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Deep machine learning approach to develop a new asphalt pavement condition index

机译:深度机器学习方法开发新的沥青路面条件指标

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Pavement condition assessment provides information to make more cost-effective and consistent decisions regarding management of pavement network. Generally, pavement distress inspections are performed using sophisticated data collection vehicles and/or foot-on-ground surveys. In either approach, the process of distress detection is human-dependent, expensive, inefficient, and/or unsafe. Automated pavement distress detection via road images is still a challenging issue among pavement researchers and computer-vision community. In recent years, advancement in deep learning has enabled researchers to develop robust tools for analyzing pavement images at unprecedented accuracies. Nevertheless, deep learning models necessitate a big ground truth dataset, which is often not readily accessible for pavement field. In this study, we reviewed our previous study, which a labeled pavement dataset was presented as the first step towards a more robust, easy-to-deploy pavement condition assessment system. In total, 7237 google street-view images were extracted, manually annotated for classification (nine categories of distress classes). Afterward, YOLO (you look only once) deep learning framework was implemented to train the model using the labeled dataset. In the current study, a U-net based model is developed to quantify the severity of the distresses, and finally, a hybrid model is developed by integrating the YOLO and U-net model to classify the distresses and quantify their severity simultaneously. Various pavement condition indices are developed by implementing various machine learning algorithms using the YOLO deep learning framework for distress classification and U-net for segmentation and distress densification. The output of the distress classification and segmentation models are used to develop a comprehensive pavement condition tool which rates each pavement image according to the type and severity of distress extracted. As a result, we are able to avoid over-dependence on human judgement throughout the pavement condition evaluation process. The outcome of this study could be conveniently employed to evaluate the pavement conditions during its service life and help to make valid decisions for rehabilitation or reconstruction of the roads at the right time. (C) 2020 Elsevier Ltd. All rights reserved.
机译:路面条件评估提供了有关人行道网络管理的更具成本效益和一致的决定的信息。通常,使用复杂的数据收集车辆和/或地面调查进行路面遇险检查。在任何一种方法中,遇险检测过程是人类依赖性,昂贵,低效和/或不安全的过程。通过道路图像自动化路面遇险检测仍然是路面研究人员和计算机愿景中的一个具有挑战性的问题。近年来,深度学习的进步使研究人员能够开发强大的工具,用于以前所未有的准确性分析路面图像。尽管如此,深度学习模型需要一个大地面实践数据集,这通常不易易于接地。在这项研究中,我们审查了我们以前的研究,其中一个标签的路面数据集作为迈向更强大,易于部署的路面条件评估系统的第一步。总共提取了7237谷歌街头视图图像,手动注释分类(九类遇险类)。之后,YOLO(您只看一次),实现了深入的学习框架来使用标记的数据集训练模型。在目前的研究中,开发了一种基于U-Net的模型来量化措施的严重程度,最后,通过集成YOLO和U-NET模型来分类疼痛并同时量化其严重程度来开发混合模型。各种路面条件指标是通过使用YOLO深度学习框架实现各种机器学习算法来开发的,用于遇险分类和U-NET进行分割和痛苦致密化。遇险分类和分段模型的输出用于开发一个综合路面条件工具,根据提取的遇险的类型和严重程度来利用每个路面图像。因此,我们能够避免在整个路面条件评估过程中过度依赖人类判断。本研究的结果可以方便地用于评估其使用寿命期间的路面条件,并有助于对正确时间进行康复或重建道路的有效决策。 (c)2020 elestvier有限公司保留所有权利。

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