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Automatic detection of asphalt pavement raveling using image texture based feature extraction and stochastic gradient descent logistic regression

机译:基于图像纹理的特征提取和随机梯度下降逻辑回归自动检测沥青路面争取

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摘要

Raveling is one of the critical and pervasive modes of failure observed in asphalt pavement road. Automatic detection of raveling based on image samples is a challenging task due to the complex texture of asphalt pavement. This study constructs and investigates the capability of an image processing based approach for raveling recognition. Image texture based features extracted from statistical properties of color channels and the Gray-Level Co-Occurrence Matrix are employed as input variables to characterize the state of pavement. The Stochastic Gradient Descent Logistic Regression (sGD-LR) is used to classify image samples into two categories of non-raveling and raveling based on a set of extracted features. A SGD-LR based raveling detection program has been developed in Visual C# .NET to facilitate its implementation. Experimental outcome shows that the newly constructed approach can attain a good predictive performance with a classification accuracy rate of roughly 88%. Therefore, this approach can be a helpful tool to assist transportation authorities in the task of surveying asphalt pavement condition.
机译:Raveling是沥青路面道路中观察到的危急和普遍性的失败模式之一。由于沥青路面的复杂质地,基于图像样本的螺旋自动检测是一个具有挑战性的任务。该研究构建并研究了基于图像处理的螺旋识别方法的能力。图像纹理从彩色通道的统计特性提取的基于特征,灰度级共发生矩阵被用作输入变量,以表征路面状态。随机梯度下降逻辑回归(SGD-LR)用于基于一组提取的特征将图像样本分为两类非革波和革波和革旧。基于SGD-LR基于VIST C#.NET开发的SGD-LR的争取检测程序,以促进其实现。实验结果表明,新构建的方法可以获得良好的预测性能,分类精度大约为88%。因此,这种方法可以是有用的工具,可以帮助运输当局在调查沥青路面状况的任务中。

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