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Stream-based Machine Learning for Real-time QoE Analysis of Encrypted Video Streaming Traffic

机译:基于流的机器学习对加密视频流流量进行实时QoE分析

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As stalling is the worst Quality of Experience (QoE) degradation of HTTP adaptive video streaming (HAS), this work presents a stream-based machine learning approach, ViCrypt, which analyzes stalling of YouTube streaming sessions in realtime from encrypted network traffic. The video streaming session is subdivided into a stream of short time slots of 1s length, while considering two additional macro windows each for the current streaming trend and the whole ongoing streaming session. Constant memory features are extracted from the encrypted network traffic in these three windows in a stream-based fashion, and fed into a random forest model, which predicts whether the current time slot contains stalling or not. The presented system can predict stalling with a very high accuracy and the finest granularity to date (1s), and thus, can be used in networks for real-time QoE analysis from encrypted YouTube video streaming traffic. The independent predictions for each consecutive slot of a streaming session can further be aggregated to obtain stalling estimations for the whole session. Thereby, the proposed method allows to quantify the initial delay, as well as the overall number of stalling events and the stalling ratio, i.e., the ratio of total stalling time and total playback time.
机译:由于停顿是HTTP自适应视频流(HAS)的最糟糕的体验质量(QoE)降级,因此,本文提出了一种基于流的机器学习方法ViCrypt,该方法可实时分析来自加密网络流量的YouTube流会话的停顿。视频流会话细分为长度为1s的短时隙流,同时针对当前流趋势和整个正在进行的流会话分别考虑两个额外的宏窗口。在这三个窗口中,以基于流的方式从加密的网络流量中提取恒定的内存功能,并将其输入到随机森林模型中,该模型预测当前时隙是否包含停顿。提出的系统可以非常准确地预测停顿,并且具有迄今为止最精细的粒度(1s),因此可以在网络中用于根据加密的YouTube视频流流量进行实时QoE分析。可以进一步汇总流会话的每个连续时隙的独立预测,以获得整个会话的停顿估计。因此,所提出的方法允许量化初始延迟以及失速事件的总数和失速比,即总失速时间与总回放时间的比。

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