建模和分析直播性能

Tong Zhang, Fengyuan Ren, Bo Wang
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引用次数: 3

摘要

如今,直播的使用正在快速增长,它指的是实时录制和播放的媒体内容。在直播中,延迟是最重要的,因为更小的延迟意味着更高的用户粘性。HTTP自适应流(HAS)是目前最流行的直播流技术,其中视频客户端向服务器发送HTTP请求以下载视频片段。客户端内部的比特率自适应(ABR)算法决定每个段的比特率水平。量化不同HAS因素对流性能的影响对ABR算法有很大帮助。然而,现有的工作主要集中在视频点播(VoD)流媒体上,而不是直播。本文对直播性能进行了理论分析。我们首先建立了一个排队模型来描述播放缓冲区的演变。在此模型的基础上,分别表征了重缓冲概率、重缓冲次数和流延迟,并分析了块到达率、到达间隔波动、启动阈值和视频跳转对它们的影响。根据分析结果,我们提出了直播中比特率适应的见解和建议,并利用它们设计了一个简单的启发式ABR算法。大量的仿真验证了所设计算法的洞察力和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling and Analyzing Live Streaming Performance
Today, live streaming is gaining a rapid growth in use, which refers to streaming the media content recorded and broadcast in real time. In live streaming, latency is of utmost importance since smaller latency means higher user engagement. HTTP adaptive streaming (HAS) is now the most popular live streaming technology, where the video client sends HTTP requests to server to download video segments. The bitrate adaptation (ABR) algorithm inside the client determines bitrate level for every segment. It is of great help for ABR algorithm to quantify the influence of different HAS factors on streaming performance. However, existing work mainly focuses on video on demand (VoD) streaming rather than live streaming. In this paper, we theoretically analyze live streaming performance. We first establish a queuing model to describe playout buffer evolution. Based on the model, we respectively characterize rebuffering probability, rebuffering count and streaming latency, and analyze the effects of chunk arrival rate, arrival interval fluctuation, startup threshold and video skipping on them. From analysis results, we propose insights and recommendations for bitrate adaptation in live streaming and design a simple heuristic ABR algorithm leveraging them. Extensive simulations verify the insights as well as effectiveness of the designed algorithm.
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