Abstract:
The use of application-layer tunnels has become more popular nowadays. By using encrypted tunnels for prohibited application such as peer-to-peer file sharing it is easy ...Show MoreMetadata
Abstract:
The use of application-layer tunnels has become more popular nowadays. By using encrypted tunnels for prohibited application such as peer-to-peer file sharing it is easy to gain access to restricted networks. Application-layer tunnels provide a possibility to bypass network defenses which is even more useful for malicious users trying to avoid detection. The accurate identification of application flows in encrypted tunnels is important for the network security and management purposes. Traditional network traffic classification methods based on port numbers or pattern-matching mechanisms are practically useless in identifying application flows inside an encrypted tunnel, therefore another approach is needed. In this paper, we propose a two-phased method for classifying SSH tunneled application flows in real time. The classification is based on the statistical features of the network flows. The first classification phase identifies the SSH connection while the second classification phase detects the tunneled application. A simple K-Means clustering algorithm is utilized in classification. We evaluated our method using manually generated packet traces. The results were promising; over 94% of all flow samples were classified correctly, while untrained application flow samples were detected as unknown at high precision.
Date of Conference: 04-08 July 2011
Date Added to IEEE Xplore: 11 August 2011
ISBN Information: