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Deep Learning-based Concrete Crack Detection Using Hybrid Images

机译:使用混合图像的深度学习的混凝土裂纹检测

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This paper presents a deep learning-based concrete crack detection technique using hybrid images. The hybrid images combining vision and infrared (IR) thermography images are able to improve crack detectability while minimizing false alarms. Large scale concrete-made infrastructures such as bridge, dam, and etc. can be effectively inspected by spatially scanning the hybrid imaging system including vision camera, IR camera and continuous-wave line laser. However, the decision-making for the crack identification often requires experts" intervention. As a target concrete structure gets larger, automated decision-making becomes more necessary in the practical point of view. The proposed technique is able to achieve automated crack identification by modifying a well-trained convolutional neural network using a set of crack images as a training image set, while retaining the advantages of hybrid images. The proposed technique is experimentally validated using a lab-scale concrete specimen developed with various-size cracks. The test results reveal that macro- and micro-cracks are automatically detected with minimizing false-alarms.
机译:本文介绍了使用混合图像的深层学习的混凝土裂纹检测技术。结合视觉和红外线(IR)热成像图像的混合图像能够提高裂缝可检测性,同时最小化误报。大规模混凝土制成的基础设施,如桥梁,水坝,并且等可通过在空间上扫描所述混合成像系统,包括视觉相机,IR相机和连续波激光线被有效地检测。然而,裂缝识别的决策通常需要专家“干预。当目标混凝土结构变得更大,在实际的角度来看,自动决策变得更加必要。所提出的技术能够通过修改来实现自动化裂缝识别训练有素的卷积神经网络,使用一组裂缝图像作为训练图像集,同时保留了混合图像的优点。通过使用各种尺寸裂缝开发的实验室规模的混凝土试样进行了实验验证的提出的技术。测试结果揭示自动检测宏观和微裂缝,通过最小化假警报。

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