Video quality representation classification of Safari encrypted DASH streams

Ran Dubin, O. Hadar, Itay Richman, Ofir Trabelsi, A. Dvir, Ofir Pele
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引用次数: 12

Abstract

The increasing popularity of HTTP adaptive video streaming services has dramatically increased bandwidth requirements on operator networks, which attempt to shape their traffic through Deep Packet Inspection (DPI). However, Google and certain content providers have started to encrypt their video services. As a result, operators often encounter difficulties in shaping their encrypted video traffic via DPI. This highlights the need for new traffic classification methods for encrypted HTTP adaptive video streaming to enable smart traffic shaping. These new methods will have to effectively estimate the quality representation layer and playout buffer. We present a new method and show for the first time that video quality representation classification for (YouTube) encrypted HTTP adaptive streaming is possible. We analyze the performance of this classification method with Safari over HTTPS. Based on a large number of offline and online traffic classification experiments, we demonstrate that it can independently classify, in real time, every video segment into one of the quality representation layers with 96.13% average accuracy.
Safari加密DASH流的视频质量表示分类
HTTP自适应视频流服务的日益普及极大地增加了运营商网络的带宽需求,运营商试图通过深度包检测(DPI)来塑造流量。然而,谷歌和某些内容提供商已经开始加密他们的视频服务。因此,运营商在通过DPI塑造加密视频流量时经常遇到困难。这突出了对加密HTTP自适应视频流的新流量分类方法的需求,以实现智能流量整形。这些新方法必须有效地估计质量表示层和播放缓冲区。我们提出了一种新的方法,并首次证明了(YouTube)加密HTTP自适应流的视频质量表示分类是可能的。我们分析了这种分类方法在HTTPS上的Safari的性能。基于大量的离线和在线流量分类实验,我们证明了该方法可以实时独立地将每个视频片段分类到一个质量表示层中,平均准确率为96.13%。
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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