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Automatic recognition of concrete spall using image processing and metaheuristic optimized LogitBoost classification tree

机译:自动识别混凝土逐步识别使用图像处理和Metaheuristic优化Logitboost分类树

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摘要

This paper presents a novel artificial intelligence model to automatically recognize concrete spall appearing on building components. The model is constructed by integrating a metaheuristic optimization algorithm, advanced image processing techniques, and a powerful machine learning-based inference model. Kapur's entropy based image segmentation, statistical measurements of image color, gray level co-occurrence matrices, and local ternary pattern are used to extract numerical features presenting concrete surfaces on spall and non-spall samples. Subsequently, a LogitBoost based ensemble framework of classification and regression tree (CART) models (denoted as LBT) is employed to construct a decision boundary capable of recognizing spall/non-spall image samples. Moreover, in order to enhance the performance of the LogitBoost based ensemble framework, forensic-based investigation (FBI) metaheuristic is utilized to determine the most suitable set of the framework's hyper-parameters including the learning rate (μ), the learning cycle (L_c), the minimum number of leaves (L_(min)), and the maximum number of splits (S_(max)). A data set including 486 image samples has been collected from field surveys at high-rise buildings in Da Nang city (Vietnam) to train and verify the proposed FBI optimized LBT model (denoted as F-LBT). Experimental results supported by statistical tests point out that the F-LBT is a capable method for concrete spall detection with a classification accuracy rate = 88.3%, precision = 0.889, recall = 0.874, F1 score = 0.881, and negative predictive value = 0.874. Hence, the proposed hybrid approach is a promising tool to support building maintenance agencies in the task of periodic structural inspection.
机译:本文提出了一种新颖的人工智能模型,可以自动识别出现在建筑组件上的混凝土赛中。该模型是通过集成成逐型优化算法,高级图像处理技术和基于强大的基于机器学习的推断模型来构建的模型。 KAPUR的基于熵的图像分割,图像颜色,灰度级共发生矩阵和局部三元图案的统计测量用于提取呈现壁和非锁定样品上的混凝土表面的数值特征。随后,采用基于LogitBoost的分类和回归树(推车)模型(表示为LBT)来构建能够识别Spall /非逐映像样本的决策边界。此外,为了提高基于LogitBoost的集合框架的性能,利用法医的研究(FBI)成群质雕刻来确定最合适的框架超参数集,包括学习率(μ),学习周期(L_c ),叶子的最小数量(l_(min))和最大分割数(s_(max))。包括486个图像样本的数据集已从Da Nang City(越南)的高层建筑物(越南)的田间调查中收集到培训和验证所提出的FBI优化LBT模型(表示为F-LBT)。统计测试支持的实验结果指出,F-LBT是一种具有分类精度率= 88.3%,精度= 0.889的混凝土突出检测方法,召回= 0.874,F1得分= 0.881,负预测值= 0.874。因此,拟议的混合方法是一个有前途的工具,可以支持在定期结构检查任务任务中的建设维护机构。

著录项

  • 来源
    《Advances in Engineering Software 》 |2021年第9期| 103031.1-103031.14| 共14页
  • 作者单位

    Dept. and Ins. of Civil Engineering and Environmental Informatics Minghsin University of Science and Technology No. 1 Xinxing Rd. Xinfeng Hsinchu 30401 Taiwan;

    Department of Civil and Construction Engineering National Taiwan University of Science and Technology No.43 Keelung Rd Sec.4 Da'an Dist Taipei 10607 Taiwan;

    Dept. and Ins. of Civil Engineering and Environmental Informatics Minghsin University of Science and Technology No. 1 Xinxing Rd. Xinfeng Hsinchu 30401 Taiwan;

    Institute of Research and Development Duy Tan University Da Nang 550000 Vietnam Faculty of Civil Engineering Duy Tan University Da Nang 550000 Vietnam;

    Institute of Research and Development Duy Tan University Da Nang 550000 Vietnam Faculty of Civil Engineering Duy Tan University Da Nang 550000 Vietnam;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Concrete spall detection; Building maintenance; Image processing; Forensic-based investigation; Classification tree; Ensemble learning;

    机译:混凝土突击检测;建筑维修;图像处理;基于法医的调查;分类树;合奏学习;

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