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Application of perceptual image coding and the neural network method in predicting the optimum Asphalt binder content of open-graded friction course mixtures

机译:感知图像编码和神经网络方法在预测开放级摩擦层混合物最佳沥青结合料含量中的应用

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Florida Department of Transportation (FDOT) designs open-graded friction course (OGFC) mixtures using a pie plate visual draindown method (FM 5-588). In this method, the optimum asphalt binder content (OBC) is determined based on visual assessment of the superficial asphalt binder draindown (SABD) distribution of three OGFC samples placed in pie plates with pre-determined asphalt binder contents (AC). In order to eliminate the human subjectivity involved in the current visual method, an automated method for quantifying the OBC of OGFC mixtures is developed using digital images of the pie plates and concepts of perceptual image coding and neural networks. Phase I involved the FM-5-588-based OBC testing of OGFC mixture designs consisting of a large set of samples prepared from a variety of granitic and oolitic limestone aggregate sources used by FDOT. Then the digital images of the pie plates containing samples of the above mixtures were acquired using an imaging setup customised by FDOT. The correlation between relevant digital imaging parameters and the corresponding AC was investigated initially using conventional regression analysis. Phase II involved the development of a perceptual image model using human perception metrics considered to be used in the OBC estimation. A General Regression Neural Network (GRNN) was used to uncover the nonlinear correlation between the selected parameters of pie plate images, the corresponding ACs and the visually estimated OBC. GRNN was found to be the most viable method to deal with the multi-dimensional nature of the input test data set originating from each individual OGFC sample that contains AC and imaging parameter information from a set of three pie plates. GRNN was trained by a major part of the database completed in Phase I. Finally, the prediction results from an independent part of the above database demonstrated that the GRNN model provides satisfactory estimations of OBC.
机译:佛罗里达运输部(FDOT)使用扇形板视觉排水方法(FM 5-588)设计开放级摩擦过程(OGFC)混合物。在这种方法中,最佳的沥青粘合剂含量(OBC)是基于对三个预先放置有预定沥青粘合剂含量(O)的OGFC样品的表面沥青粘合剂排泄量(SABD)分布的视觉评估而确定的。为了消除当前视觉方法中涉及的人类主观性,开发了一种自动化的方法,该方法使用饼形图的数字图像以及感知图像编码和神经网络的概念来量化OGFC混合物的OBC。第一阶段涉及OGFC混合物设计的基于FM-5-588的OBC测试,该测试由从FDOT使用的各种花岗岩和橄榄石石灰石骨料来源制备的大量样品组成。然后,使用FDOT定制的成像设置获取包含上述混合物样品的饼盘的数字图像。最初使用常规回归分析研究了相关数字成像参数与相应AC之间的相关性。第二阶段涉及使用被认为用于OBC估计的人类感知指标开发感知图像模型。使用通用回归神经网络(GRNN)揭示了饼图图像的选定参数,相应的AC和视觉估计的OBC之间的非线性相关性。发现GRNN是处理输入测试数据集多维性质的最可行方法,该输入测试数据集源自每个单独的OGFC样本,其中包含AC和来自一组三个饼图的成像参数信息。 GRNN由第一阶段完成的数据库的主要部分训练。最​​后,来自上述数据库的独立部分的预测结果表明GRNN模型提供了令人满意的OBC估计。

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