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Development of Deep Learning Model for the Recognition of Cracks on Concrete Surfaces

机译:混凝土表面裂缝深层学习模型的发展

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This paper is devoted to the development of a deep learning- (DL-) based model to detect crack fractures on concrete surfaces. The developed model for the classification of images was based on a DL Convolutional Neural Network (CNN). To train and validate the CNN model, a database containing 40,000 images of concrete surfaces (with and without cracks) was collected from the available literature. Several conditions on the concrete surfaces were taken into account such as illumination and surface finish (i.e., exposed, plastering, and paint). Various error measurement criteria such as accuracy, precision, recall, specificity, and F1-score were employed for accessing the quality of the developed model. Results showed that for the training dataset (50% of the database), the precision, recall, specificity, F1-score, and accuracy were 99.5%, 99.8%, 99.5%, 99.7%, and 99.7%, respectively. On the other hand, for the validating dataset, the precision, recall, specificity, F1-score, and accuracy are 96.5%, 98.8%, 96.6%, 97.7%, and 97.7%, respectively. Thus, the developed CNN model may be considered valid because it performs the classification of cracks well using the testing data. It is also confirmed that the developed DL-based model was robust and efficient, as it can take into account different conditions on the concrete surfaces. The CNN model developed in this study was compared with other works in the literature, showing that the CNN model could improve the accuracy of image classification, in comparison with previously published results. Finally, in further work, such model could be combined with Unmanned Aerial Vehicles (UAVs) to increase the productivity of concrete infrastructure inspection.
机译:本文致力于发展基于深度学习的模型,以检测混凝土表面上的裂缝骨折。用于图像分类的开发模型基于DL卷积神经网络(CNN)。要培训和验证CNN模型,从可用文献中收集了包含40,000个混凝土表面图像(带裂缝)的数据库。将混凝土表面上的几种条件考虑在诸如照明和表面光洁度(即,暴露,抹灰和涂料)中进行的。采用各种误差测量标准,例如精度,精度,召回,特异性和F1分数来访问开发模型的质量。结果表明,对于培训数据集(数据库的50%),精度,召回,特异性,F1分数和准确性分别为99.5%,99.8%,99.5%,99.7%和99.7%。另一方面,对于验证数据集,精确度,召回,特异性,F1分数和准确性分别为96.5%,98.8%,96.6%,97.7%和97.7%。因此,所开发的CNN模型可以被认为是有效的,因为它使用测试数据执行裂缝的分类。还证实,开发的基于DL的模型具有稳健且有效,因为它可以考虑混凝土表面上的不同条件。与文献中的其他作品相比,该研究中开发的CNN模型,表明CNN模型可以提高图像分类的准确性,与先前公布的结果相比。最后,在进一步的工作中,这种模型可以与无人驾驶飞行器(无人机)相结合,以提高混凝土基础设施检测的生产率。

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