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首页> 外文期刊>Advances in Structural Engineering >Structural crack detection using deep learning-based fully convolutional networks
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Structural crack detection using deep learning-based fully convolutional networks

机译:使用基于深度学习的全卷积网络进行结构裂缝检测

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摘要

Cracks are a potential threat to the safety and endurance of civil infrastructures, and therefore, careful and regular structural crack inspection is needed during their long-term service periods. Many image-processing approaches have been developed for structural crack detection. However, like traditional edge detection algorithms, these methods are easily disturbed by the environmental effect. Convolutional neural networks are newly developed methods and have excellent performances in the image-classification tasks. This study proposes a fully convolutional network called Ci-Net for structural crack identification. Pixel-level labeled image training data are obtained from the online data set. Four indices are adopted to evaluate the performance of the trained Ci-Net. Crack images from an indoor concrete beam test are adopted for validation of its structural crack recognition capacity. The recognition results are also compared with those obtained by the edge detection methods. It indicates that Ci-Net exhibits a better performance over the edge detection methods in structural damage detection.
机译:裂缝是对民用基础设施的安全性和耐久性的潜在威胁,因此,在长期服务期间,需要仔细定期进行结构裂缝检查。已经开发出许多用于结构裂缝检测的图像处理方法。但是,像传统的边缘检测算法一样,这些方法很容易受到环境影响。卷积神经网络是最新开发的方法,在图像分类任务中具有出色的性能。这项研究提出了一种称为Ci-Net的全卷积网络,用于结构裂纹识别。从在线数据集获得像素级标记的图像训练数据。采用四个指标来评估经过训练的Ci-Net的性能。通过室内混凝土梁试验的裂缝图像来验证其结构裂缝识别能力。还将识别结果与通过边缘检测方法获得的结果进行比较。这表明在结构损伤检测中,Ci-Net的性能优于边缘检测方法。

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