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Seq2Img: A Sequence-to-Image based Approach Towards IP Traffic Classification using Convolutional Neural Networks

机译:SEQ2IMG:基于序列到图像基于IP流量分类的方法,卷积神经网络

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IP traffic classification has been a vitally important topic that attracts persistent interest in the networking and machine learning communities for past decades. While there exist quite a number of works applying machine learning techniques to realize IP traffic classification, most works suffer from limitations like either heavily depending on handcrafted features or be only able to handle offline traffic classification. To get rid of the aforementioned weakness, in this paper, we propose our online Convolutional Neural Networks (CNNs) based traffic classification framework named Seq2Img. The basic idea is to employ a compact nonparametric kernel embedding based method to convert early flow sequences into images which fully capture the static and dynamic behaviors of different applications and avoid using handcrafted features that might cause loss of information. A CNN is then applied on the generated images to obtain traffic classification results. Experiments on real network traffic are conducted and encouraging results justify the efficacy of our proposed approach.
机译:IP流量分类一直是吸引在过去几十年的网络和机器学习社区持续关注的非常重要的课题。虽然存在相当多的应用机器学习技术来实现IP流量分类的作品,大部分作品从限制受这样既严重依赖于手工制作的功能或仅能够处理离线流量分类。为了摆脱上述弱点,在本文中,我们提出我们的在线卷积神经网络(细胞神经网络)基于流分类命名Seq2Img框架。其基本思路是采用紧凑的非参数核嵌入基础的方法尽早转流序列为充分利用捕获功能,手工制作,可能会导致信息丢失的静态和不同的应用程序的动态行为,避免图像。然后,CNN施加在所生成的图像,以获得流分类结果。真实网络流量的实验进行,令人鼓舞的结果证明我们提出的方法的有效性。

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