An Innovative Dense ResU-Net Architecture With T-Max-Avg Pooling for Advanced Crack Detection in Concrete Structures

Ali Sarhadi;Mehdi Ravanshadnia;Armin Monirabbasi;Milad Ghanbari
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Abstract

Computer vision which uses Convolutional Neural Network (CNN) models is a robust and accurate tool for precise monitoring and pixel-level detection of potential damage in concrete structures. Using a state-of-the-art Dense ResU-Net model integrated with T-Max-Avg pooling layers, the present study introduces a novel and effective method for crack detection in concrete structures. The major innovation of this research is the introduction of the T-Max-Avg pooling layer within the Dense ResU-Net architecture which synergistically combines the strengths of both max and average pooling to improve feature retention and minimize information loss during crack detection. In addition, the incorporation of Residual and Dense blocks within the U-Net framework significantly enhances feature extraction and network depth, resulting in a more robust anomaly detection. The implementation of extensive data augmentation techniques improves the robustness of the model while the application of spatial dropout and L2 regularization techniques prevents overfitting. The proposed model showed a superior performance, outperforming traditional and state-of-the-art models. It had a Dice Coefficient score of 97.41%, an Intersection-over-Union (IoU) score of 98.63%, and an accuracy of 99.2% using a batch size of 32. These results confirmed the reliability and efficacy of the Dense ResU-Net with T-Max-Avg pooling layer for accurate crack detection, demonstrating its potential for real-world applications in structural health monitoring. By taking advantage of advanced deep learning techniques, the proposed method addressed the limitations of traditional crack detection techniques and offered significant improvements in robustness and accuracy.
采用 T-Max-Avg 池的创新型密集 ResU-Net 架构,用于混凝土结构中的高级裂缝检测
使用卷积神经网络(CNN)模型的计算机视觉是一种强大而精确的工具,可用于精确监测和像素级检测混凝土结构中潜在的损坏。本研究利用集成了 T-Max-Avg 池层的最先进的密集 ResU-Net 模型,介绍了一种新颖有效的混凝土结构裂缝检测方法。这项研究的主要创新点是在 Dense ResU-Net 架构中引入了 T-Max-Avg 池层,它协同结合了最大池层和平均池层的优势,在裂缝检测过程中提高了特征保留率并最大限度地减少了信息丢失。此外,在 U-Net 框架中加入残差块和密集块可显著增强特征提取和网络深度,从而实现更稳健的异常检测。大量数据增强技术的应用提高了模型的鲁棒性,而空间剔除和 L2 正则化技术的应用则防止了过拟合。所提出的模型性能优越,超过了传统模型和最先进的模型。它的骰子系数(Dice Coefficient)得分率为 97.41%,联合交叉(Intersection-over-Union,IoU)得分率为 98.63%,在批量规模为 32 的情况下,准确率为 99.2%。这些结果证实了带有 T-Max-Avg 池层的密集 ResU-Net 在准确检测裂缝方面的可靠性和有效性,证明了其在结构健康监测领域的实际应用潜力。通过利用先进的深度学习技术,所提出的方法解决了传统裂缝检测技术的局限性,并在鲁棒性和准确性方面取得了显著改进。
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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CiteScore
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