论文标题
实时计算智能运输应用的实时近崩溃检测
Edge Computing for Real-Time Near-Crash Detection for Smart Transportation Applications
论文作者
论文摘要
交通近施加的事件是各种智能运输应用程序的关键数据源,例如作为交通安全研究的替代安全措施和自动化车辆测试的角案例数据。但是,近磨碎检测面临一些关键挑战。首先,从原始数据源中提取近乎碎屑需要大量的计算,通信和存储资源。此外,现有方法缺乏效率和可转移性,这是瓶颈的前瞻性大规模应用。为此,本文通过实时处理现有仪表板的视频流来利用边缘计算的力量来应对这些挑战。我们设计了一个多线程系统体系结构,该体系结构在边缘设备上运行,并建模由对象检测和线性复杂性中的对象检测和跟踪产生的边界框。该方法对相机参数不敏感,并且与不同的车辆兼容。边缘计算系统已通过录制的视频和两辆汽车和四辆公交车的现实测试进行了评估,超过一万小时。它实时过滤了无关的视频,从而节省了人工成本,处理时间,网络带宽和数据存储。它不仅收集活动视频,还收集其他有价值的数据,例如道路用户类型,活动位置,碰撞时间,车辆轨迹,车速,制动开关和油门。该实验证明了系统在效率,准确性,可靠性和可转移性方面的有希望的性能。这是将边缘计算用于实时流量视频分析的首批努力之一,预计将使智能运输研究和应用中的多个子场受益。
Traffic near-crash events serve as critical data sources for various smart transportation applications, such as being surrogate safety measures for traffic safety research and corner case data for automated vehicle testing. However, there are several key challenges for near-crash detection. First, extracting near-crashes from original data sources requires significant computing, communication, and storage resources. Also, existing methods lack efficiency and transferability, which bottlenecks prospective large-scale applications. To this end, this paper leverages the power of edge computing to address these challenges by processing the video streams from existing dashcams onboard in a real-time manner. We design a multi-thread system architecture that operates on edge devices and model the bounding boxes generated by object detection and tracking in linear complexity. The method is insensitive to camera parameters and backward compatible with different vehicles. The edge computing system has been evaluated with recorded videos and real-world tests on two cars and four buses for over ten thousand hours. It filters out irrelevant videos in real-time thereby saving labor cost, processing time, network bandwidth, and data storage. It collects not only event videos but also other valuable data such as road user type, event location, time to collision, vehicle trajectory, vehicle speed, brake switch, and throttle. The experiments demonstrate the promising performance of the system regarding efficiency, accuracy, reliability, and transferability. It is among the first efforts in applying edge computing for real-time traffic video analytics and is expected to benefit multiple sub-fields in smart transportation research and applications.