Department of Civil and Environmental Engineering, Western University, London, ON N6A 3K7, Canada.
Department of Civil Engineering, IIT Roorkee, Roorkee 247667, India.
Sensors (Basel). 2022 Apr 15;22(8):3044. doi: 10.3390/s22083044.
Road condition monitoring (RCM) has been a demanding strategic research area in maintaining a large network of transport infrastructures. With advancements in computer vision and data mining techniques along with high computing resources, several innovative pavement distress evaluation systems have been developed in recent years. The majority of these technologies employ next-generation distributed sensors and vision-based artificial intelligence (AI) methodologies to evaluate, classify and localize pavement distresses using the measured data. This paper presents an exhaustive and systematic literature review of these technologies in RCM that have been published from 2017-2022 by utilizing next-generation sensors, including contact and noncontact measurements. The various methodologies and innovative contributions of the existing literature reviewed in this paper, together with their limitations, promise a futuristic insight for researchers and transport infrastructure owners. The decisive role played by smart sensors and data acquisition platforms, such as smartphones, drones, vehicles integrated with non-intrusive sensors, such as RGB, and thermal cameras, lasers and GPR sensors in the performance of the system are also highlighted. In addition to sensing, a discussion on the prevalent challenges in the development of AI technologies as well as potential areas for further exploration paves the way for an all-inclusive and well-directed futuristic research on RCM.
道路状况监测(RCM)一直是维护大型交通基础设施网络的一个具有挑战性的战略研究领域。随着计算机视觉和数据挖掘技术的进步以及高计算资源的出现,近年来已经开发出了几种创新的路面损坏评估系统。这些技术中的大多数都采用了下一代分布式传感器和基于视觉的人工智能(AI)方法,利用测量数据来评估、分类和定位路面损坏。本文利用下一代传感器(包括接触式和非接触式测量),对 2017 年至 2022 年期间发表的 RCM 中的这些技术进行了全面系统的文献综述。本文综述了现有文献中的各种方法和创新贡献,以及它们的局限性,为研究人员和交通基础设施所有者提供了未来的展望。智能传感器和数据采集平台(如智能手机、无人机、集成非侵入式传感器(如 RGB 和热像仪)的车辆、激光和 GPR 传感器)在系统性能中起着决定性的作用,这一点也得到了强调。除了传感之外,本文还讨论了 AI 技术发展中的普遍挑战以及进一步探索的潜在领域,为 RCM 的全面和有针对性的未来研究铺平了道路。