基于深度学习的无人机混凝土桥梁检测图像处理工具的设计

IF 2.7 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Journal of Information and Telecommunication Pub Date : 2023-03-22 DOI:10.1080/24751839.2023.2186624
Long Ngo, Chieu Luong Xuan, H. M. Luong, Bình Ngô Thanh, Bui Ngoc Dung
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引用次数: 0

摘要

裂缝检测是桥梁评估和维护的关键环节之一。现有的几种基于图像的方法需要捕获桥梁表面并提取裂缝特征来检测裂缝。然而,在某些位置,如桥下和桥墩下的空间,很难捕捉到裂缝图像。本文旨在利用无人机在具有挑战性的位置捕捉图像,应用一种方法来检测桥梁表面的裂缝。无人机拍摄的视频将通过深度学习方法自动识别裂缝。深度学习设计用于训练和测试具有51,000张图像的数据集,每张图像大小为244 × 244。深度学习方法显示了交通设施裂缝检测的可行性。实验结果的准确度高达95.19%。此外,该工具还可以为视频中的每个裂缝分配包含信息的ID,以便将这些裂缝安装在桥梁的3D地图上,以便在评估桥梁健康状况的任务中研究裂缝随时间的发展情况。
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Designing image processing tools for testing concrete bridges by a drone based on deep learning
ABSTRACT Crack detection is one of the crucial aspects of bridge evaluation and maintenance. Several existing image-based methods require capturing the bridge surface and extracting crack features to detect the crack. However, in some positions such as the space under the bridge and piers, it is difficult to capture crack images. This paper aims to apply a method to detect cracks on the bridge surface by using a drone that can capture images in challenging positions. The video recorded from the drone will be automatically identified the cracks by employing the deep learning method. Deep learning is designed for training and testing the dataset with 51.000 images, each image sized 244 × 244. The deep learning method shows the feasibility of detecting the cracks in the transport facility. This is supported by the high accuracy of the experimental results of 95.19%. In addition, the tool can assign an ID containing information to each crack from video so that these cracks can then be mounted on a 3D map of the bridge for research on crack development over time in the task of assessing the health of bridges.
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来源期刊
CiteScore
7.50
自引率
0.00%
发文量
18
审稿时长
27 weeks
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