A study of analyzing network traffic as images in real-time

S. Kim, A. Reddy
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引用次数: 54

Abstract

This paper presents NetViewer, a network measurement approach that can simultaneously detect, identify and visualize attacks and anomalous traffic in real-time by passively monitoring packet headers. We propose to represent samples of network packet header data as frames or images. With such a formulation, a series of samples can be seen as a sequence of frames or video. This enables techniques from image processing and video compression to be applied to the packet header data to reveal interesting properties of traffic. We show that "scene change analysis" can reveal sudden changes in traffic behavior or anomalies. We also show that "motion prediction" techniques can be employed to understand the patterns of some of the attacks. We show that it may be feasible to represent multiple pieces of data as different colors of an image enabling a uniform treatment of multidimensional packet header data. We compare NetViewer with classical detection theory based Neyman-Pearson test and an IDS tool.
网络流量实时图像分析的研究
本文介绍了一种网络测量方法NetViewer,它可以通过被动监控数据包头来实时检测、识别和可视化攻击和异常流量。我们建议将网络包头数据的样本表示为帧或图像。有了这样的公式,一系列的样本可以被看作是一个序列的帧或视频。这使得图像处理和视频压缩技术可以应用于包头数据,以揭示流量的有趣属性。我们展示了“场景变化分析”可以揭示交通行为的突然变化或异常。我们还展示了“运动预测”技术可以用来理解一些攻击的模式。我们表明,将多个数据块表示为图像的不同颜色可能是可行的,从而可以对多维包头数据进行统一处理。我们将NetViewer与基于经典检测理论的Neyman-Pearson测试和IDS工具进行了比较。
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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