道路异常检测方法综述

Rasha Saffarini, Faisal Khamayseh, Yousef Awwad Daraghmi, Derar Elyan, Muath Sabha
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引用次数: 0

摘要

由于自动道路异常检测和识别系统对驾驶员和乘客的舒适性和安全性的影响,它是必不可少的。驾驶员应意识到路况恶劣和路线中存在异常情况,以避免发生事故,减少汽车故障的可能性,并采取最合适的路线到达目的地。这增加了对自动检测和识别道路异常的研究兴趣。相关研究可分为基于加速度计的技术和基于视觉的技术。在这两种技术中,都使用了深度学习和数学方法。本文综述了异常检测与分类领域的最新研究进展。讨论了几种类型的道路异常,如坑洼、裂缝和减速带。此外,道路损伤检测技术用于不同类型的道路异常、挑战和当前研究的局限性。
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Survey of road anomalies detection methods
Automatic road anomaly detection and recognition systems are essential due to their effect on the comfort and safety of drivers and passengers. Drivers should be aware of bad road conditions and the existence of anomalies in routes to avoid accidents, reduce the possibility of car malfunction, and take the most appropriate route to their destinations. This led to increased research interest in automatically detecting and recognising road anomalies. The related studies can be categorised into accelerometer-based techniques and vision-based techniques. In both techniques, deep learning and mathematical methods have been utilised. This paper reviews the latest research in the anomaly detection and classification field. Several types of road anomalies are discussed, such as potholes, cracks, and speed bumps. Additionally, road damage detection techniques are used for different types of road anomalies, challenges, and limitations of current research.
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来源期刊
CiteScore
1.30
自引率
0.00%
发文量
11
期刊介绍: Intelligent systems refer broadly to computer embedded or controlled systems, machines and devices that possess a certain degree of intelligence. IJISTA, a peer-reviewed double-blind refereed journal, publishes original papers featuring innovative and practical technologies related to the design and development of intelligent systems. Its coverage also includes papers on intelligent systems applications in areas such as manufacturing, bioengineering, agriculture, services, home automation and appliances, medical robots and robotic rehabilitations, space exploration, etc. Topics covered include: -Robotics and mechatronics technologies- Artificial intelligence and knowledge based systems technologies- Real-time computing and its algorithms- Embedded systems technologies- Actuators and sensors- Mico/nano technologies- Sensing and multiple sensor fusion- Machine vision, image processing, pattern recognition and speech recognition and synthesis- Motion/force sensing and control- Intelligent product design, configuration and evaluation- Real time learning and machine behaviours- Fault detection, fault analysis and diagnostics- Digital communications and mobile computing- CAD and object oriented simulations.
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