使用车载内置摄像头和GPS传感器进行路况监测:一种深度学习方法

Cuthbert Ruseruka, Judith Mwakalonge, G. Comert, Saidi Siuhi, Judy Perkins
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引用次数: 1

摘要

世界各地的道路管理部门可以利用车辆技术的进步,持续监测道路状况,最大限度地降低道路维护成本。进行道路状况调查的现有方法包括由合格人员使用标准调查表格进行人工观察。这些方法昂贵、耗时、不频繁,而且很难提供实时信息。一些自动化方法也存在,但非常昂贵,因为它们需要配备计算设备和传感器的特殊车辆来收集和处理数据。这项研究旨在利用先进的车辆技术,提供一种廉价和实时的方法来进行道路状况监测(RCM)。本研究使用You Only Look Once, Version 5 (YOLOv5)算法开发了一个深度学习模型,该模型经过训练,可以捕捉和分类柔性路面破损(FPD),准确率达到95%,召回率为93.4%,平均平均精度为97.2%。使用车载内置摄像头和GPS传感器,检测到这些遇险,捕获图像并记录位置。在校园道路和停车场上,使用了一辆内置摄像头和GPS的汽车进行了验证。这些车辆的内置技术提供了一种更具成本效益和效率的路况监测方法,还可以提供实时路况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Road Condition Monitoring Using Vehicle Built-in Cameras and GPS Sensors: A Deep Learning Approach
Road authorities worldwide can leverage the advances in vehicle technology by continuously monitoring their roads’ conditions to minimize road maintenance costs. The existing methods for carrying out road condition surveys involve manual observations using standard survey forms, performed by qualified personnel. These methods are expensive, time-consuming, infrequent, and can hardly provide real-time information. Some automated approaches also exist but are very expensive since they require special vehicles equipped with computing devices and sensors for data collection and processing. This research aims to leverage the advances in vehicle technology in providing a cheap and real-time approach to carry out road condition monitoring (RCM). This study developed a deep learning model using the You Only Look Once, Version 5 (YOLOv5) algorithm that was trained to capture and categorize flexible pavement distresses (FPD) and reached 95% precision, 93.4% recall, and 97.2% mean Average Precision. Using vehicle built-in cameras and GPS sensors, these distresses were detected, images were captured, and locations were recorded. This was validated on campus roads and parking lots using a car featured with a built-in camera and GPS. The vehicles’ built-in technologies provided a more cost-effective and efficient road condition monitoring approach that could also provide real-time road conditions.
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