MoViDiff:为移动视频应用提供差异化服务

Satadal Sengupta, V. Yadav, Yash Saraf, Harshit Gupta, Niloy Ganguly, Sandip Chakraborty, Pradipta De
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引用次数: 4

摘要

在对互联网流量激增做出贡献的移动应用中,视频应用是最大的贡献者之一。这些视频应用程序大多使用HTTP/HTTPS隧道,使得难以应用基于端口或基于数据包数据的流识别。由于缺乏移动应用的流量识别机制,这使得网络运营商对基于应用的服务差异化实施带宽监管政策具有挑战性。我们探索了视频流的数据包数据不可知特征,即数据包大小,以识别流。我们表明,训练一个分类器可以高精度地从流媒体和交互式视频应用程序中区分数据包是可能的。我们设计并实现了一个叫做MoViDiff的系统,以这个分类器为核心,它允许两种不同类别的视频流量(流媒体和交互式)之间的带宽调节。我们的研究表明,我们可以在流量分类中达到96%的平均准确率,最大准确率高达98%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MoViDiff: Enabling service differentiation for mobile video apps
Among the mobile applications contributing to the surging Internet traffic, video applications are some of the biggest contributors. Most of these video applications use HTTP/HTTPS tunneling making it difficult to apply port based or packet data based identification of flows. This makes it challenging for network operators to enforce bandwidth regulation policies for app based service differentiation due to lack of flow identification mechanisms for mobile apps. We explore a packet data agnostic feature of video flows, namely packet-size, to identify the flows. We show that it is possible to train a classifier that can distinguish packets from streaming and interactive video apps with high accuracy. We design and implement a system, called MoViDiff, with this classifier at the core, that allows bandwidth regulation between video traffic of two different categories, streaming and interactive. We show that we can achieve an average accuracy of 96% in classifying the traffic, with the maximum accuracy reaching as high as 98%.
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