基于对立的白鲨优化器优化改进的EfficientNetV2道路裂缝分类

Mohammed Al-Shalabi;Mohammed A. Mahdi;Malik Braik;Mohammed Azmi Al-Betar;Shahanawaj Ahamad;Sawsan A. Saad
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引用次数: 0

摘要

维持可靠和持久的道路基础设施需要准确识别和管理路面裂缝,因为这些裂缝会随着时间的推移显著削弱沥青和混凝土表面。虽然卷积神经网络(cnn)和元启发式算法在解决现实问题方面已经被证明是有效的,但它们在低对比度路面裂缝图像中的应用值得研究。本研究提出了一个集成了三个关键组件的自动裂缝检测框架:(1)一种预训练CNN架构的新变体,称为改进的高效netv2 (MEfficientNetV2),用于路面裂缝分类;(2)将基于对立的学习与白鲨优化器(White Shark Optimizer, WSO)相结合,即对立WSO (Opposition WSO, OWSO),以改善探索与开发之间的平衡;(3)主成分分析(PCA)进行有效的降维和特征选择。该方法在包含低对比度自然图像的各种公开可用的沥青裂缝数据集上进行了验证。首先采用预处理技术消除噪声,提高图像质量。然后集成OWSO算法来优化MEfficientNetV2的分类性能,而PCA通过保留不同组件阈值中的关键特征来加速学习过程。与最先进的方法进行比较评估表明,所提出的模型在精度、鲁棒性和通用性方面表现出色。结果强调了其在实际场景中识别最有效的裂纹检测解决方案的能力,其中基于pca的特征选择在不影响性能的情况下提高了计算效率。本研究的重点是混合深度学习和仿生优化策略的潜力,以改善自动路面维护系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Opposition-Based White Shark Optimizer for Optimizing Modified EfficientNetV2 in Road Crack Classification
Maintaining reliable and long-lasting road infrastructure requires accurate identification and management of pavement cracks, as these cracks can significantly weaken asphalt and concrete surfaces over time. Although Convolutional Neural Networks (CNNs) and meta-heuristic algorithms have proven effective in solving real-world problems, their use in low-contrast pavement crack images is worth investigating. This study proposes an automated crack detection framework that integrates three key components: (1) a new variant of a pre-trained CNN architecture, referred to as Modified EfficientNetV2 (MEfficientNetV2) for pavement crack classification; (2) a combination of opposition-based learning with White Shark Optimizer (WSO), known as Opposition WSO (OWSO), to improve the balance between exploration and exploitation; and (3) Principal Component Analysis (PCA) for efficient dimensionality reduction and feature selection. This method is validated on various publicly available asphalt crack datasets that contain low-contrast natural images. Preprocessing techniques are first applied to eliminate noise and enhance image quality. The OWSO algorithm is then integrated to optimize the classification performance of MEfficientNetV2, while PCA accelerates the learning process by retaining critical features in the thresholds of the varying components. Comparative evaluations with state-of-the-art methods demonstrate that the proposed model excels in terms of precision, robustness, and generalizability. The outcome emphasizes its ability to identify the most effective solution for crack detection in practical scenarios, where PCA-based feature selection improves computational efficiency without compromising performance. This study focuses on the potential of hybrid deep learning and bio-inspired optimization strategies to improve automated pavement maintenance systems.
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CiteScore
12.60
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