Material recognition for construction quality monitoring using deep learning methods

IF 3.1 Q2 CONSTRUCTION & BUILDING TECHNOLOGY
Hadi Mahamivanan, Navid Ghassemi, Mohammad Tayarani Darbandi, A. Shoeibi, Sadiq Hussain, F. Nasirzadeh, R. Alizadehsani, D. Nahavandi, A. Khosravi, Saeid Nahavandi
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引用次数: 1

Abstract

Purpose This paper aims to propose a new deep learning technique to detect the type of material to improve automated construction quality monitoring. Design/methodology/approach A new data augmentation approach that has improved the model robustness against different illumination conditions and overfitting is proposed. This study uses data augmentation at test time and adds outlier samples to training set to prevent over-fitted network training. For data augmentation at test time, five segments are extracted from each sample image and fed to the network. For these images, the network outputting average values is used as the final prediction. Then, the proposed approach is evaluated on multiple deep networks used as material classifiers. The fully connected layers are removed from the end of the networks, and only convolutional layers are retained. Findings The proposed method is evaluated on recognizing 11 types of building materials which include 1,231 images taken from several construction sites. Each image resolution is 4,000 × 3,000. The images are captured with different illumination and camera positions. Different illumination conditions lead to trained networks that are more robust against various environmental conditions. Using VGG16 model, an accuracy of 97.35% is achieved outperforming existing approaches. Practical implications It is believed that the proposed method presents a new and robust tool for detecting and classifying different material types. The automated detection of material will aid to monitor the quality and see whether the right type of material has been used in the project based on contract specifications. In addition, the proposed model can be used as a guideline for performing quality control (QC) in construction projects based on project quality plan. It can also be used as an input for automated progress monitoring because the material type detection will provide a critical input for object detection. Originality/value Several studies have been conducted to perform quality management, but there are some issues that need to be addressed. In most previous studies, a very limited number of material types were examined. In addition, although some studies have reported high accuracy to detect material types (Bunrit et al., 2020), their accuracy is dramatically reduced when they are used to detect materials with similar texture and color. In this research, the authors propose a new method to solve the mentioned shortcomings.
基于深度学习方法的建筑质量监测材料识别
目的本文旨在提出一种新的深度学习技术来检测材料类型,以提高施工质量的自动化监控。设计/方法/方法提出了一种新的数据增强方法,该方法提高了模型对不同光照条件和过拟合的鲁棒性。本研究在测试时使用数据扩充,并将异常样本添加到训练集中,以防止过度拟合网络训练。对于测试时的数据增强,从每个样本图像中提取五个片段,并将其提供给网络。对于这些图像,使用输出平均值的网络作为最终预测。然后,在多个用作材料分类器的深度网络上对所提出的方法进行了评估。完全连接的层被从网络的末端移除,并且仅保留卷积层。发现该方法在识别11种建筑材料方面进行了评估,其中包括从几个建筑工地拍摄的1231张图像。每个图像的分辨率为4000 × 这些图像是用不同的照明和相机位置拍摄的。不同的照明条件导致训练的网络对各种环境条件更加鲁棒。使用VGG16模型,实现了97.35%的准确率,优于现有方法。实践意义据信,该方法为检测和分类不同的材料类型提供了一种新的、稳健的工具。材料的自动检测将有助于监测质量,并根据合同规范查看项目中是否使用了正确类型的材料。此外,所提出的模型可作为基于项目质量计划的建设项目质量控制的指导方针。它也可以用作自动进度监控的输入,因为材料类型检测将为对象检测提供关键输入。独创性/价值已经进行了几项研究来进行质量管理,但仍有一些问题需要解决。在以前的大多数研究中,对数量非常有限的材料类型进行了检查。此外,尽管一些研究报告了检测材料类型的高精度(Bunrit等人,2020),但当它们用于检测具有相似纹理和颜色的材料时,它们的精度会显著降低。在本研究中,作者提出了一种新的方法来解决上述缺点。
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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来源期刊
Construction Innovation-England
Construction Innovation-England CONSTRUCTION & BUILDING TECHNOLOGY-
CiteScore
7.10
自引率
12.10%
发文量
71
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