Optimizing QoE and Latency of Live Video Streaming Using Edge Computing and In-Network Intelligence

A. Erfanian
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引用次数: 1

Abstract

Live video streaming traffic and related applications have experienced significant growth in recent years. More users have started generating and delivering live streams with high quality (e.g., 4K resolution) through popular online streaming platforms such as YouTube, Twitch, and Facebook. Typically, the video contents are generated by streamers and watched by many audiences, which are geographically distributed in various locations far away from the streamers' locations. The resource limitation in the network (e.g., bandwidth) is a challenging issue for network and video providers to meet the users' requested quality. In this thesis, we will investigate optimizing QoEand end-to-end (E2E) latency of live video streaming by leveraging edge computing capabilities and in-network intelligence. We present four main research questions aiming to address the various challenges in optimizing live streaming QoE and E2E latency by employing edge computing and in-network intelligence.
利用边缘计算和网络内智能优化实时视频流的QoE和延迟
近年来,实时视频流流量和相关应用经历了显着增长。越来越多的用户开始通过流行的在线流媒体平台(如YouTube、Twitch和Facebook)生成和发布高质量(例如4K分辨率)的直播流媒体。通常,视频内容由流媒体产生,并由许多观众观看,这些观众在地理上分布在远离流媒体位置的各个位置。网络中的资源限制(例如带宽)是网络和视频提供商满足用户所要求的质量的一个挑战。在本文中,我们将研究通过利用边缘计算能力和网络内智能来优化实时视频流的qoe和端到端(E2E)延迟。我们提出了四个主要的研究问题,旨在通过使用边缘计算和网络内智能来解决优化直播流QoE和端到端延迟的各种挑战。
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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