Post-earthquake detection of surface spalling and cracks in masonry buildings based on computer vision

IF 3.9 2区 工程技术 Q1 ENGINEERING, CIVIL
Longmei Ling , Gao Ma , Hyeon-Jong Hwang , Xiaojing Tan
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引用次数: 0

Abstract

Rapid post-earthquake detection of visible damage to buildings is essential for damage assessment and ensuring safety. The inefficiency of traditional methods, such as manual visual inspection and measurement, necessitates automatic solutions, especially for masonry buildings, which are widely used and more vulnerable in economically underdeveloped areas. In this study, an automatic damage detection method combining machine learning and image processing techniques was proposed to identify and quantify cracks and spalling on the plastered surfaces of masonry walls. An image classification model based on deep convolutional neural networks (CNNs) was developed, which was combined with the sliding window technique and Otsu threshold segmentation method to generate binary images of the damage regions from captured images. This method streamlines data preparation by avoiding pixel-level annotation, significantly reducing manual labeling effort compared to direct training of segmentation models. Subsequently, based on the differences in geometry and size between the crack region and spalling region, morphological operations were applied to separate them. Finally, the maximum inscribed circle algorithm and the pixel counting method were used to measure the maximum crack width and spalling area respectively. The measurement results indicate that the proposed method can effectively identify the crack and spalling regions on the plastered surfaces of masonry buildings from photography images, as well as achieve pixel-level segmentation of the damage and accurately quantify crack widths and spalling areas. The proposed method provides a reliable solution for large-scale damage detection in the early stages following the earthquake.
基于计算机视觉的砌体建筑表面剥落和裂缝震后检测
震后快速检测建筑物的可见损伤是评估损伤和确保安全的关键。传统方法,如人工目视检测和测量的效率低下,需要自动化解决方案,特别是在经济欠发达地区使用广泛且更脆弱的砖石建筑。本研究提出了一种结合机器学习和图像处理技术的自动损伤检测方法,用于对砌体墙体抹灰表面的裂缝和剥落进行识别和量化。提出了一种基于深度卷积神经网络(cnn)的图像分类模型,该模型结合滑动窗口技术和Otsu阈值分割方法,从捕获的图像中生成损伤区域的二值图像。该方法通过避免像素级标注来简化数据准备,与直接训练分割模型相比,显著减少了人工标注的工作量。随后,基于裂纹区域和剥落区域在几何形状和尺寸上的差异,采用形态学操作对其进行分离。最后,采用最大内切圆算法和像素计数法分别测量最大裂纹宽度和剥落面积。实测结果表明,该方法能有效地从摄影图像中识别砌体建筑抹灰表面的裂缝和剥落区域,实现损伤的像素级分割,准确量化裂缝宽度和剥落区域。该方法为震后早期大规模损伤检测提供了可靠的解决方案。
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来源期刊
Structures
Structures Engineering-Architecture
CiteScore
5.70
自引率
17.10%
发文量
1187
期刊介绍: Structures aims to publish internationally-leading research across the full breadth of structural engineering. Papers for Structures are particularly welcome in which high-quality research will benefit from wide readership of academics and practitioners such that not only high citation rates but also tangible industrial-related pathways to impact are achieved.
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