Intelligent Algorithm for Enhancing MPEG-DASH QoE in eMBMS

Miran Taha, J. M. Jiménez, Alejandro Canovas, Jaime Lloret
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引用次数: 5

Abstract

Multimedia streaming is the most demanding and bandwidth hungry application in today’s world of Internet. MPEG-DASH as a video technology standard is designed for delivering live or on-demand streams in Internet to deliver best quality content with the fewest dropouts and least possible buffering. Hybrid architecture of DASH and eMBMS has attracted a great attention from the telecommunication industry and multimedia services. It is deployed in response to the immense demand in multimedia traffic. However, handover and limited available resources of the system affected on dropping segments of the adaptive video streaming in eMBMS and it creates an adverse impact on Quality of Experience (QoE), which is creating trouble for service providers and network providers towards delivering the service. In this paper, we derive a case study in eMBMS to approach to provide test measures evaluating MPEG-DASH QoE, by defining the metrics are influenced on QoE in eMBMS such as bandwidth and packet loss then we observe the objective metrics like stalling (number, duration and place), buffer length and accumulative video time. Moreover, we build a smart algorithm to predict rate of segments are lost in multicast adaptive video streaming. The algorithm deploys an estimation decision regards how to recover the lost segments. According to the obtained results based on our proposal algorithm, rate of lost segments is highly decreased by comparing to the traditional approach of MPEG-DASH multicast and unicast for high number of users.
eMBMS中提高MPEG-DASH QoE的智能算法
在当今的互联网世界中,多媒体流媒体是要求最高、最需要带宽的应用。MPEG-DASH是一种视频技术标准,用于在互联网上提供直播或点播流,以最少的中断和最少的缓冲提供最高质量的内容。DASH和eMBMS的混合架构已经引起了电信行业和多媒体行业的广泛关注。它的部署是为了应对多媒体流量的巨大需求。然而,系统的切换和有限的可用资源影响了eMBMS中自适应视频流的下降段,并对体验质量(QoE)产生不利影响,这给服务提供商和网络提供商提供服务带来了麻烦。本文以eMBMS为例,通过定义带宽和丢包等影响eMBMS中MPEG-DASH QoE的指标,并观察了失速(数量、持续时间和位置)、缓冲长度和累计视频时间等客观指标,给出了评估MPEG-DASH QoE的测试方法。此外,我们还建立了一种智能算法来预测组播自适应视频流中的片段丢失率。该算法针对如何恢复丢失的片段部署了一个估计决策。结果表明,在用户较多的情况下,与传统的MPEG-DASH组播和单播方法相比,丢包率大大降低。
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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