Intelligent pavement condition survey: Overview of current researches and practices

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引用次数: 0

Abstract

Automated pavement condition survey is of critical importance to road network management. There are three primary tasks involved in pavement condition surveys, namely data collection, data processing and condition evaluation. Artificial intelligence (AI) has achieved many breakthroughs in almost every aspect of modern technology over the past decade, and undoubtedly offers a more robust approach to automated pavement condition survey. This article aims to provide a comprehensive review on data collection systems, data processing algorithms and condition evaluation methods proposed between 2010 and 2023 for intelligent pavement condition survey. In particular, the data collection system includes AI-driven hardware devices and automated pavement data collection vehicles. The AI-driven hardware devices including right-of-way (ROW) cameras, ground penetrating radar (GPR) devices, light detection and ranging (LiDAR) devices, and advanced laser imaging systems, etc. These different hardware components can be selectively mounted on a vehicle to simultaneously collect multimedia information about the pavement. In addition, this article pays close attention to the application of artificial intelligence methods in detecting pavement distresses, measuring pavement roughness, identifying pavement rutting, analyzing skid resistance and evaluating structural strength of pavements. Based upon the analysis of a variety of the state-of-the-art artificial intelligence methodologies, remaining challenges and future needs with respect to intelligent pavement condition survey are discussed eventually.

智能路面状况调查:当前研究与实践概述
自动路面状况调查对路网管理至关重要。路面状况调查涉及三项主要任务,即数据收集、数据处理和状况评估。人工智能(AI)在过去十年中几乎在现代技术的各个方面都取得了许多突破,无疑为路面状况自动调查提供了一种更强大的方法。本文旨在对 2010 年至 2023 年间提出的智能路面状况调查的数据采集系统、数据处理算法和状况评估方法进行全面评述。其中,数据采集系统包括人工智能驱动的硬件设备和自动路面数据采集车。人工智能驱动的硬件设备包括路权(ROW)摄像机、地面穿透雷达(GPR)设备、光探测和测距(LiDAR)设备以及先进的激光成像系统等。这些不同的硬件组件可选择性地安装在车辆上,以同时收集路面的多媒体信息。此外,本文还密切关注人工智能方法在检测路面病害、测量路面粗糙度、识别路面车辙、分析抗滑性和评估路面结构强度方面的应用。在对各种最先进的人工智能方法进行分析的基础上,最终讨论了智能路面状况调查方面仍然存在的挑战和未来的需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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