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Adaptive and stabilized real-time super-resolution control for UAV-assisted smart harbor surveillance platforms

机译:适用于无人机辅助智能港监控平台的自适应和稳定实时超分辨率控制

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摘要

Nowadays, there are active research for deep learning applications to smart cities, e.g., smart factory, smart and micro grids, and smart logistics. Among them, for industrial smart harbor and logistics platforms, this paper proposes a novel two-stage algorithm for large-scale surveillance. For the purpose, this paper utilizes drones for flexible localization, and thus, the algorithm for scheduling between multiple drones and multiple multi-access edge computing (MEC) systems is proposed under the consideration of stability in this first-stage. After the scheduling, each drone transmits its own data to its associated MEC for enhancing the quality and then eventually the data will be used for surveillance. For improving the quality, super-resolution is used. In the second-stage algorithm, the self-adaptive super-resolution control is proposed for time-average performance maximization subject to stability, inspired by Lyapunov optimization. Based on data-intensive simulation results, it has been verified that the proposed algorithm achieves desired performance.
机译:如今,对智能城市的深度学习应用有积极的研究,例如智能工厂,智能和微网格,智能物流。其中,对于工业智能港口和物流平台,本文提出了一种新型的大规模监测算法。为此目的,本文利用了灵活定位的无人机,因此,在本第一阶段的稳定性考虑到稳定性的情况下提出了用于调度的算法。在调度之后,每个驱动器将其自己的数据传输到其关联的MEC,以增强质量,然后最终将用于监视。为了提高质量,使用超分辨率。在第二阶段算法中,提出了自适应超分辨率控制,用于达到稳定性的时间平均性能最大化,受Lyapunov优化的启发。基于数据密集型仿真结果,已经验证了所提出的算法实现了所需的性能。

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