HomeNews & eventsPhD Defence Philipp Jakubeit | Gauging the WiFi Landscape for Secure Randomness

PhD Defence Philipp Jakubeit | Gauging the WiFi Landscape for Secure Randomness

Gauging the WiFi Landscape for Secure Randomness

The PhD defence of Philipp Jakubeit will take place in the Waaier Building of the University of Twente and can be followed by a live stream.
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Philipp Jakubeit is a PhD student in the Department Semantics, Cybersecurity & Services. Promotors are prof.dr.ir. M.R. van Steen and prof.dr. A. Peter from the Faculty of Electrical Engineering, Mathematics and Computer Science.

Validating claimed characteristics (authentication) plays a vital role in digital communication. As most digital communication is remote, communicating entities cannot be assured of the opponent's identity a priori. Further, not only humans, but programs need to validate each others' claims. From classical authentication factors: knowledge, possession, inherence, and location, we focus on location combined with possession and inherence aspects. We start by the observation that location is not required to be `localizing'. Localization is a prerequisite only in systems that seek to contextualize a location. In contrast, localization has a privacy cost (e.g., tracking). Hence, the key question becomes, ‘Has the entity logged in from this location before?’. We investigate how to describe a location by non-localizing information in terms of WiFi signals and their compositions.

We focussed on two main concepts:

Fingerprinting a location in terms of WiFi signals.

Deriving a location specific key from WiFi signals.

Fingerprinting a location allows for strengthening the characteristics an entity can claim by extending the set of options with non-localizing location claims. Deriving a location-specific key provides a method of extracting a volatile key from WiFi measurements. We evaluate the proposed methods across various locations and for various durations.

Our experiments and evaluations confirm the feasibility and effectiveness of extracting randomness from WiFi signals for the security applications of authentication and key derivation..