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Automatic Crack Detection and Classification Method for Subway Tunnel Safety Monitoring

机译:地铁隧道安全监控裂缝自动识别方法

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摘要

Cracks are an important indicator reflecting the safety status of infrastructures. This paper presents an automatic crack detection and classification methodology for subway tunnel safety monitoring. With the application of high-speed complementary metal-oxide-semiconductor (CMOS) industrial cameras, the tunnel surface can be captured and stored in digital images. In a next step, the local dark regions with potential crack defects are segmented from the original gray-scale images by utilizing morphological image processing techniques and thresholding operations. In the feature extraction process, we present a distance histogram based shape descriptor that effectively describes the spatial shape difference between cracks and other irrelevant objects. Along with other features, the classification results successfully remove over 90% misidentified objects. Also, compared with the original gray-scale images, over 90% of the crack length is preserved in the last output binary images. The proposed approach was tested on the safety monitoring for Beijing Subway Line 1. The experimental results revealed the rules of parameter settings and also proved that the proposed approach is effective and efficient for automatic crack detection and classification.
机译:裂缝是反映基础设施安全状况的重要指标。本文提出了一种用于地铁隧道安全监控的自动裂缝检测和分类方法。随着高速互补金属氧化物半导体(CMOS)工业相机的应用,可以捕获隧道表面并将其存储在数字图像中。在下一步中,通过使用形态图像处理技术和阈值操作,从原始灰度图像中分割出具有潜在裂纹缺陷的局部暗区。在特征提取过程中,我们提出了一种基于距离直方图的形状描述符,该描述符可有效描述裂缝与其他不相关对象之间的空间形状差异。与其他功能一起,分类结果成功删除了90%以上的误识别对象。而且,与原始灰度图像相比,在最后输出的二进制图像中保留了超过90%的裂纹长度。该方法在北京地铁1号线的安全监控中进行了测试。实验结果揭示了参数设置的规则,并证明了该方法对于裂缝自动检测和分类是有效的。

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