Automated pavement crack detection based on multiscale fully convolutional network

Xin Wang, Yueming Wang, Lingjun Yu, Qi Li
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Abstract

Abstract Automatic pavement crack detection is essential for fast and efficient pavement maintenance and health measurement. And crack image data is the basis of crack detection. The existing data collection methods have disadvantages such as high cost, easy loss of frames, blurring, and loss of crack information. Therefore, a new method of data collection using target detection and perspective transformation is introduced. The CRACK2000 dataset with multiple complex backgrounds is constructed by this method. Also, a multiscale fully convolutional network by improving U‐Net, named U‐multiscale dilated network (U‐MDN), is proposed. The network uses U‐Net as the base network and introduces U‐multiscale dilated convolutional module (U‐MDM) after U‐Net downsampling. In addition, the U‐MDM is compared with U‐MCM and MDM, and the result shows that U‐MDM has a better effect. Finally, U‐MDN is compared with U‐Net, CrackSeg, DeeplabV3+, Basnet, and PDDF‐Net on CRACK2000 and other data sets, respectively. The experimental results demonstrate that the U‐MDN is better than other algorithms in terms of precision, recall, F1‐score, and AUC.
基于多尺度全卷积网络的路面裂缝自动检测
摘要路面裂缝自动检测是实现路面快速、高效维修和健康检测的重要手段。而裂纹图像数据是裂纹检测的基础。现有的数据采集方法存在成本高、易丢失帧、模糊和丢失裂纹信息等缺点。为此,提出了一种利用目标检测和视角变换进行数据采集的新方法。利用该方法构建了具有多个复杂背景的CRACK2000数据集。同时,提出了一种改进U - Net的多尺度全卷积网络,称为U -多尺度扩张网络(U - MDN)。该网络使用U - Net作为基础网络,并在U - Net下采样后引入U -多尺度扩展卷积模块(U - MDM)。此外,还将U‐MDM与U‐MCM和MDM进行了比较,结果表明U‐MDM具有更好的效果。最后,将U - MDN分别与CRACK2000和其他数据集上的U - Net、CrackSeg、DeeplabV3+、Basnet和PDDF - Net进行比较。实验结果表明,U - MDN在精度、召回率、F1分数和AUC方面都优于其他算法。
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