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Real-time distributed malicious traffic monitoring for honeypots and network telescopes

机译:蜜罐和网络望远镜的实时分布式恶意流量监控

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Network telescopes and honeypots have been used with great success to record malicious network traffic for analysis, however, this is often done off-line well after the traffic was observed. This has left us with only a cursory understanding of malicious hosts and no knowledge of the software they run, uptime or other malicious activity they may have participated in. This work covers a messaging framework (rDSN) that was developed to allow for the real-time analysis of malicious traffic. This data was captured from multiple, distributed honeypots and network telescopes. Data was collected over a period of two months from these data sensors. Using this data new techniques for malicious host analysis and re-identification in dynamic IP address space were explored. An Automated Reconnaissance (AR) Framework was developed to aid the process of data collection, this framework was responsible for gathering information from malicious hosts through both passive and active fingerprinting techniques. From the analysis of this data; correlations between malicious hosts were identified based on characteristics such as Operating System, targeted service, location and services running on the malicious hosts. An initial investigation in Latency Based Multilateration (LBM), a novel technique to assist in host re-identification was tested and proved successful as a supporting metric for host re-identification.
机译:网络望远镜和蜜罐已被使用巨大成功,以记录恶意网络流量进行分析,然而,在观察到流量后,这通常会脱离线路。这让我们留下了对恶意主机的粗略理解,并不知道他们运行的软件,正常运行时间或其他他们可能参加的恶意活动。这项工作涵盖了开发的消息框架(RDSN),以允许真实的允许恶意交通的时间分析。该数据从多个分布式蜜罐和网络望远镜捕获。从这些数据传感器的两个月内收集数据。探讨了使用此数据进行恶意主机分析和在动态IP地址空间中重新识别的新技术。开发了一种自动侦察(AR)框架以帮助数据收集过程,该框架负责通过被动和主动指纹技术从恶意主机收集信息。从对此数据的分析;根据在恶意主机上运行的操作系统,有针对性的服务,位置和服务等特征来识别恶意主机之间的相关性。测试了基于延迟的多管(LBM)的初步调查,这是一种用于辅助主机重新识别的新技术,并证明是主机重新识别的支持度量。

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