非结构化P2P组播视频流实时识别研究

Chaobin Liu, Jie He, Qiang Guo
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引用次数: 0

摘要

P2P网络电视业务的快速发展带来了许多潜在的安全问题,而准确识别非结构化的P2P组播视频流是有效管理P2P网络电视业务的基础。本文提出了一种基于支持向量机的识别方法。通过流特征和行为特征对网络流量进行先后分离,最终识别出非结构化P2P组播视频流的应用。该方法不仅能够适应网络的不断变化,而且能够在线识别非结构化P2P组播视频流的已知和未知流。实验表明,该方法的平均识别准确率为90.9%,识别时间约为5分钟。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-Time Identification Research of Unstructured P2P Multicast Video Streaming
Many potential safety problems result from the rapid development of P2P IPTV business, and the foundation for effectively managing the business is to accurately identify unstructured P2P multicast video streaming. In this paper, an identification method is proposed which is based on support vector machines. The network traffic is successively separated by flow features and behavior features, and finally the applications of unstructured P2P multicast video streaming could be identified. The method not only could adapt to the continuous changes of network, but also could identify the known and unknown flow of unstructured P2P multicast video streaming online. The experiments show that the average identification accuracy of the method is 90.9%, and the identification time is about 5 minutes.
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