边缘共享:城市街道边缘辅助实时定位和对象共享

Luyang Liu, M. Gruteser
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引用次数: 11

摘要

智能十字路口的协作对象定位和共享有望提高交通参与者在因视觉障碍而存在危险的关键区域的态势感知。通过在不同的摄像头设备之间共享移动物体的位置,它有效地将交通参与者的视野扩展到他们的视野之外。然而,在移动的客户端之间准确地共享物体是极具挑战性的,因为对客户端位置和检测到的物体位置都有很高的精度要求。因此,我们引入了一种利用边缘云平台资源的定位和对象共享系统EdgeSharing。EdgeSharing拥有其覆盖区域的实时3D特征地图,为经过该区域的客户端设备提供精确的定位和对象共享服务。我们进一步提出了几种优化技术,以提高定位精度,减少带宽消耗和降低系统的卸载延迟。结果表明,该系统在城市街道和十字路口的平均车辆定位误差为0.28 ~ 1.27 m,目标共享精度为82.3% ~ 91.4%,目标感知能力提升54.7%。此外,所提出的优化技术将带宽消耗降低了70.12%,端到端延迟降低了40.09%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EdgeSharing: Edge Assisted Real-time Localization and Object Sharing in Urban Streets
Collaborative object localization and sharing at smart intersections promises to improve situational awareness of traffic participants in key areas where hazards exist due to visual obstructions. By sharing a moving object’s location between different camera-equipped devices, it effectively extends the vision of traffic participants beyond their field of view. However, accurately sharing objects between moving clients is extremely challenging due to the high accuracy requirements for localizing both the client position and positions of its detected objects. Therefore, we introduce EdgeSharing, a localization and object sharing system leveraging the resources of edge cloud platforms. EdgeSharing holds a real-time 3D feature map of its coverage region to provide accurate localization and object sharing service to the client devices passing through this region. We further propose several optimization techniques to increase the localization accuracy, reduce the bandwidth consumption and decrease the offloading latency of the system. The result shows that the system is able to achieve a mean vehicle localization error of 0.28-1.27 meters, an object sharing accuracy of 82.3%-91.4%, and a 54.7% object awareness increment in urban streets and intersections. In addition, the proposed optimization techniques reduce bandwidth consumption by 70.12% and end-to-end latency by 40.09%.
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