链接QoE和性能模型的基于dash的视频流

Susanna Schwarzmann, T. Zinner
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引用次数: 1

摘要

HTTP自适应流(HAS)是Internet上视频传输的事实上的标准。将视频片段分成小段,并为每个段提供多个质量级别,使客户端能够动态地适应当前网络条件的质量。HAS的性能以及用户体验质量(QoE)受到众多参数的影响。这包括可调设置,如质量切换阈值、初始缓冲级别或最大缓冲区,以及视频特征,如片段持续时间或视频中片段大小的变化。最近,已经提出了几个视频流的分析模型,允许比较这些输入参数,并得出它们对基于has的视频传输的qos相关指标的影响。这些模型的结果通常是渐近概率、分布函数或集中和标准化的矩。例如,这些模型不会产生任何关于延迟事件或所要求的视频质量的时间信息。这与P.1203等QoE预测模型相矛盾,后者根据特定视频播放的时间顺序计算QoE。迄今为止,尚不清楚如何以及在多大程度上利用分析模型的广义结果来推导基于序列的QoE值或一组具有随机变化的相似输入参数的序列的QoE分布。为了解决这个问题,我们将测试平台的测量结果与具有pq策略和基于缓冲区的质量切换能力的GI/GI/1模型的输出进行比较,以得出结论,结果在多大程度上仍然允许近似视频QoE。
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Linking QoE and Performance Models for DASH-based Video Streaming
HTTP Adaptive Streaming (HAS) is the de-facto standard for video delivery over the Internet. Splitting the video clip into small segments and providing multiple quality levels per segment allows the client to dynamically adapt the quality to current network conditions. The performance of HAS, and as a consequence the user Quality of Experience (QoE), is influenced by a multitude of parameters. This includes adjustable settings like quality switching thresholds, the initial buffer level, or the maximum buffer, as well as video characteristics like segment duration or the variation of segment sizes along the video. Recently, a couple of analytical models for video streaming have been proposed, allowing to compare these input parameters and derive their impact on QoE-relevant metrics for HAS-based video delivery. The outcome of these models are typically asymptotic probabilities, distribution functions, or centralized and standardized moments. For instance, these models do not yield any temporal information in terms of stalling events or requested video quality. This contradicts to QoE prediction models like P.1203, which compute the QoE based on the chronological sequence of a specific video playback. So far, it is unclear how and to which extent the generalized results of analytical models can be utilized to derive sequence-based QoE values or the QoE distribution for a set of sequences for similar input parameters with stochastic variations. To address this problem, we compare testbed measurements with the output of a GI/GI/1 model with pq-policy and buffer-based quality switching capability to conclude to which extent the results still allow to approximate the video QoE.
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