Can Accurate Predictions Improve Video Streaming in Cellular Networks?

X. Zou, Jeffrey Erman, V. Gopalakrishnan, Emir Halepovic, R. Jana, Xin Jin, J. Rexford, R. Sinha
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引用次数: 154

Abstract

Existing video streaming algorithms use various estimation approaches to infer the inherently variable bandwidth in cellular networks, which often leads to reduced quality of experience (QoE). We ask the question: "If accurate bandwidth prediction were possible in a cellular network, how much can we improve video QoE?". Assuming we know the bandwidth for the entire video session, we show that existing streaming algorithms only achieve between 69%-86% of optimal quality. Since such knowledge may be impractical, we study algorithms that know the available bandwidth for a few seconds into the future. We observe that prediction alone is not sufficient and can in fact lead to degraded QoE. However, when combined with rate stabilization functions, prediction outperforms existing algorithms and reduces the gap with optimal to 4%. Our results lead us to believe that cellular operators and content providers can tremendously improve video QoE by predicting available bandwidth and sharing it through APIs.
准确的预测能改善蜂窝网络中的视频流吗?
现有的视频流算法使用各种估计方法来推断蜂窝网络中固有的可变带宽,这往往导致体验质量(QoE)的降低。我们提出了这样一个问题:“如果在蜂窝网络中可以实现准确的带宽预测,那么我们可以在多大程度上提高视频QoE?”假设我们知道整个视频会话的带宽,我们表明现有的流媒体算法只能达到最佳质量的69%-86%。由于这些知识可能不切实际,我们研究的算法可以知道未来几秒钟的可用带宽。我们观察到,仅靠预测是不够的,实际上可能导致QoE下降。然而,当与速率稳定函数相结合时,预测优于现有算法,并将与最优算法的差距缩小到4%。我们的研究结果使我们相信,蜂窝运营商和内容提供商可以通过预测可用带宽并通过api共享带宽来极大地提高视频QoE。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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