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面向实时360度视频流的自适应计算与组播优化

Adaptive Computing and Multicasting Optimization for Live 360-Degree Video Streaming

作者 Shunyi Wang · Xiaobin Tan · Zhuolin Liu · Zhiwei Tai · Mingyu Sun · Jian Yang · Jun Wu
期刊 IEEE Transactions on Vehicular Technology
出版日期 2025年9月
卷/期 第 75 卷 第 2 期
技术分类 智能化与AI应用
技术标签 强化学习 机器学习 深度学习 模型预测控制MPC
相关度评分 ★★ 2.0 / 5.0
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中文摘要

本文针对移动边缘计算网络中多用户360度VR视频流传输,提出联合计算与组播优化方案,通过自适应分组、合作博弈资源分配和Lyapunov比特率自适应算法,提升长期QoE并减少卡顿。

English Abstract

Virtual reality (VR) technology is widely employed across various domains, with its applications expanding as Artificial Intelligence (AI) technologies advance, bringing new scenarios and functionalities to 360-degree video streaming. However, these applications impose substantial demands on computational power and communication capacity, along with increased sensitivity to computation and transmission delay. In this paper, we propose a joint optimization scheme of computing and multicasting for 360-degree video in Mobile Edge Computing (MEC) networks to maximize the long-term Quality of Experience (QoE) of multiple users. We solve the computing and multicasting optimization problem separately by dividing it into adaptive grouping and resource optimization subproblems. By implementing adaptive grouping, we reduce redundant computation and transmission, thereby improving the efficiency of limited resource utilization. We propose a Cooperative Bargaining Game (CBG)-based resource allocation algorithm for efficient resource management and a Lyapunov optimization-based bitrate adaptation algorithm for long-term performance optimization, enhancing users' QoE while minimizing playback freezing. Our experimental results demonstrate significant improvements in multi-user long-term QoE, average bitrate, and reduced rebuffering time, underscoring the effectiveness of our scheme in demanding scenarios.
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SunView 深度解读

该文聚焦VR视频流的边缘计算与AI驱动的资源调度,与阳光电源当前主营业务(光伏逆变器、储能系统、iSolarCloud平台)无直接技术交集。但其提出的Lyapunov优化、强化学习及多智能体协同思想,可启发iSolarCloud智能运维平台在光储电站群动态负载预测、ST系列PCS功率指令协同优化、PowerTitan集群充放电调度中的时序决策升级,建议在下一代云边协同能源操作系统中探索轻量化边缘AI调度模块。