研究s变换在检测拒绝服务攻击和探测攻击中的效用

S. Pukkawanna, H. Hazeyama, Y. Kadobayashi, S. Yamaguchi
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引用次数: 2

摘要

拒绝服务(DoS)和探测攻击正变得越来越现代和复杂,以逃避入侵检测系统(ids)的检测,并增加对网络服务可用性的潜在威胁。对于使用基于误用的ids的网络运营商来说,检测这些攻击是相当困难的,因为他们需要看穿攻击者,并通过添加新的准确攻击签名来升级他们的ids。在本文中,我们提出了一种新的基于信号和图像处理的方法来检测网络探针和DoS攻击,其中攻击不需要先验知识。该方法使用一种称为s变换的时频表示技术,它是小波变换的扩展,可以揭示交通信号中由攻击引起的异常频率成分(例如,数据包数量的时间序列)。首先,s变换将交通信号转换成描述交通信号时频特性的二维图像。表现异常的频率被发现为图像中的异常区域。其次,使用Otsu方法检测异常区域,识别攻击发生的时间。我们用几种网络探测和DoS攻击(如端口扫描、数据包洪水攻击和低强度DoS攻击)评估了所提出方法的有效性。实验结果表明,该方法能够有效地检测到针对真实互联网产生的探测和DoS攻击流。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigating the utility of S-transform for detecting Denial-of-Service and probe attacks
Denial-of-Service (DoS) and probe attacks are growing more modern and sophisticated in order to evade detection by Intrusion Detection Systems (IDSs) and to increase the potent threat to the availability of network services. Detecting these attacks is quite tough for network operators using misuse-based IDSs because they need to see through attackers and upgrade their IDSs by adding new accurate attack signatures. In this paper, we proposed a novel signal and image processing-based method for detecting network probe and DoS attacks in which prior knowledge of attacks is not required. The method uses a time-frequency representation technique called S-transform, which is an extension of Wavelet Transform, to reveal abnormal frequency components caused by attacks in a traffic signal (e.g., a time-series of the number of packets). Firstly, S-Transform converts the traffic signal to a two-dimensional image which describes time-frequency behavior of the traffic signal. The frequencies that behave abnormally are discovered as abnormal regions in the image. Secondly, Otsu's method is used to detect the abnormal regions and identify time that attacks occur. We evaluated the effectiveness of the proposed method with several network probe and DoS attacks such as port scans, packet flooding attacks, and a low-intensity DoS attack. The results clearly indicated that the method is effective for detecting the probe and DoS attack streams which were generated to real-world Internet.
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