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Automatic detection method of cracks from concrete surface imagery using two-step light gradient boosting machine

机译:用两步光梯度升压机从混凝土表面图像自动检测方法

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摘要

Automated crack detection based on image processing is widely used when inspecting concrete structures. The existing methods for crack detection are not yet accurate enough due to the difficulty and complexity of the problem; thus, more accurate and practical methods should be developed. This paper proposes an automated crack detection method based on image processing using the light gradient boosting machine (LightGBM), one of the supervised machine learning methods. In supervised machine learning, appropriate features should be identified to obtain accurate results. In crack detection, the pixel values of the target pixels and geometric features of the cracks that occur when they are connected linearly should be considered. This paper proposes a methodology for generating features based on pixel values and geometric shapes in two stages. The accuracy of the proposed methodology is investigated using photos of concrete structures with adverse conditions, such as shadows and dirt. The proposed methodology achieves an accuracy of 99.7%, sensitivity of 75.71%, specificity of 99.9%, precision of 68.2%, and an F-measure of 0.6952. The experimental results demonstrate that the proposed method can detect cracks with higher performance than the pix2pix-based approach. Furthermore, the training time is 7.7 times shorter than that of the XGBoost and 2.3 times shorter than that of the pix2pix. The experimental results demonstrate that the proposed method can detect cracks with high accuracy.
机译:基于图像处理的自动裂纹检测被广泛应用于检查混凝土结构时。由于问题的难度和复杂性,现有的裂纹检测方法尚未足够准确;因此,应开发更准确和实用的方法。本文提出了一种基于使用光梯度升压机(LightGBM)的图像处理的自动裂缝检测方法,是监督机学习方法之一。在监督机器学习中,应识别适当的功能以获得准确的结果。在裂缝检测中,应该考虑当连接线性连接时发生的裂缝的目标像素和几何特征的像素值。本文提出了一种基于像素值和两个阶段的几何形状产生特征的方法。使用具有不利条件的混凝土结构的照片来研究所提出的方法的准确性,如阴影和污垢。所提出的方法达到99.7%,敏感性为75.71%,特异性为99.9%,精度为68.2%,含量为0.6952。实验结果表明,所提出的方法可以检测比基于PIX2PIX的方法更高的性能的裂缝。此外,训练时间比XGBoost的训练时间短7.7倍,比Pix2pix的2.3倍。实验结果表明,所提出的方法可以高精度地检测裂缝。

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