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Detection and localization of rebar in concrete by deep learning using ground penetrating radar

机译:利用地面渗透雷达深入学习中钢筋的检测与定位

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摘要

Ground penetrating radar (GPR) has been widely used for detection and localization of reinforced steel bar (rebar) in concrete in a non-destructive way. However, manual interpretation of a large number of GPR images is time-consuming, and the results highly depend on practitioner experience and the available priori information. This paper proposes an automatic detection and localization method using deep learning and migration. Firstly, a Single Shot Multibox Detector (SSD) model is established to identify regions of interest containing hyperbolas in a GPR image. This deep learning model is trained using a real GPR dataset, which contains 13,026 rebar targets in 3992 images, collected on residential buildings under construction. Secondly, each target region is migrated and transformed into a binary image to locate the rebar. After the binarization, the apex of the focused cluster is obtained and used to estimate both the horizontal position and the depth of the rebar. The testing results show that the detection accuracy of the proposed artificial intelligence method is 90.9%. The computation time needed for processing a GPR image with a size of 300 x 300 pixels is only 0.47 s. The depth estimation error in a laboratory experiment is 1.5 mm (5%), and the lateral position error is 0.7 cm. Therefore, it is concluded that the proposed method can automatically detect the rebar from GPR images in real time when a handheld GPR system is operated at a walking speed and the depth estimation accuracy is acceptable in practice.
机译:地面穿透雷达(GPR)已广泛用于以非破坏性方式在混凝土中的钢筋(钢筋)的检测和定位。但是,对大量GPR图像的手动解释是耗时的,结果高度依赖于从业者体验和可用的先验信息。本文提出了一种使用深度学习和迁移的自动检测和定位方法。首先,建立单次拍摄的多射门检测器(SSD)模型,以识别GPR图像中包含双曲线的感兴趣区域。这种深度学习模型使用真正的GPR数据集进行培训,其中包含3992张图片中的13,026个钢筋目标,在建设的住宅建筑物上收集。其次,将每个目标区域迁移并转换为二进制图像以定位钢筋。二值化后,获得聚焦簇的顶点并用于估计钢筋的水平位置和深度。测试结果表明,所提出的人工智能方法的检测精度为90.9%。处理尺寸为300×300像素的GPR图像所需的计算时间仅为0.47秒。实验室实验中的深度估计误差<1.5mm(5%),横向位置误差<0.7cm。因此,结论是,当在步行速度下操作手持GPR系统并且在实践中可以接受深度估计精度时,所提出的方法可以在实时从GPR图像中自动检测钢筋。

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