自适应视频流中屏幕分辨率的计算:一个qos驱动的带宽共享框架

Othmane Belmoukadam, Muhammad Jawad Khokhar, C. Barakat
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引用次数: 7

摘要

屏幕分辨率和网络条件是影响用户体验的主要客观因素,特别是对于视频流应用程序。终端侧的特性越来越先进,对良好视觉体验的网络要求也越来越高[1]。先前的研究试图将MOS (Mean Opinion Score)与不同屏幕类型(如CIF、QCIF和HD)的视频比特率联系起来。我们利用这些研究并制定了一个qos驱动的资源分配问题,以确定最佳带宽分配,从而最大化位于同一瓶颈链接后面的提供商的所有用户的QoE(体验质量),同时考虑到他们用于视频播放的屏幕的特征。对于我们的优化问题,QoE函数是通过对捕获MOS、屏幕特性和带宽需求之间关系的数据集进行曲线拟合来构建的。我们提出了一个简单的启发式基于拉格朗日松弛和KKT (Karush Kuhn Tucker)条件的约束子集。数值模拟表明,与实现最大最小公平性的TCP类似策略的分配相比,所提出的启发式方法能够将总体QoE提高20%。随后,我们在ns-3环境中使用了MPEG/DASH实现,并表明将我们的方法与速率自适应算法(例如[3])相结合可以帮助提高QoE,同时减少分辨率切换和中断数量。
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On Accounting for Screen Resolution in Adaptive Video Streaming: A QoE-Driven Bandwidth Sharing Framework
Screen resolution along with network conditions are main objective factors impacting the user experience, in particular for video streaming applications. Terminals on their side feature more and more advanced characteristics resulting in different network requirements for good visual experience [1]. Previous studies tried to link MOS (Mean Opinion Score) to video bit rate for different screen types (e.g., CIF, QCIF, and HD) [2]. We leverage such studies and formulate a QoE-driven resource allocation problem to pinpoint the optimal bandwidth allocation that maximizes the QoE (Quality of Experience) over all users of a provider located behind the same bottleneck link, while accounting for the characteristics of the screens they use for video playout. For our optimization problem, QoE functions are built using curve fitting on data sets capturing the relationship between MOS, screen characteristics, and bandwidth requirements. We propose a simple heuristic based on Lagrangian relaxation and KKT (Karush Kuhn Tucker) conditions for a subset of constraints. Numerical simulations show that the proposed heuristic is able to increase overall QoE up to 20% compared to an allocation with TCP look-alike strategies implementing max-min fairness. Later, we use a MPEG/DASH implementation in the context of ns-3 and show that coupling our approach with a rate adaptation algorithm (e.g., [3]) can help increasing QoE while reducing both resolution switches and number of interruptions.
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