CrackDenseLinkNet: a deep convolutional neural network for semantic segmentation of cracks on concrete surface images

IF 5.7 2区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY Structural Health Monitoring-An International Journal Pub Date : 2023-05-28 DOI:10.1177/14759217231173305
Preetham Manjunatha, S. Masri, A. Nakano, Landon Carter Wellford
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引用次数: 1

Abstract

Cracks are the defects formed by cyclic loading, fatigue, shrinkage, creep, and so on. In addition, they represent the deterioration of the structures over some time. Therefore, it is essential to detect and classify them according to the condition grade at the early stages to prevent the collapse of structures. Deep learning-based semantic segmentation convolutional neural network (CNN) has millions of learnable parameters. However, depending on the complexity of the CNN, it takes hours to days to train the network fully. In this study, an encoder network DenseNet and modified LinkNet with five upsampling blocks were used as a decoder network. The proposed network is referred to as the “CrackDenseLinkNet” in this work. CrackDenseLinkNet has 19.15 million trainable parameters, although the input image size is 512 × 512 and has a deeper encoder. CrackDenseLinkNet and four other state-of-the-art (SOTA) methods were evaluated on three public and one private datasets. The proposed CNN, CrackDenseLinkNet, outperformed the best SOTA method, CrackSegNet, by 2.2% of F1-score on average across the four datasets. Lastly, a crack profile analysis demonstrated that the CrackDenseLinkNet has lesser variance in relative errors for the crack width, length, and area categories against the ground-truth data. The code and datasets can be downloaded at https://github.com/preethamam/CrackDenseLinkNet-DeepLearning-CrackSegmentation .
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CrackDenseLinkNet:一种用于混凝土表面图像裂纹语义分割的深度卷积神经网络
裂纹是由循环载荷、疲劳、收缩、蠕变等形成的缺陷,也是结构在一段时间内退化的表现。因此,有必要在早期阶段根据状态等级对其进行检测和分类,以防止结构倒塌。基于深度学习的语义分割卷积神经网络(CNN)具有数百万个可学习参数。然而,根据CNN的复杂性,对网络进行全面培训需要数小时到数天的时间。在本研究中,编码器网络DenseNet和具有五个上采样块的改进的LinkNet被用作解码器网络。在这项工作中,拟议的网络被称为“CrackDenseLinkNet”。CrackDenseLinkNet有19.15 万个可训练参数,尽管输入图像大小为512 × 512,并且具有更深的编码器。CrackDenseLinkNet和其他四种最先进的(SOTA)方法在三个公共和一个私有数据集上进行了评估。在四个数据集中,所提出的CNN CrackDenseLinkNet的F1得分平均比最好的SOTA方法CrackSegNet高2.2%。最后,裂纹剖面分析表明,CrackDenseLinkNet在裂纹宽度、长度和面积类别的相对误差方面与地面实况数据的差异较小。代码和数据集可在https://github.com/preethamam/CrackDenseLinkNet-DeepLearning-CrackSegmentation。
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来源期刊
CiteScore
12.80
自引率
12.10%
发文量
181
审稿时长
4.8 months
期刊介绍: Structural Health Monitoring is an international peer reviewed journal that publishes the highest quality original research that contain theoretical, analytical, and experimental investigations that advance the body of knowledge and its application in the discipline of structural health monitoring.
期刊最新文献
Deep learning-based obstacle-avoiding autonomous UAVs with fiducial marker-based localization for structural health monitoring. Deep learning-based concrete defects classification and detection using semantic segmentation. Combination of active sensing method and data-driven approach for rubber aging detection Distributed fiber optic strain sensing for crack detection with Brillouin shift spectrum back analysis An unsupervised transfer learning approach for rolling bearing fault diagnosis based on dual pseudo-label screening
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