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首页> 外文期刊>Metrology and Measurement Systems: Metrologia i Systemy Pomiarowe >ECONOMICAL METHODS FOR MEASURING ROAD SURFACE ROUGHNESS
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ECONOMICAL METHODS FOR MEASURING ROAD SURFACE ROUGHNESS

机译:路面粗糙度测量的经济方法

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Two low-cost methods of estimating the road surface condition are presented in the paper, the first one based on the use of accelerometers and the other on the analysis of images acquired from cameras installed in a vehicle. In the first method, miniature positioning and accelerometer sensors are used for evaluation of the road surface roughness. The device designed for installation in vehicles is composed of a GPS receiver and a multi-axis accelerometer. The measurement data were collected from recorded ride sessions taken place on diversified road surface roughness conditions and at varied vehicle speeds on each of examined road sections. The data were gathered for various vehicle body types and afterwards successful attempts were made in constructing the road surface classification employing the created algorithm. In turn, in the video method, a set of algorithms processing images from a depth camera and RGB cameras were created. A representative sample of the material to be analysed was obtained and a neural network model for classification of road defects was trained. The research has shown high effectiveness of applying the digital image processing to rejection of images of undamaged surface, exceeding 80%. Average effectiveness of identification of road defects amounted to 70%. The paper presents the methods of collecting and processing the data related to surface damage as well as the results of analyses and conclusions.
机译:本文介绍了两种估计道路表面条件的低成本方法,首先基于加速度计的第一个,另一个基于从安装在车辆中的摄像机获取的图像的分析。在第一方法中,微型定位和加速度计传感器用于评估路面粗糙度。设计用于车辆的设备由GPS接收器和多轴加速度计组成。从录制的乘坐会议中收集测量数据,在多元化的道路表面粗糙度条件下以及每个检查的路段上的不同车辆速度。为各种车身类型的数据收集了数据,然后在建造采用所创建的算法的道路表面分类方面取得成功尝试。反过来,在视频方法中,创建了来自深度相机和RGB摄像机的一组算法。获得了待分析材料的代表性样品,培训了用于公路缺陷的分类的神经网络模型。该研究表明,将数字图像处理应用于拒绝未损坏的表面的图像,超过80%。公路缺陷的平均有效性达到70%。本文介绍了收集和处理与表面损坏相关的数据以及分析结果和结论的方法。

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