摘要
应急监控视频传输作为提升突发事件监测、公共安全事件处理、灾后重建等情况下应急工作处理能力的关键技术手段,逐渐成为国家智慧应急体系建设重点支持的专业领域和研究方向。随着5G技术、决策型人工智能技术的不断发展,为实现自适应的高质量应急监控视频传输,针对局部区域内公共安全和应急救援监控,建立一种应急监控视频边缘智能传输架构,设计了应急监控视频重要性度量方法,提出簇内动态联邦深度强化学习(IcD-FDRL)算法,并实现了基于簇内动态联邦深度强化学习的应急监控视频边缘智能传输优化,以打破监控数据孤岛,提升算法学习效率,实现重要应急监控视频的低时延、低成本、高质量和优先传输。通过仿真实验进行了对比分析,验证了所提模型和算法的有效性。
Emergency surveillance video transmission is a key technical means to improve emergency handling capability under circumstances such as emergency monitoring,public security incident handling,and post-disaster reconstruction.It has gradually become a key focus of research and development in the construction of the national smart emergency system.With the continuous development of 5G technology and decision-making artificial intelligence technology in recent years,an edge-intelligent transmission architecture for emergency surveillance video was established,aimed at public safety and emergency rescue monitoring in local areas.This model seeks to achieve adaptive and high-quality transmission of emergency surveillance video.Furthermore,the importance measurement method of emergency surveillance video was designed,and an intra-clustered dynamic federated deep reinforcement learning algorithm was proposed.The proposed optimization method based on intra-clustered dynamic federated deeps reinforcement learning(IcD-FDRL)enhances the edge-intelligent transmission of emergency surveillance video,breaks monitoring data silos,improves algorithm learning efficiency,and realizes low-delay,low-cost,highquality,and priority transmission of important emergency surveillance video.Finally,a simulation experiment was performed and its results were compared,verifying the effectiveness of the proposed model and algorithms.
作者
李彦
万征
邓承志
汪胜前
LI Yan;WAN Zheng;DENG Chengzhi;WANG Shengqian(School of Information Management and Mathematics,Jiangxi University of Finance and Economics,Nanchang 330032,China;School of Information Engineering,Jiangxi University of Water Resources and Electric Power,Nanchang 330099,China)
出处
《北京航空航天大学学报》
北大核心
2025年第7期2314-2329,共16页
Journal of Beijing University of Aeronautics and Astronautics
基金
国家自然科学基金(61961021)
江西省教育厅科技计划重点项目(GJJ180251)
江西水利电力大学博士科研启动项目(2024kyqd062)。
关键词
应急监控视频
边缘集群
动态联邦深度强化学习
边缘智能
无线视频传输
移动边缘计算
emergency surveillance video
edge cluster
dynamic federated deep reinforcement learning
edge intelligence
wireless video transmission
mobile edge computing