3,431 research outputs found

    Comparing P2PTV Traffic Classifiers

    Get PDF
    Peer-to-Peer IP Television (P2PTV) applications represent one of the fastest growing application classes on the Internet, both in terms of their popularity and in terms of the amount of traffic they generate. While network operators require monitoring tools that can effectively analyze the traffic produced by these systems, few techniques have been tested on these mostly closed-source, proprietary applications. In this paper we examine the properties of three traffic classifiers applied to the problem of identifying P2PTV traffic. We report on extensive experiments conducted on traffic traces with reliable ground truth information, highlighting the benefits and shortcomings of each approach. The results show that not only their performance in terms of accuracy can vary significantly, but also that their usability features suggest different effective aspects that can be integrate

    SUTMS - Unified Threat Management Framework for Home Networks

    Get PDF
    Home networks were initially designed for web browsing and non-business critical applications. As infrastructure improved, internet broadband costs decreased, and home internet usage transferred to e-commerce and business-critical applications. Today’s home computers host personnel identifiable information and financial data and act as a bridge to corporate networks via remote access technologies like VPN. The expansion of remote work and the transition to cloud computing have broadened the attack surface for potential threats. Home networks have become the extension of critical networks and services, hackers can get access to corporate data by compromising devices attacked to broad- band routers. All these challenges depict the importance of home-based Unified Threat Management (UTM) systems. There is a need of unified threat management framework that is developed specifically for home and small networks to address emerging security challenges. In this research, the proposed Smart Unified Threat Management (SUTMS) framework serves as a comprehensive solution for implementing home network security, incorporating firewall, anti-bot, intrusion detection, and anomaly detection engines into a unified system. SUTMS is able to provide 99.99% accuracy with 56.83% memory improvements. IPS stands out as the most resource-intensive UTM service, SUTMS successfully reduces the performance overhead of IDS by integrating it with the flow detection mod- ule. The artifact employs flow analysis to identify network anomalies and categorizes encrypted traffic according to its abnormalities. SUTMS can be scaled by introducing optional functions, i.e., routing and smart logging (utilizing Apriori algorithms). The research also tackles one of the limitations identified by SUTMS through the introduction of a second artifact called Secure Centralized Management System (SCMS). SCMS is a lightweight asset management platform with built-in security intelligence that can seamlessly integrate with a cloud for real-time updates

    Towards the Deployment of Machine Learning Solutions in Network Traffic Classification: A Systematic Survey

    Get PDF
    International audienceTraffic analysis is a compound of strategies intended to find relationships, patterns, anomalies, and misconfigurations, among others things, in Internet traffic. In particular, traffic classification is a subgroup of strategies in this field that aims at identifying the application's name or type of Internet traffic. Nowadays, traffic classification has become a challenging task due to the rise of new technologies, such as traffic encryption and encapsulation, which decrease the performance of classical traffic classification strategies. Machine Learning gains interest as a new direction in this field, showing signs of future success, such as knowledge extraction from encrypted traffic, and more accurate Quality of Service management. Machine Learning is fast becoming a key tool to build traffic classification solutions in real network traffic scenarios; in this sense, the purpose of this investigation is to explore the elements that allow this technique to work in the traffic classification field. Therefore, a systematic review is introduced based on the steps to achieve traffic classification by using Machine Learning techniques. The main aim is to understand and to identify the procedures followed by the existing works to achieve their goals. As a result, this survey paper finds a set of trends derived from the analysis performed on this domain; in this manner, the authors expect to outline future directions for Machine Learning based traffic classification

