Sub-dataset Generation and Matching for Crack Detection on Brick Walls using Convolutional Neural Networks

M. H. Talukder, Shuhei Ota, M. Takanokura, N. Ishii
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Abstract

Crack detection is an issue of significant interest in ensuring the safety of buildings. Conventionally, a maintenance engineer performs crack detection manually, which is laborious and time-consuming. Therefore, a systematic crack detection method is required. Among the existing methods, convolutional neural networks (CNNs) are more effective; however, they often fail in the case of brick walls. There are several types of bricks and some may appear to have cracks owing to their structure. Additionally, the joining points of bricks may appear as cracks. It is theorized that if sub-datasets are generated based on the image attributes, and a proper sub-dataset is selected by matching the test image with the sub-datasets, then the performance of the CNN can be improved. In this study, a method consisting of sub-dataset generation and matching is proposed to improve the crack detection in brick walls. CNN learning is conducted with each sub-dataset, and crack detection is performed using a proper learned CNN that is selected by matching the test images with the images in the sub-datasets. Four performance metrics, namely, precision, recall, Fmeasure, and accuracy, are used for performance evaluation. The numerical experiments show that the proposed method improves the crack detection in brick walls.
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基于卷积神经网络的砖墙裂纹检测子数据集生成与匹配
裂缝检测是保证建筑物安全的重要问题。传统的裂纹检测方法是手工检测,费时费力。因此,需要一种系统的裂纹检测方法。在现有的方法中,卷积神经网络(cnn)更有效;然而,在砖墙的情况下,他们经常失败。砖有几种类型,有些可能由于其结构而出现裂缝。此外,砖的连接点可能出现裂缝。从理论上讲,如果根据图像属性生成子数据集,并通过将测试图像与子数据集进行匹配来选择合适的子数据集,则可以提高CNN的性能。本文提出了一种子数据集生成与匹配相结合的方法来改进砖墙的裂缝检测。对每个子数据集进行CNN学习,通过将测试图像与子数据集中的图像进行匹配,选择学习到的合适的CNN进行裂纹检测。四个性能指标,即精度,召回率,Fmeasure和准确性,用于性能评估。数值实验表明,该方法提高了砖墙裂缝的检测精度。
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