-和D扫描图像组成的Triplanar地面穿透雷达图像。虽然多通道地面穿透雷达(GPR)系统提供了关于地下物体的三维(3-D)信息,但目前没有适合于处理3-D数据的合适技术,而不是2-D图像。在本文中,提出了一种Triplanar深卷积神经网络技术,用于处理3-D GPR数据以用于自动化的地下对象分类。通过从韩国首尔城市道路获得的3-D GPR路扫描数据,实验验证了该方法。另外,将该方法的分类性能与仅使用B扫描图像的传统方法的分类性能进行了比较。验证和比较测试的结果表明,所提出的技术的分类性能显着优于传统的B扫描图像的方法的分类性能,并且其使用导致降低错误分类比率。

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