    Salattujen komento- ja ohjauskanavien havaitseminen verkkosormenjälkien avulla

    Get PDF
    The threat landscape of the Internet has evolved drastically into an environment where malware are increasingly developed by financially motivated cybercriminal groups who mirror legitimate businesses in their structure and processes. These groups develop sophisticated malware with the aim of transforming persistent control over large numbers of infected machines into profit. Recent developments have shown that malware authors seek to hide their Command and Control channels by implementing custom application layer protocols and using custom encryption algorithms. This technique effectively thwarts conventional pattern-based detection mechanisms. This thesis presents network fingerprints, a novel way of performing network-based detection of encrypted Command and Control channels. The goal of the work was to produce a proof of concept system that is able to generate accurate and reliable network signatures for this purpose. The thesis presents and explains the individual phases of an analysis pipeline that was built to process and analyze malware network traffic and to produce network fingerprint signatures. The analysis system was used to generate network fingerprints that were deployed to an intrusion detection system in real-world networks for a test period of 17 days. The experimental phase produced 71 true positive detections and 9 false positive detections, and therefore proved that the established technique is capable of performing detection of targeted encrypted Command and Control channels. Furthermore, the effects on the performance of the underlying intrusion detection system were measured. These results showed that network fingerprints induce an increase of 2-9% to the packet loss and a small increase to the overall computational load of the intrusion detection system.Internetin uhkaympäristön radikaalin kehittymisen myötä edistyksellisiä haittaohjelmia kehittävät kyberrikollisryhmät ovat muuttuneet järjestäytyneiksi ja taloudellista voittoa tavoitteleviksi organisaatioiksi. Nämä rakenteiltaan ja prosesseiltaan laillisia yrityksiä muistuttavat organisaatiot pyrkivät saastuttamaan suuria määriä tietokoneita ja saavuttamaan yhtämittaisen hallintakyvyn. Tutkimukset ovat osoittaneet, että tuntemattomien salausmenetelmien ja uusien sovellustason protokollien käyttö haittaohjelmien komento- ja hallintakanavien piilottamiseksi tietoverkoissa ovat kasvussa. Tämän kaltaiset tekniikat vaikeuttavat oleellisesti perinteisiä toistuviin kuvioihin perustuvia havaitsemismenetelmiä. Tämä työ esittelee salattujen komento- ja hallintakanavien havaitsemiseen suunnitellun uuden konseptin, verkkosormenjäljet. Työn tavoitteena oli toteuttaa prototyyppijärjestelmä, joka analysoi ja prosessoi haittaohjelmaliikennettä, sekä kykenee tuottamaan tarkkoja ja tehokkaita haittaohjelmakohtaisia verkkosormenjälkitunnisteita. Työ selittää verkkosormenjälkien teorian ja käy yksityiskohtaisesti läpi kehitetyn järjestelmän eri osiot ja vaiheet. Järjestelmästä tuotetut verkkosormenjäljet asennettiin 17 päiväksi oikeisiin tietoverkkoihin osaksi tunkeilijan havaitsemisjärjestelmää. Testijakso tuotti yhteensä 71 oikeaa haittaohjelmahavaintoa sekä 9 väärää havaintoa. Menetelmän käyttöönoton vaikutukset tunkeilijan havaitsemisjärjestelmän suorituskykyyn olivat 2 – 9 % kasvu pakettihäviössä ja pieni nousu laskennallisessa kokonaiskuormituksessa. Tulokset osoittavat, että kehitetty järjestelmä kykenee onnistuneesti analysoimaan haittaohjelmaliikennettä sekä tuottamaan salattuja komento- ja hallintakanavia havaitsevia verkkosormenjälkiä

    Automatic Test Framework Anomaly Detection in Home Routers

    Get PDF
    In a modern world most people have a home network and multiple devices behind it. These devices include simple IoT, that require external protection not to join a botnet. This protection can be granted by a security router with a feature of determining the usual network traffic of a device and alerting its unusual behaviour. This work is dedicated to creating a testbed to verify such router's work. The test bed includes tools to capture IoT traffic, edit and replay it. Created tool supports UDP, TCP, partially ICMP and is extendable to other protocols. UDP and TCP protocols are replayed using OS sockets at transport network layer. The methods described have proved to work on a real setup

    Building an Emulation Environment for Cyber Security Analyses of Complex Networked Systems

    Full text link
    Computer networks are undergoing a phenomenal growth, driven by the rapidly increasing number of nodes constituting the networks. At the same time, the number of security threats on Internet and intranet networks is constantly growing, and the testing and experimentation of cyber defense solutions requires the availability of separate, test environments that best emulate the complexity of a real system. Such environments support the deployment and monitoring of complex mission-driven network scenarios, thus enabling the study of cyber defense strategies under real and controllable traffic and attack scenarios. In this paper, we propose a methodology that makes use of a combination of techniques of network and security assessment, and the use of cloud technologies to build an emulation environment with adjustable degree of affinity with respect to actual reference networks or planned systems. As a byproduct, starting from a specific study case, we collected a dataset consisting of complete network traces comprising benign and malicious traffic, which is feature-rich and publicly available
    corecore