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Pavement crack classification via spatial distribution features

机译:通过空间分布特征对路面裂缝进行分类

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摘要

Pavement crack types provide important information for making pavement maintenance strategies. This paper proposes an automatic pavement crack classification approach, exploiting the spatial distribution features (i.e., direction feature and density feature) of the cracks under a neural network model. In this approach, a direction coding (D-Coding) algorithm is presented to encode the crack subsections and extract the direction features, and a Delaunay Triangulation technique is employed to analyze the crack region structure and extract the density features. As regarding skeletonized crack sections rather than crack pixels, the spatial distribution features hold considerable feature significance for each type of cracks. Empirical study indicates a classification precision of over 98 of the proposed approach.
机译:路面裂缝类型为制定路面养护策略提供了重要信息。本文提出了一种自动路面裂缝分类方法,该方法利用了神经网络模型下裂缝的空间分布特征(即方向特征和密度特征)。在这种方法中,提出了一种方向编码(D-Coding)算法来对裂纹分段进行编码并提取方向特征,并采用Delaunay三角剖分技术来分析裂纹区域结构并提取密度特征。关于骨架化的裂纹截面而不是裂纹像素,空间分布特征对于每种类型的裂纹都具有相当大的特征意义。实证研究表明,该方法的分类精度超过98。

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