Classifying flows and buffer state for youtube's HTTP adaptive streaming service in mobile networks

D. Tsilimantos, Theodoros Karagkioules, S. Valentin
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引用次数: 34

Abstract

Accurate cross-layer information is very useful to optimize mobile networks for specific applications. However, providing application-layer information to lower protocol layers has become very difficult due to the wide adoption of end-to-end encryption and due to the absence of cross-layer signaling standards. As an alternative, this paper presents a traffic profiling solution to passively estimate parameters of HTTP Adaptive Streaming (HAS) applications at the lower layers. By observing IP packet arrivals, our machine learning system identifies video flows and detects the state of an HAS client's play-back buffer in real time. Our experiments with YouTube's mobile client show that Random Forests achieve very high accuracy even with a strong variation of link quality. Since this high performance is achieved at IP level with a small, generic feature set, our approach requires no Deep Packet Inspection (DPI), comes at low complexity, and does not interfere with end-to-end encryption. Traffic profiling is, thus, a powerful new tool for monitoring and managing even encrypted HAS traffic in mobile networks.
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youtube的HTTP自适应流媒体服务在移动网络中的流分类和缓冲状态
准确的跨层信息对于优化特定应用的移动网络非常有用。然而,由于端到端加密的广泛采用和跨层信令标准的缺乏,向较低的协议层提供应用层信息变得非常困难。作为一种替代方案,本文提出了一种流量分析方案来被动地估计HTTP自适应流(HAS)应用程序的底层参数。通过观察IP数据包到达,我们的机器学习系统识别视频流并实时检测HAS客户端播放缓冲区的状态。我们对YouTube移动客户端的实验表明,随机森林即使在链接质量变化很大的情况下也能达到非常高的准确性。由于这种高性能是在IP级别通过小型通用功能集实现的,因此我们的方法不需要深度数据包检测(DPI),复杂度低,并且不会干扰端到端加密。因此,流量分析是一个强大的新工具,用于监控和管理移动网络中甚至加密的HAS流量。
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