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Classification of Asphalt Pavement Cracks Using Laplacian Pyramid-Based Image Processing and a Hybrid Computational Approach

机译:基于拉普拉斯金字塔的图像处理和混合计算方法对沥青路面裂缝进行分类

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摘要

To improve the efficiency of the periodic surveys of the asphalt pavement condition, this study puts forward an intelligent method for automating the classification of pavement crack patterns. The new approach relies on image processing techniques and computational intelligence algorithms. The image processing techniques of Laplacian pyramid and projection integral are employed to extract numerical features from digital images. Least squares support vector machine (LSSVM) and Differential Flower Pollination (DFP) are the two computational intelligence algorithms that are employed to construct the crack classification model based on the extracted features. LSSVM is employed for data classification. In addition, the model construction phase of LSSVM requires a proper setting of the regularization and kernel function parameters. This study relies on DFP to fine-tune these two parameters of LSSVM. A dataset consisting of 500 image samples and five class labels of alligator crack, diagonal crack, longitudinal crack, no crack, and transverse crack has been collected to train and verify the established approach. The experimental results show that the Laplacian pyramid is really helpful to enhance the pavement images and reveal the crack patterns. Moreover, the hybridization of LSSVM and DFP, named as DFP-LSSVM, used with the Laplacian pyramid at the level 4 can help us to achieve the highest classification accuracy rate of 93.04%. Thus, the new hybrid approach of DFP-LSSVM is a promising tool to assist transportation agencies in the task of pavement condition surveying.
机译:为了提高沥青路面状况定期调查的效率,本研究提出了一种智能的方法来自动分类路面裂缝形态。新方法依赖于图像处理技术和计算智能算法。拉普拉斯金字塔和投影积分的图像处理技术用于从数字图像中提取数字特征。最小二乘支持向量机(LSSVM)和微分花粉授粉(DFP)是两种计算智能算法,用于基于提取的特征构造裂纹分类模型。 LSSVM用于数据分类。另外,LSSVM的模型构建阶段需要正确设置正则化和内核函数参数。这项研究依靠DFP对LSSVM的这两个参数进行微调。已收集了一个由500个图像样本和5个类别的鳄鱼裂纹,对角裂纹,纵向裂纹,无裂纹和横向裂纹组成的数据集,以训练和验证所建立的方法。实验结果表明,拉普拉斯金字塔确实有助于增强路面图像并揭示裂缝图案。此外,将LSSVM和DFP混合使用,称为DFP-LSSVM,将其与4级的拉普拉斯金字塔配合使用,可以帮助我们实现93.04%的最高分类准确率。因此,DFP-LSSVM的新混合方法是一种有前途的工具,可协助运输机构完成路面状况调查任务。

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