Malicious Host Detection by Imaging SYN Packets and A Neural Network

Ryo Nakamura, Y. Sekiya, Daisuke Miyamoto, Kazuya Okada, Tomohiro Ishihara
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引用次数: 5

Abstract

As is the case for recently networked systems, traffic analysis that detects malicious hosts is one of the most important issues in achieving better security. Many methods for detecting cyber attacks have been proposed; however, methods that specialize in detecting and identifying specific attacks will be obsolete in the near future. Instead of identifying types of cyber attacks, we propose a novel method to detect malicious hosts based on their behavior characteristics when they send SYN packets. Our method does not identify types of cyber attacks. It detects malicious hosts suspiciously sending SYN packets. This paper shows that (1) we have developed a method to convert a series of SYN packets to a visual image as input for neural networks, (2) the image represents distinctive features of the behavior of the hosts, and (3) our convolutional neural network model successfully distinguishes malicious host from normal ones. Our preliminary evaluation using real-word traffic shows that the detection accuracy for identifying malicious hosts is over 98% regardless of types of attack.
基于SYN报文成像和神经网络的恶意主机检测
与最近的网络系统一样,检测恶意主机的流量分析是实现更好的安全性的最重要问题之一。人们提出了许多检测网络攻击的方法;然而,专门用于检测和识别特定攻击的方法将在不久的将来过时。我们提出了一种基于恶意主机发送SYN包时的行为特征来检测恶意主机的新方法,而不是识别网络攻击的类型。我们的方法不能识别网络攻击的类型。检测可疑恶意主机发送SYN报文。本文表明:(1)我们开发了一种将一系列SYN数据包转换为视觉图像作为神经网络输入的方法,(2)图像代表了主机行为的显著特征,(3)我们的卷积神经网络模型成功地区分了恶意主机和正常主机。我们使用真实流量进行的初步评估表明,无论攻击类型如何,识别恶意主机的检测准确率都超过98%。
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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