Crack recognition and defect detection of assembly building constructions for intelligent construction

Zhipeng Huo, Xiaoqiang Wu, Tao Cheng
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Abstract

Vision-assisted surface defect detection technology is shallowly applied in crack identification of assembly building components, for this reason, the study proposes a crack identification and defect detection method for assembly building components oriented to intelligent construction. An image preprocessing algorithm is designed by improving bilateral filtering, on the basis of which an image classification model is constructed using the GhostNet algorithm, and the cracks are localized and measured using the 2D pixel positioning technique. Algorithm validation showed that the processed image denoising is better, and the peak signal-to-noise ratio of the image of the proposed algorithm is improved by 15.701 % and 2.395 %, respectively, compared to other algorithms. The F1 value of the proposed model after 50 training rounds increased by 20.970 % on average compared to other models, and the detection accuracy was as high as 0.990. The actual measurements of cracks in concrete wall panels revealed that the research-proposed method has better results compared to the traditional manual measurements, and is not subject to the limitations and interferences of factors such as manual experience, and it is more effective in the recognition of crack images. Overall, the detection method proposed by the study has high accuracy and small error, can meet the needs and standards of crack detection in assembly building components, and can intelligently locate the maximum length and width coordinates of the cracks, which is of high value in the application of crack detection in assembly building components.
装配式建筑结构的裂缝识别和缺陷检测,实现智能建造
视觉辅助表面缺陷检测技术在装配式建筑构件裂缝识别中应用较浅,为此,本研究提出了一种面向智能建筑的装配式建筑构件裂缝识别与缺陷检测方法。通过改进双边滤波设计了图像预处理算法,在此基础上利用 GhostNet 算法构建了图像分类模型,并利用二维像素定位技术对裂缝进行了定位和测量。算法验证表明,处理后的图像去噪效果更好,与其他算法相比,所提算法的图像峰值信噪比分别提高了 15.701 % 和 2.395 %。与其他模型相比,经过 50 轮训练后,所提模型的 F1 值平均提高了 20.970%,检测精度高达 0.990。通过对混凝土墙板裂缝的实际测量发现,研究提出的方法与传统的人工测量方法相比效果更好,而且不受人工经验等因素的限制和干扰,对裂缝图像的识别效果更好。总体而言,该研究提出的检测方法精度高、误差小,能够满足装配式建筑构件裂缝检测的需求和标准,并能智能定位裂缝的最大长度和宽度坐标,在装配式建筑构件裂缝检测中具有较高的应用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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