Group-Oriented Broadcasting of Augmented Reality Services over 5G New Radio

Nicola Benenati, Cristina Desogus, Pasquale Scopelliti, E. Iradier, J. Montalbán, M. Murroni, G. Araniti, P. Angueira, M. Fadda
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引用次数: 3

Abstract

Augmented Reality applications represent the current emerging trend of broadcast services whereby users require the same data content. Broadcast applications in smart environments ask for low-latency data transmission, low-energy communication, and location- and customer-based group creation procedures. The standardization efforts done from the 3rd Generation Partnership Project (3GPP) to make the 5th generation (5G) a reality have involved also the existing Long Term Evolution (LTE) radio access technology leading to the 5G New Radio (5G-NR) standard. One of the main innovation is the definition of three different Modulation and Coding Scheme (MCS) tables to allow a differentiation according to the class of devices, grouped into five different categories based on their basic characteristics. 5G broadcast/multicast is one of the topics that is under discussion at 3GPP for 5G phase II (release 17). In this paper, authors focused on a 5G-ready LTE system, referring to real broadcast mobile urban scenarios where users are interested in Augmented Reality (AR) applications. The authors analyzed the Subgrouping Optimal Aggregate Data Rate (SubOptADR) algorithm whereby broadcast destinations are grouped into different subgroups depending on the perceived user equipment (UE) channel quality in order to maximize the Aggregate Data Rate (ADR), which is the sum of data rate values obtained by all the broadcast members. The capabilities of the algorithm are evaluated comparing LTE and 5G-NR networks, focusing on different user classes and type of devices. The paper details three envisaged AR application scenarios, describing the subgrouping optimization algorithm in 5G-NR and showing how group-oriented communications can improve spectrum efficiency in the broadcast of AR services.
基于5G新无线电的增强现实业务群播
增强现实应用代表了当前广播服务的新兴趋势,用户需要相同的数据内容。智能环境中的广播应用需要低延迟数据传输、低能耗通信以及基于位置和客户的组创建过程。第三代合作伙伴计划(3GPP)为实现第五代(5G)而进行的标准化工作还涉及现有的长期演进(LTE)无线接入技术,从而实现5G新无线电(5G- nr)标准。其中一个主要创新是定义了三种不同的调制和编码方案(MCS)表,允许根据设备类别进行区分,根据其基本特征分为五种不同的类别。5G广播/组播是3GPP在5G第二阶段(第17版)讨论的主题之一。在本文中,作者专注于5g就绪的LTE系统,指的是用户对增强现实(AR)应用感兴趣的真实广播移动城市场景。作者分析了子分组最优聚合数据速率(SubOptADR)算法,该算法根据感知到的用户设备(UE)信道质量将广播目的地分组到不同的子组,以最大化聚合数据速率(ADR),即所有广播成员获得的数据速率值的总和。该算法的能力是通过比较LTE和5G-NR网络来评估的,重点关注不同的用户类别和设备类型。本文详细介绍了三种设想的AR应用场景,描述了5G-NR中的子分组优化算法,并展示了面向分组的通信如何提高AR业务广播中的频谱效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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