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Building crack identification and total quality management method based on deep learning

机译:基于深度学习的裂缝识别和全质量管理方法

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The existence of cracks will affect the stability of the building. It is very important to identify and deal with the cracks in time to ensure the safety and stability of the building. Based on the above background, the purpose of this paper is to study the method of building crack recognition and total quality management based on deep learning. This paper focuses on the computer vision technology in artificial intelligence, studies the image classification algorithm and semantic segmentation algorithm based on the deep learning method, and applies it to the field of building crack image analysis. In this paper, we use the deep convolution neural network to design the building image crack classification model and segmentation model, realize the identification and analysis of building cracks, and build a building crack analysis system, which can significantly improve the efficiency of building crack detection. Then, based on the image processing technology, the quantitative analysis of the fracture segmentation results is carried out. Through the basic morphological methods such as corrosion, expansion, opening and closing operations, the segmentation mark map, skeleton map and geometric parameter information of the fracture are obtained, which further provides the maintenance and judgment basis for professional engineers. The experimental results show that compared with FCN, the accuracy of rfcn-a is improved by 5.98%, the precision is improved by 6.07%, and the real and f & rsquo;score are improved by 3.11% and 6.01%, respectively.(c) 2021 Elsevier B.V. All rights reserved.
机译:裂缝的存在会影响建筑物的稳定性。及时识别和处理裂缝是非常重要的,以确保建筑物的安全性和稳定性。基于以上背景,本文的目的是研究基于深度学习的建立破解识别和全面质量管理的方法。本文重点介绍了人工智能的计算机视觉技术,研究了基于深度学习方法的图像分类算法和语义分割算法,将其应用于建筑裂纹图像分析领域。在本文中,我们使用深卷积神经网络设计建筑图像裂缝分类模型和分割模型,实现了建筑裂缝的识别和分析,建立了建筑裂缝分析系统,可以显着提高建筑裂纹检测效率。然后,基于图像处理技术,进行了裂缝分段结果的定量分析。通过诸如腐蚀,膨胀,打开和关闭操作之类的基本形态学方法,获得分割标记图,骨架图和裂缝的几何参数信息,这进一步为专业工程师提供了维护和判断基础。实验结果表明,与FCN相比,RFCN-A的准确性提高了5.98%,精度提高了6.07%,实际和F&RSQU;分别提高了3.11%和6.01%。( c)2021 Elsevier BV保留所有权利。

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