Intrusion Detection System for IP Multimedia Subsystem using K-Nearest Neighbor classifier

A. H. Farooqi, Ali Munir
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引用次数: 12

Abstract

IP multimedia subsystem (IMS) is a new next generation networking architecture that will provide better quality of service, charging infrastructure and security. The basic idea behind IMS is convergence; providing a single interface to different traditional or modern networking architectures allowing better working environment for the end users. IMS is still not commercially adopted and used but research is in progress to explore it. IMS is an IP based overlay next generation network architecture. It inherent number of security threats of session initiation protocol (SIP), TCP, UDP etc as it uses SIP and IP protocols. Some of them can degrade the performance of IMS seriously and may cause DoS or DDoS attacks. The paper presents a new approach keeping a vision of secure IMS based on intrusion detection system (IDS) using k-nearest neighbor (KNN) as classifier. The KNN classifier can effectively detect intrusive attacks and achieve a low false positive rate. It can distinguish between the normal behavior of the system or abnormal. In this paper, we have focused on the key element of IMS core known as proxy call session control function (PCSCF). Network based anomaly detection mechanism is proposed using KNN as anomaly detector. Experiments are performed on OpenIMS core and the result shows that IMS is vulnerable to different types of attacks such as UDP flooding, IP spoofing that can cause DoS. KNN classifier effectively distinguishes the behavior of the system as normal or intrusive and achieve low false positive rate.
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基于k近邻分类器的IP多媒体子系统入侵检测系统
IP多媒体子系统(IMS)是一种新的下一代网络体系结构,它将提供更好的服务质量、收费基础设施和安全性。IMS背后的基本思想是融合;为不同的传统或现代网络体系结构提供单一接口,为最终用户提供更好的工作环境。IMS仍未在商业上采用和使用,但正在进行研究以探索它。IMS是一种基于IP的下一代覆盖网络体系结构。由于它使用SIP和IP协议,它固有的会话发起协议(SIP)、TCP、UDP等安全威胁的数量。其中一些会严重降低IMS的性能,并可能引起DoS或DDoS攻击。本文提出了一种基于入侵检测系统(IDS)的基于k近邻(KNN)分类器的安全IMS实现方法。KNN分类器可以有效检测入侵攻击,实现低误报率。它可以区分系统的正常或异常行为。在本文中,我们重点讨论了IMS核心的关键元素——代理呼叫会话控制功能(PCSCF)。提出了一种以KNN作为异常检测器的基于网络的异常检测机制。在OpenIMS核心上进行了实验,结果表明IMS容易受到不同类型的攻击,如UDP泛洪攻击、IP欺骗攻击等。KNN分类器有效地区分了系统的正常行为和侵入行为,实现了较低的误报率。
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