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Towards QoE assessment of encrypted YouTube adaptive video streaming in mobile networks

机译:进行移动网络中加密的YouTube自适应视频流的QoE评估

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Video streaming has become one of the most prevalent mobile applications, and takes a huge portion of the traffic on mobile networks today. YouTube is one of the most popular and volume-dominant video content providers. Understanding the user perception on the quality (i.e., Quality of Experience or QoE) of YouTube video streaming services is thus paramount for the content provider as well as its content delivery network (CDN) providers. Although various video QoE assessment approaches proposed to use different Key Performance Indicators (KPIs), they are all essentially related to a common parameter: Bitrate. However, after YouTube adopted HTTPS as its adaptive video streaming method to better protect user privacy and network security, bitrate cannot be obtained anymore from encrypted video traffic via typical deep packet inspection (DPI) method. In this paper, we tackle this challenge by proposing a machine learning based bitrate estimation (MBE) approach to parse bitrate information from IP packet level measurement. For evaluating the effectiveness of MBE, we have chosen video Mean Opinion Score (vMOS) proposed by a leading telecom vendor, as the QoE assessment framework, and have conducted comprehensive experiments to study the impact of bitrate estimation accuracy on its KPIs for HTTPS YouTube video streaming service. Experimental results show that MBE is a feasible and highly effective approach to obtain in real time the bitrate information from encrypted video streaming traffic.
机译:视频流已成为最流行的移动应用程序之一,并且占用了当今移动网络上很大一部分流量。 YouTube是最受欢迎和数量最多的视频内容提供商之一。因此,对于内容提供商及其内容交付网络(CDN)提供商而言,了解用户对YouTube视频流服务的质量(即体验质量或QoE)的看法至关重要。尽管各种视频QoE评估方法都建议使用不同的关键绩效指标(KPI),但它们基本上都与一个共同的参数有关:比特率。但是,在YouTube将HTTPS用作其自适应视频流方法以更好地保护用户隐私和网络安全之后,就无法再通过典型的深层数据包检查(DPI)方法从加密的视频流量中获得比特率。在本文中,我们通过提出一种基于机器学习的比特率估计(MBE)方法来解析来自IP数据包级别测量的比特率信息来应对这一挑战。为了评估MBE的有效性,我们选择了一家领先的电信供应商提出的视频均值评分(vMOS)作为QoE评估框架,并进行了全面的实验,以研究比特率估算准确度对其HTTPS YouTube视频的KPI的影响流服务。实验结果表明,MBE是一种从加密视频流中实时获取比特率信息的可行且高效的方法。

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