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Image Processing-Based Pitting Corrosion Detection Using Metaheuristic Optimized Multilevel Image Thresholding and Machine-Learning Approaches

机译:基于图像处理的点蚀腐蚀检测,使用Metaheuristic优化的多级图像阈值和机器学习方法

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Pitting corrosion can lead to critical failures of infrastructure elements. Therefore, accurate detection of corroded areas is crucial during the phase of structural health monitoring. This study aims at developing a computer vision and data-driven method for automatic detection of pitting corrosion. The proposed method is an integration of the history-based adaptive differential evolution with linear population size reduction (LSHADE), image processing techniques, and the support vector machine (SVM). The implementation of the LSHADE metaheuristic in this research is multifold. This optimization algorithm is employed in the task of multilevel image thresholding to extract regions of interest from the metal surface. Image texture analysis methods of statistical measurements of color channels, gray-level co-occurrence matrix, and local binary pattern are used to compute numerical features subsequently employed by the SVM-based pattern recognition phase. In addition, the LSHADE metaheuristic is also used to optimize the hyperparameters of the machine-learning approach. Experimental results supported by statistical test points out that the newly developed approach can attain a good predictive result with classification accurate rate?=?91.80%, precision?=?0.91, recall?=?0.94, negative predictive value?=?0.93, and F1 score?=?0.92. Thus, the newly developed method can be a promising tool to be used in a periodic structural health survey.
机译:点腐蚀可能导致基础设施元素的关键失败。因此,在结构健康监测的阶段期间,精确地检测腐蚀区域至关重要。本研究旨在开发一种计算机视觉和数据驱动方法,用于自动检测点蚀腐蚀。所提出的方法是基于历史的自适应差分演进的集成,具有线性群体尺寸减小(LSHADE),图像处理技术和支持向量机(SVM)。在这项研究中实施LSHADE Metaheuristic是多重的。这种优化算法用于多级图像阈值的任务,以从金属表面提取感兴趣的区域。图像纹理分析彩色通道统计测量方法,灰度级共出矩阵和局部二进制模式用于计算随后基于SVM的模式识别阶段使用的数值特征。此外,LSHADE Metaheuristic也用于优化机器学习方法的普遍开心。统计测试支持的实验结果指出,新开发的方法可以获得良好的预测结果,分类准确率达到良好的预测结果?=?91.80%,精度?=?0.91,召回?=?0.94,负预测值?=?0.93,和F1得分?=?0.92。因此,新开发的方法可以是在周期性结构健康调查中使用的有希望的工具。

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