Steady state RF fingerprinting for identity verification: one class classifier versus customized ensemble

  • Authors:
  • Barnard Kroon;Susan Bergin;Irwin O. Kennedy;Georgina O'Mahony Zamora

  • Affiliations:
  • Department of Computer Science, National University of Ireland, Maynooth, Co. Kildare, Ireland;Department of Computer Science, National University of Ireland, Maynooth, Co. Kildare, Ireland;Bell Laboratories, Alcatel-Lucent, Dublin 15, Ireland;Department of Computer Science, National University of Ireland, Maynooth, Co. Kildare, Ireland

  • Venue:
  • AICS'09 Proceedings of the 20th Irish conference on Artificial intelligence and cognitive science
  • Year:
  • 2009

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Abstract

Mobile phone proliferation and increasing broadband penetration presents the possibility of placing small cellular base stations within homes to act as local access points. This can potentially lead to a very large increase in authentication requests hitting the centralized authentication infrastructure unless access is mediated at a lower protocol level. A study was carried out to examine the effectiveness of using Support Vector Machines to accurately identify if a mobile phone should be allowed access to a local cellular base station using differences imbued upon the signal as it passes through the analogue stages of its radio transmitter. Whilst allowing prohibited transmitters to gain access at the local level is undesirable and costly, denying service to a permitted transmitter is simply unacceptable. Two different learning approaches were employed, the first using One Class Classifiers (OCCs) and the second using customized ensemble classifiers. OCCs were found to perform poorly, with a true positive (TP) rate of only 50% (where TP refers to correctly identifying a permitted transmitter) and a true negative (TN) rate of 98% (where TN refers to correctly identifying a prohibited transmitter). The customized ensemble classifier approach was found to considerably outperform the OCCs with a 97% TP rate and an 80% TN rate.