混凝土表面裂缝检测特征提取网络的多级优化

IF 6.2 2区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY
Faris Elghaish , Sandra Matarneh , Farzad Pour Rahimian , Essam Abdellatef , David Edwards , Obuks Ejohwomu , Mohammed Abdelmegid , Chansik Park
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引用次数: 0

摘要

随着深度学习(DL)越来越多地用于检测和分类混凝土表面的损伤,对准确和精确模型的需求也在增加。本研究提出了一种新的多层优化经验方法,用于两个突出的深度学习模型,即ResNet101和Xception,以对混凝土表面的损伤进行分类。这两个模型都使用20,000张描绘不同类型裂缝的图像进行训练,并使用另一组20,000张图像进行测试。然后采用顺序运动优化(SMO)、洗漱蛙跳算法(SFLA)、灰狼优化(GWO)和海象优化(WO)四种算法来提高分类精度。在评估DL模型的整体性能后,将四种算法分为两层。第一层包括SMO、SFLA、GWO及其组合应用。随后,第二阶段实施了WO优化器,以进一步提高性能。结果显示对两种CNN模型的准确性都有实质性的积极影响。具体来说,ResNet101达到了98.9%的准确率,Xception达到了99.2%的准确率。在准确率细分中,ResNet101在第一阶段达到了97.6%的准确率,Xception达到了98.3%的准确率,而优化前的Xception和ResNet101分别为87.4%和83.1%。鉴于这种方法在检测混凝土表面裂缝方面的准确率超过99%,它为大型建筑物的结构健康调查的效率和成本效益提供了显着提高。此外,它为结构工程师提供了精确的数据,以准确地确定和实施所需的维护措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-level optimisation of feature extraction networks for concrete surface crack detection
With the increasing utilisation of deep learning (DL) for detecting and classifying distress in concrete surfaces, the demand for accurate and precise models has risen. This study proposes a novel empirical approach of multilayer optimisation for two prominent DL models, namely ResNet101 and Xception, to classify distress in concrete surfaces. Both models were trained using 20,000 images depicting various types of cracks and tested with another set of 20,000 images. Four algorithms (Sequential Motion Optimisation (SMO), shuffled frog-leaping algorithm (SFLA), grey wolf optimisation (GWO), walrus optimisation (WO)) were then applied to enhance classification accuracy. After evaluating the DL models’ overall performance, the four algorithms were grouped into two layers. The first layer comprised SMO, SFLA, GWO and their combined application. Subsequently, the second stage implemented the WO optimiser to enhance performance further. The outcomes demonstrated a substantial positive impact on the accuracy of both CNN models. Specifically, ResNet101 achieved 98.9% accuracy and Xception reached 99.2% accuracy. In the accuracy breakdown, ResNet101 achieved 97.6% accuracy and Xception achieved 98.3% accuracy in the first stage, compared to 87.4% for Xception and 83.1% for ResNet101 before optimisation. Given that this approach achieves over 99% accuracy in detecting cracks on concrete surfaces, it offers a significant improvement in the efficiency and cost-effectiveness of structural health surveys for large buildings. Furthermore, it provides structural engineers with precise data to accurately determine and implement the required maintenance actions.
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来源期刊
CiteScore
7.40
自引率
1.20%
发文量
31
审稿时长
22 days
期刊介绍: Developments in the Built Environment (DIBE) is a recently established peer-reviewed gold open access journal, ensuring that all accepted articles are permanently and freely accessible. Focused on civil engineering and the built environment, DIBE publishes original papers and short communications. Encompassing topics such as construction materials and building sustainability, the journal adopts a holistic approach with the aim of benefiting the community.
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