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Method for rapid detection and treatment of cracks in tunnel lining based on deep learning

机译:基于深度学习的隧道衬砌裂缝快速检测与处理方法

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The number and scale of tunnels around the world are continuously increasing, but various disease problems during the operation period have also followed, and they have become one of the important problems facing tunnels at present. Many detection methods have been proposed in the field of tunnel detection, such as traditional manual detection method, ultrasonic detection method, ground-penetrating radar method, laser scanning method and inspection method based on image processing technology. However, due to the high cost of equipment, single test content, strict test environment and other reasons, most of the current tunnel routine inspection is still manual inspection. In order to solve the existing problems in tunnel detection, a method for rapid detection and treatment analysis of cracks in tunnel linings based on deep learning is proposed. Firstly, lining cracks were selected as the main research objects, and their causes and treatment measures in different parts were analyzed. Secondly, the AlexNet convolutional neural network based on the Caffe framework was used to identify the cracks. The crack images were collected to establish a data set, and the network parameters were modified and trained. Then use MATLAB to extract the crack length and width, and design a human-machine interactive tunnel lining crack detection program in MATLAB GUI. Finally, the content and results of this paper are discussed.
机译:世界各地的隧道数量和规模在不断增加,但在运营期也随之出现各种疾病问题,它们已成为当前隧道面临的重要问题之一。在隧道检测领域中已经提出了许多检测方法,例如传统的手动检测方法,超声检测方法,探地雷达方法,激光扫描方法和基于图像处理技术的检查方法。但是,由于设备成本高,测试内容单一,测试环境严格等原因,目前大多数的隧道常规检查仍是人工检查。为了解决隧道检测中存在的问题,提出了一种基于深度学习的隧道衬砌裂缝快速检测与处理方法。首先,以衬里裂纹为主要研究对象,分析了衬里裂纹在不同部位的产生原因及处理措施。其次,基于Caffe框架的AlexNet卷积神经网络被用于识别裂纹。收集裂缝图像以建立数据集,并修改和训练网络参数。然后使用MATLAB提取裂缝的长度和宽度,并在MATLAB GUI中设计人机交互的隧道衬砌裂缝检测程序。最后,对本文的内容和结果进行了讨论。

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