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北京邮电大学北京先进信息网络实验室,北京 100876
Online First:2021-07,
Published:25 July 2021
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Jiujiu CHEN, Chunyan FENG, Caili GUO, et al. Video semantics-driven resource allocation algorithm in Internet of vehicles[J]. Journal on Communications, 2021, 42(7): 1-11.
Jiujiu CHEN, Chunyan FENG, Caili GUO, et al. Video semantics-driven resource allocation algorithm in Internet of vehicles[J]. Journal on Communications, 2021, 42(7): 1-11. DOI: 10.11959/j.issn.1000-436x.2021080.
针对车联网中视频语义理解等智能计算业务需求下传统资源分配方式不再适用的问题,研究了视频语义驱动的资源分配算法。首先,以目标检测任务为例,提出视频语义驱动的资源分配指导模型并给出模型参数的求解算法;其次,构建了车联网场景中视频语义驱动的资源分配优化问题,将该问题转化成凸问题并利用凸优化算法求解;进一步,为降低凸优化算法的复杂度,提出了基于强化Q学习的资源分配算法;最后,仿真验证了所提资源分配算法的性能优势。
Aiming at the problem that traditional resource allocation methods will no longer be applicable
with the demand of intelligent computing services such as video semantic understanding in Internet of vehicles
the video semantic driven resource allocation algorithm was studied.First of all
taking the object detection task as an example
a semantic driven resource allocation guidance model for video was proposed and an algorithm for solving model parameters was given.Secondly
an optimization problem of resource allocation driven by video semantics in Internet of vehicles was constructed
which was transformed into a convex problem and solved by convex optimization algorithm.Furthermore
in order to reduce the complexity of the convex optimization algorithm
a resource allocation algorithm based on reinforcement Q learning was proposed.Finally
the performance advantages of the proposed algorithm are verified by simulations.
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