Title :
Non-Blind Watermarking of Network Flows
Author :
Houmansadr, A. ; Kiyavash, Negar ; Borisov, Nikita
Author_Institution :
Univ. of Texas at Austin, Austin, TX, USA
Abstract :
Linking network flows is an important problem in intrusion detection as well as anonymity. Passive traffic analysis can link flows, but requires long periods of observation to reduce errors. Active traffic analysis, also known as flow watermarking, allows for better precision and is more scalable. Previous flow watermarks introduce significant delays to the traffic flow as a side effect of using a blind detection scheme; this enables attacks that detect and remove the watermark, while at the same time slowing down legitimate traffic. We propose the first non-blind approach for flow watermarking, called RAINBOW, that improves watermark invisibility by inserting delays hundreds of times smaller than previous blind watermarks, hence reduces the watermark interference on network flows. We derive and analyze the optimum detectors for RAINBOW as well as the passive traffic analysis under different traffic models by using hypothesis testing. Comparing the detection performance of RAINBOW and the passive approach, we observe that both RAINBOW and passive traffic analysis perform similarly good in the case of uncorrelated traffic, however the RAINBOW detector drastically outperforms the optimum passive detector in the case of correlated network flows. This justifies the use of non-blind watermarks over passive traffic analysis even though both approaches have similar scalability constraints. We confirm our analysis by simulating the detectors and testing them against large traces of real network flows.
Keywords :
Internet; computer network security; telecommunication traffic; watermarking; RAINBOW detector; active traffic analysis; blind detection scheme; flow watermarking; hypothesis testing; intrusion detection; legitimate traffic; linking network flows; nonblind watermarking; optimum passive detector; passive traffic analysis; scalability constraints; traffic flow; watermark interference reduction; watermark invisibility; Analytical models; Delays; Detectors; Jitter; Testing; Watermarking; Flow watermarking; hypothesis testing; non-blind watermarking; traffic analysis;
Journal_Title :
Networking, IEEE/ACM Transactions on
DOI :
10.1109/TNET.2013.2272740