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Implementation of Self-adaptive Middleware for Mobile Vehicle Tracking Applications on Edge Computing

机译:边缘计算中移动车辆跟踪应用自适应中间件的实现

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Unstructured data gathered from various IoT sensors is rapidly increasing due to inexpensive electronic devices and high-speed networks. On the other hand, mobile edge computing (MEC) is an attractive data processing method that can shorten the communication distance and reduce the latency of computation-intensive tasks by distributing data to the edge servers close to the users, unlike processing data on clouds that are located far from users. In the present paper, we propose a specialized self-adaptive middleware for reconfiguration of image/video contents for adaptation to changes with the movement of a vehicle. The key concept behind this approach is to introduce the rule-based relocation of objects among sensor devices, edge servers, and existing clouds as a basic adaptation mechanism to recognize and track mobile vehicles. Experimental results show that tracking precision with a state-of-the-art tracker is up to 89% for MEC.
机译:由于廉价的电子设备和高速网络,从各种物联网传感器收集的非结构化数据正在迅速增加。另一方面,移动边缘计算(MEC)是一种有吸引力的数据处理方法,与将数据分发到靠近用户的边缘服务器不同,它可以通过将数据分发到靠近用户的边缘服务器来缩短通信距离并减少计算密集型任务的等待时间。远离用户。在本文中,我们提出了一种专门的自适应中间件,用于重新配置图像/视频内容,以适应车辆运动的变化。这种方法背后的关键概念是在传感器设备,边缘服务器和现有云之间引入基于规则的对象重定位,作为识别和跟踪移动车辆的基本适应机制。实验结果表明,采用最新技术的跟踪器对MEC的跟踪精度高达89%。

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