A Review of Artificial Intelligence Techniques used for Urban Automatic Incident Detection Systems

H. Samia, Dennai Abdeslem
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引用次数: 3

Abstract

Over the past decades, tremendous research efforts have been proposed to deploy Automatic Incident Detection Systems (AIDSs) onto urban roads. As a result, new challenges to the research community have been introduced to enhance the AIDS performances. To overcome these challenges, and to improve the efficiency and safety of road traffic, attention has been drawn to use Artificial Intelligence (AI) techniques as a solution. However, choosing appropriate AI technologies to process real-time traffic data is an area that needs spotlighting. The aim of this paper is to discuss recent advancements in urban AIDSs based on AI techniques. We carried out a review for twelve previous AIDS study proposed since 2009. We compared these AIDSs in term of traffic data sources, input variables, and type of incident. Also, a comparison of simulators, techniques and the evaluation metrics has been used. The results indicated that hybrid AI techniques reported the best detection performances. In this context, fixed or fusion data sources were also given good results compared to others. This review shows reliable results of AI classification techniques applied in AIDS approaches. This finding urges to continue improve the performances of the proposed AI techniques. In future research, testing others AI techniques with smart technologies may increase the incident detection efficiency.
人工智能技术在城市事件自动检测系统中的应用综述
在过去的几十年里,在城市道路上部署自动事故检测系统(aids)的研究已经进行了大量的工作。因此,为提高艾滋病防治工作成绩,对研究界提出了新的挑战。为了克服这些挑战,提高道路交通的效率和安全性,人们已经注意到使用人工智能(AI)技术作为解决方案。然而,选择合适的人工智能技术来处理实时交通数据是一个需要关注的领域。本文的目的是讨论基于人工智能技术的城市艾滋病防治的最新进展。我们对2009年以来提出的12项艾滋病研究进行了回顾。我们根据交通数据源、输入变量和事件类型对这些aids进行了比较。此外,还对模拟器、技术和评估指标进行了比较。结果表明,混合人工智能技术报告了最好的检测性能。在这种情况下,与其他数据源相比,固定或融合数据源也获得了良好的结果。这篇综述显示了人工智能分类技术在艾滋病方法中应用的可靠结果。这一发现促使我们继续改进所提出的人工智能技术的性能。在未来的研究中,用智能技术测试其他人工智能技术可能会提高事件检测效率。
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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