使用图像分析来量化建筑物屋顶的缺陷并确定修复的优先顺序

IF 1.6 Q3 MANAGEMENT
Facilities Pub Date : 2023-03-02 DOI:10.1108/f-08-2022-0119
Kareem Mostafa, T. Hegazy, Robert D. Hunsperger, Stepanka Elias
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引用次数: 0

摘要

目的本文旨在使用卷积神经网络(CNNs)提供一种根据损坏类型和程度对退化建筑资产进行分类的客观方法。这项研究支持建筑物的自动检查,并将重点放在屋顶元件上,屋顶元件是建筑物中最关键和最容易受到外部损坏的元件之一。设计/方法/方法在本文中,从几栋建筑中收集了5000多张退化屋顶的图像,以设计一个自动识别和确定屋顶缺陷大小的CNN系统。使用不同的CNN公式进行实验,使用两阶段CNN实现了最佳精度。第一阶段CNN将图像分类为有缺陷/无缺陷,而第二阶段根据损伤类型对有缺陷的图像进行分类。基于图像分类,通过最大限度地提高有限修复资金的回报,使用优化来优先考虑屋顶维修。发现所开发的细胞神经网络在第一阶段和第二阶段的准确率分别达到95%和97%,高于以前的文献工作。事实证明,使用所提出的模型来自动化检查和状态评估活动比传统方法更快。根据21栋校园建筑的状况和预算限制,提出了维修/更换策略。研究局限性/含义未来的研究包括测试不同的数据采集技术(如红外成像),执行基于严重程度的分类,并与BIM集成进行缺陷定位。独创性/价值这项研究提供了一种客观的方法,通过图像分析和优化技术的结合,自动化资产状况评估并改进融资决策。所提出的方法适用于其他资产类型和组成部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using image analysis to quantify defects and prioritize repairs in built-up roofs
Purpose This paper aims to use convolutional neural networks (CNNs) to provide an objective approach to classify deteriorated building assets according to the type and extent of damage. This research supports automated inspection of buildings and focuses on roofing elements as one of the most critical and externally distressed elements in buildings. Design/methodology/approach In this paper, 5,000+ images of deteriorated roofs from several buildings were collected to design a CNN system that automatically identifies and sizes roofing defects. Experimenting with different CNN formulations, the best accuracy is achieved using two-stage CNNs. The first-stage CNN classifies images into defect/no defect, while the second stage classifies the defected images according to the damage type. Based on the image classification, optimization is used to prioritize roof repairs by maximizing the return from limited rehabilitation funds. Findings The developed CNNs reached 95% and 97% accuracy for the first and second phases, respectively, which is higher than achieved in previous literature efforts. Using the proposed model to automate inspection and condition assessment activities proved to be faster than conventional methods. Repair/replace strategy for a case study of 21 campus buildings based on their condition and budgetary constraints was suggested. Research limitations/implications Future research includes testing different data acquisition technologies (e.g. infrared imaging), performing severity-based classification and integrating with BIM for defect localization. Originality/value This study provides an objective approach to automate asset condition assessment and improve funding decisions using a combination of image analysis and optimization techniques. The proposed approach is applicable toward other asset types and components.
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来源期刊
Facilities
Facilities MANAGEMENT-
CiteScore
4.40
自引率
17.40%
发文量
46
期刊介绍: The journal offers thorough, independent and expert papers to inform relevant audiences of thinking and practice in the field, including topics such as: ■Intelligent buildings ■Post-occupancy evaluation (building evaluation) ■Relocation and change management ■Sick building syndrome ■Ergonomics and workplace design ■Environmental and workplace psychology ■Briefing, design and construction ■Energy consumption ■Quality initiatives ■Infrastructure management
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