传统、联网和自动驾驶汽车的智能交通基础设施愿景

S. Ranka, A. Rangarajan, L. Elefteriadou, Sivaramnakrishnan Srinivasan, Emmanuel Poasadas, Dan Hoffman, Raj Ponnulari, Jeremy Dilmore, Tom Byron
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引用次数: 6

摘要

这种智慧城市交通管理方法寻求在十字路口和公共车辆(城市公交车、消防车、救护车、校车)中使用基于边缘的视频流处理(使用多核和GPU处理器),将视频数据转换为单个车辆和行人的时空轨迹,并传输到基于云的系统。关键信息随后在云中合成,以创建全市范围的实时交通调色板。然后,边缘和云的实时或离线处理将被用于优化十字路口运营、管理网络流量、识别不同交通单元之间的近碰撞、提供街道停车信息以及许多其他应用。天气和环境等附加信息也将被利用。使用基于边缘的实时机器学习(ML)技术和视频流处理具有几个显着的优势。(1)由于不需要存储大量的视频(通常几分钟就足以进行边缘处理),它自动解决了公共机构的担忧,这些机构出于公民隐私和合法性的原因不希望存储个人身份信息。(2)在边缘处理视频流后,可以使用有线和无线网络与中央系统(如云)进行低带宽通信,从而获得整个城市的压缩和整体图像。(3)处理的实时性使各种各样的新型交通应用在十字路口、街道和系统层面成为可能,这对安全性和机动性产生了重大影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Vision of Smart Traffic Infrastructure for Traditional, Connected, and Autonomous Vehicles
This smart city traffic management approach seeks to use edge-based video-stream processing (using multicore and GPU processors) at intersections and in public vehicles (city buses, fire trucks, ambulances, school buses) to convert video data into space-time trajectories of individual vehicles and pedestrians that are transmitted to a cloud-based system. Key information is then synthesized in the cloud from them to create a real-time city-wide traffic palette. Real-time or offline processing both at the edge and the cloud will then be leveraged to optimize intersection operations, manage network traffic, identify near-collisions between various units of traffic, provide street parking information, and a host of other applications. Additional information such as weather and environment will also be leveraged. The use of edge-based real-time machine learning (ML) techniques and videostream processing has several significant advantages. (1) Because there is no need to store copious amounts of video (few minutes typically suffice for edge-based processing), it automatically addresses concerns of public agencies who do not want person-identifiable information to be stored for reasons of citizen privacy and legality. (2) The processing of the video stream at the edge will allow for the use of low bandwidth communication using wireline and wireless networks to a central system such as a cloud, resulting in a compressed and holistic picture of the entire city. (3) The real-time nature of processing enables a wide variety of novel transportation applications at the intersection, street, and system levels that were not possible hitherto, significantly impacting safety and mobility.
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