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An improved image segmentation algorithm and measurement methods for asphalt mixtures

机译:一种改进的沥青混合料图像分割算法和测量方法

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Asphalt mixture is the most widely used pavement materials over the world, whose microstructure always plays an important role in construction which can be measured or studied by image analysis conveniently. However, there is no reliable segmentation or standard measurement for asphalt mixture images which blocks further researches. An improved multilevel threshold algorithm via Kapur entropy based on shuffled frog leaping algorithm is proposed which can appropriately solve the hot asphalt mixture images' segmentation problem. In comparison with traditional methods, the experiments of segmenting images are illustrated to show that the proposed method can get ideal segmentation result with less computation cost using the shuffled frog leaping algorithm. A device that can capture the asphalt mixture's standard images objective and quantitative the asphalt mixture microstructure indexes after segmentation are also proposed which can be a novel measurement of asphalt mixture in applications.
机译:沥青混合料是世界上使用最广泛的路面材料,其微观结构始终在建筑中起着重要作用,可以通过图像分析方便地进行测量或研究。但是,目前尚无可靠的沥青混合料图像分割或标准测量方法,这阻碍了进一步的研究。提出了一种基于Kapur熵的改进蛙跳算法的多级阈值算法,可以较好地解决热沥青混合料图像的分割问题。通过与传统方法的比较,说明了分割图像的实验结果,表明该方法利用改组蛙跳算法可以得到较理想的分割结果,且计算量较小。提出了一种能够客观地捕获沥青混合料标准图像,定量分割后定量沥青混合料微观结构指标的装置,可以作为沥青混合料在应用中的一种新型测量方法。

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