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Image processing based automatic recognition of asphalt pavement patch using a metaheuristic optimized machine learning approach

机译:基于图像处理的元启发式优化机器学习方法自动识别沥青路面修补

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摘要

Patch detection is an important task in pavement condition survey. This study establishes an automatic approach for asphalt pavement patch recognition based on image texture analysis and hybrid machine learning algorithms. Features based on image texture that employs statistical properties of color channels and the gray-scale co-occurrence matrix are used by the Least Squares Support Vector Machine (LSSVM) for discriminating patched areas from non-patch ones. In addition, to optimize the LSSVM training phase, the Differential Flower Pollination (DFP) metaheuristic is used. A data set constructed from a set of 1000 image samples has been utilized to train and verify the proposed integration of image texture analysis techniques, LSSVM, and DFP. Experimental results show that the new model can achieve a good prediction result with Classification Accuracy Rate = 95.30%, Positive Predictive Value = 0.96, and the Negative Predictive Value = 0.95. Additionally, a patch detection program has been developed and compiled in Visual C# .NET to ease the implementation of the hybrid model. Thus, the newly developed method can be a potential tool for traffic management agencies during the phase of pavement condition evaluation.
机译:斑块检测是路面状况调查中的重要任务。本研究建立了一种基于图像纹理分析和混合机器学习算法的自动识别沥青路面斑块的方法。最小二乘支持向量机(LSSVM)使用基于图像纹理的,利用色彩通道的统计特性和灰度共现矩阵的特征来区分修补区域和非修补区域。此外,为了优化LSSVM训练阶段,使用了差分花授粉(DFP)元启发法。由一组1000个图像样本构成的数据集已用于训练和验证图像纹理分析技术,LSSVM和DFP的建议集成。实验结果表明,新模型分类精度为95.30%,正预测值为0.96,负预测值为0.95,具有良好的预测效果。此外,已经开发了补丁检测程序并在Visual C#.NET中进行了编译,以简化混合模型的实现。因此,在路面状况评估阶段,新开发的方法可以成为交通管理机构的潜在工具。

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