MoveSteg: A Method of Network Steganography Detection
Journal Title: International Journal of Electronics and Telecommunications - Year 2016, Vol 62, Issue 4
Abstract
This article presents a new method for detecting a source point of time based network steganography - MoveSteg. A steganography carrier could be an example of multimedia stream made with packets. These packets are then delayed intentionally to send hidden information using time based steganography methods. The presented analysis describes a method that allows finding the source of steganography stream in network that is under our management
Authors and Affiliations
Krzysztof Szczypiorski, Tomasz Tyl
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