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An improved multifractal method for pavement cracks extraction

机译:一种改进的分形裂缝提取方法

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Purpose - This paper aims to provide an improved multifractal method to extract the pavement cracks in the complicated background. Furthermore, the pavement surface images with or without crack can also be distinguished by this method.rnDesign/methodology/approach - The framework of analyzing the image singularity is based on the sub-pixel multifractal measure (SPMM). Performing the SPMM can give the sub-pixel local distribution of the image gradient and a more precise singularity exponent distribution in the image. Meantime, using the singularity exponents and the most singular manifold (MSM), the image can be decomposed into a series of sets with different statistical and physical properties automatically and easily. One can extract the cracks according to the MSM.rnFindings - The example shows that the physical and geometrical properties of the pavement images can be obtained by analyzing the distribution of singularity exponents and the greatest singularity exponent. The simulation results show that the SPMM has higher quality factor in the image edge detection. And the MSM detected this way reflects the most important information of the image. Originality/value - Performing the SPMM can give a more precise singularity exponent distribution in the image.
机译:目的-本文旨在提供一种改进的多重分形方法,以提取复杂背景下的路面裂缝。此外,该方法还可以区分有无裂缝的路面表面图像。设计/方法/方法-分析图像奇异性的框架基于亚像素多重分形度量(SPMM)。执行SPMM可以给出图像梯度的子像素局部分布和图像中更精确的奇异指数分布。同时,使用奇异指数和最奇异流形(MSM),可以将图像自动轻松地分解为一系列具有不同统计和物理属性的集合。人们可以根据MSM.rnFindings提取裂缝-该示例表明,可以通过分析奇异指数和最大奇异指数来获得路面图像的物理和几何特性。仿真结果表明,SPMM在图像边缘检测中具有较高的品质因数。 MSM检测到的这种方式反映了图像的最重要信息。创意/价值-执行SPMM可以在图像中提供更精确的奇异指数分布。

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