A review on action recognition for accident detection in smart city transportation systems

Victor A. Adewopo, Nelly Elsayed, Zag ElSayed, Murat Ozer, Ahmed Abdelgawad, Magdy Bayoumi
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引用次数: 9

Abstract

Accident detection and public traffic safety is a crucial aspect of safe and better community. Monitoring traffic flow in smart cities using different surveillance cameras plays a crucial role in recognizing accidents and alerting first responders. In computer vision tasks, utilizing action recognition (AR) has contributed to high-precision video surveillance, medical imaging, and digital signal processing applications. This paper presents an intensive review focusing on action recognition in accident detection and autonomous transportation systems for smart city. This paper focused on AR systems that use diverse sources of traffic video, such as static surveillance cameras on traffic intersections, highway monitoring cameras, drone cameras, and dash-cams. Through this review, we identified the primary techniques, taxonomies, and algorithms used in AR for autonomous transportation and accident detection. We also examined datasets utilized in the AR tasks, identifying the primary sources of datasets and features of the datasets. This paper provides a potential research direction to develop and integrate accident detection systems for autonomous cars and public traffic safety systems by alerting emergency personnel and law enforcement in the event of road traffic accidents to minimize the human error in accident reporting and provide a spontaneous response to victims.
智慧城市交通系统事故检测中的行为识别研究进展
事故探测是公共交通安全的重要方面,是社会安全的重要组成部分。在智能城市中,使用不同的监控摄像头监控交通流量在识别事故和提醒急救人员方面发挥着至关重要的作用。在计算机视觉任务中,利用动作识别(AR)有助于高精度视频监控,医学成像和数字信号处理应用。本文对智能城市中事故检测和自主交通系统中的行为识别进行了深入的综述。本文关注的是使用多种交通视频来源的增强现实系统,如十字路口的静态监控摄像头、高速公路监控摄像头、无人机摄像头和行车记录仪。通过这篇综述,我们确定了用于自动交通和事故检测的AR的主要技术、分类和算法。我们还检查了AR任务中使用的数据集,确定了数据集的主要来源和数据集的特征。本文为自动驾驶汽车和公共交通安全系统的事故检测系统开发和集成提供了一个潜在的研究方向,在发生道路交通事故时,通过提醒应急人员和执法部门,最大限度地减少事故报告中的人为错误,并为受害者提供自发响应。
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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