通过基于预测信道质量的缓冲提高移动视频质量

Jan Willem Kleinrouweler, Britta Meixner, J. Bosman, H. V. D. Berg, R. Mei, Pablo César
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引用次数: 1

摘要

吞吐量的频繁变化使移动网络成为视频流的一个具有挑战性的环境。当前的视频播放器通过将视频质量与网络吞吐量相匹配来处理这些变化。然而,这种适应策略导致视频分辨率和比特率的频繁变化,对用户的流媒体体验产生了负面影响。另一种选择是,保持视频质量不变可以改善用户体验,但会给网络带来额外的需求。在信道质量较低的情况下下载高质量的内容需要额外的资源,因为数据传输效率与信道质量有关。本文提出了一种基于信道质量预测的缓冲策略(CQBS),该策略在信道质量良好时使视频缓冲增大,在信道质量下降时依赖于该缓冲。我们的策略是马尔可夫决策过程的结果。底层的马尔可夫链以我们使用Android移动应用程序收集的377个真实LTE信道质量轨迹为条件。通过我们的策略,移动网络提供商可以使用更少的网络资源,提供持续高质量的视频流。
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Improving Mobile Video Quality Through Predictive Channel Quality Based Buffering
Frequent variations in throughput make mobile networks a challenging environment for video streaming. Current video players deal with those variations by matching video quality to network throughput. However, this adaptation strategy results in frequent changes of video resolution and bitrate, which negatively impacts the users' streaming experience. Alternatively, keeping the video quality constant would improve the experience, but puts additional demand on the network. Downloading high quality content when channel quality is low requires additional resources, because data transfer efficiency is linked to channel quality. In this paper, we present a predictive Channel Quality based Buffering Strategy (CQBS) that lets the video buffer grow when channel quality is good, and relies on this buffer when channel quality decreases. Our strategy is the outcome of a Markov Decision Process. The underlying Markov chain is conditioned on 377 real-world LTE channel quality traces that we have collected using an Android mobile application. With our strategy, mobile network providers can deliver constant quality video streams, using less network resources.
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