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Ensuring High QoE for DASH-Based Clients Using Deterministic Network Calculus in SDN Networks

机译:使用SDN网络中的确定性网络演算确保基于DASH的客户端的高QoE

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HTTP Adaptive Streaming (HAS) is becoming the de-facto video delivery technology over best- effort networks nowadays, thanks to the myriad advantages it brings. However, many studies have shown that HAS suffers from many Quality of Experience (QoE)-related issues in the presence of competing players. This is mainly caused by the selfishness of the players resulting from the decentralized intelligence given to the player. Another limitation is the bottleneck link that could happen at any time during the streaming session and anywhere in the network. These issues may result in wobbling bandwidth perception by the players and could lead to missing the deadline for chunk downloads, which result in the most annoying issue consisting of rebuffering events. In this paper, we leverage the Software-Defined Networking paradigm to take advantage of the global view of the network and its powerful intelligence that allows reacting to the network changing conditions. Ultimately, we aim at preventing the re-buffering events, resulting from deadline misses, and ensuring high QoE for the accepted clients in the system. To this end, we use Deterministic Network Calculus (DNC) to guarantee a maximum delay for the download of the video chunks while maximizing the perceived video quality. Simulation results show that the proposed solution ensures high efficiency for the accepted clients without any rebuffering events which result in high user QoE. Consequently, it might be highly useful for scenarios where video chunks should be strictly downloaded on- time or ensuring low delay with high user QoE such as serving video premium subscribers or remote control/driving of an autonomous vehicle in future 5G mobile networks.
机译:由于HTTP自适应流技术(HAS)带来的诸多优势,它如今已成为尽力而为网络上的实际视频传输技术。但是,许多研究表明,在存在竞争性参与者的情况下,HAS会遇到许多与体验质量(QoE)相关的问题。这主要是由于赋予玩家分散的智力而导致的玩家的自私。另一个限制是瓶颈链接,该链接可能在流传输会话期间的任何时间以及网络中的任何地方发生。这些问题可能会导致玩家无法感知带宽,并可能导致错过块下载的最后期限,从而导致最令人讨厌的问题,包括重新缓冲事件。在本文中,我们利用软件定义的网络范例来利用网络的全局视图及其强大的智能功能,该智能功能可以对网络变化的状况做出反应。最终,我们旨在防止由于错过最后期限而导致的重新缓冲事件,并确保为系统中接受的客户提供较高的QoE。为此,我们使用确定性网络演算(DNC)来确保最大程度地延迟视频块的下载,同时最大程度地提高感知的视频质量。仿真结果表明,所提出的解决方案确保了所接受客户端的高效率,而没有任何导致高用户QoE的重新缓冲事件。因此,对于需要按时严格下载视频块或确保具有高用户QoE的低延迟的场景(例如为未来的5G移动网络中的视频高级订户提供服务或自动驾驶的远程控制/驾驶),这可能非常有用。

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