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A computer vision based rebar detection chain for automatic processing of concrete bridge deck GPR data

机译:基于计算机视觉的钢筋检测链,可自动处理混凝土桥面板的GPR数据

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摘要

Manual processing of Ground Penetrating Radar (GPR) images is a very time-intensive task. The authors proposed a novel computer vision-based method for automatic detection of rebars in complex GPR images in highly deteriorated concrete bridge decks. The proposed detection model consists of a fine-tuned Histogram of Oriented Gradients feature descriptor, a Multi-Layer Perceptron for classification, and a post processing algorithm for eliminating false detections and labeling rebar in Region of Interest. State-of-art results are obtained on testing the method on real bridge deck GPR data and comparing the results with RADAN software. Overall accuracy of 89.4% is obtained on URIGPRv1.0 dataset, which is introduced in this paper. The proposed method is 54.35% more accurate comparing to the results obtained by RADAN software. The proposed classifier outperformed accuracy of a 3-layer convolutional neural network by 11.9%.
机译:手动处理探地雷达(GPR)图像是一项非常耗时的任务。作者提出了一种基于计算机视觉的新颖方法,用于在高度恶化的混凝土桥面板中自动检测复杂GPR图像中的钢筋。所提出的检测模型包括微调的“定向梯度直方图”特征描述符,用于分类的多层感知器以及用于消除错误检测和在目标区域中标记钢筋的后处理算法。通过在实际桥面GPR数据上测试该方法并将结果与​​RADAN软件进行比较,可以获得最新的结果。本文介绍的URIGPRv1.0数据集的总体准确性为89.4%。与通过RADAN软件获得的结果相比,该方法的准确性提高了54.35%。提出的分类器优于3层卷积神经网络的准确性达11.9%。

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