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A Novel Approach for Automatic Detection of Concrete Surface Voids Using Image Texture Analysis and History-Based Adaptive Differential Evolution Optimized Support Vector Machine

机译:一种新颖的自动检测混凝土表面空隙的方法,使用图像纹理分析和基于历史的自适应差分进化优化支持向量机

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To inspect the quality of concrete structures, surface voids or bugholes existing on a concrete surface after the casting process needs to be detected. To improve the productivity of the inspection work, this study develops a hybrid intelligence approach that combines image texture analysis, machine learning, and metaheuristic optimization. Image texture computations employ the Gabor filter and gray-level run lengths to characterize the condition of a concrete surface. Based on features of image texture, Support Vector Machines (SVM) establish a decision boundary that separates collected image samples into two categories of no surface void (negative class) and surface void (positive class). Furthermore, to assist the SVM model training phase, the state-of-the-art history-based adaptive differential evolution with linear population size reduction (L-SHADE) is utilized. The hybrid intelligence approach, named as L-SHADE-SVM-SVD, has been developed and complied in Visual C#.NET framework. Experiments with 1000 image samples show that the L-SHADE-SVM-SVD can obtain a high prediction accuracy of roughly 93%. Therefore, the newly developed model can be a promising alternative for construction inspectors in concrete quality assessment.
机译:要在需要检测到铸造过程后,检查混凝土结构的质量,在混凝土表面上存在的表面空隙或Bugholes。为了提高检验工作的生产力,本研究开发了一种混合智能方法,将图像纹理分析,机器学习和成群质优化结合在一起。图像纹理计算采用Gabor滤波器和灰度级运行长度,以表征混凝土表面的条件。基于图像纹理的特征,支持向量机(SVM)建立一个决策边界,将收集的图像样本分为两类没有表面空隙(负类)和表面空隙(正类)。此外,为了帮助SVM模型训练阶段,利用具有线性群体尺寸减少(L-SHADE)的最先进的基于历史的自适应差分演进。已经开发出并遵守名为L-Shade-SVM-SVD的混合智能方法,并遵守Visual C#.NET Framework。具有1000个图像样本的实验表明,L-SHADE-SVM-SVD可以获得大约93%的高预测精度。因此,新开发的模型可以是具体质量评估中的建筑检查员的有希望的替代品。

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