Classifier ensembles and optimization techniques to improve the performance of cancellable fingerprint

  • Authors:
  • Anne M. P. Canuto;Michael C. Fairhurst;Fernando Pintro;João C. Xavier Junior;Antonino Feitosa Neto;Luis Marcos G. Gonçalves

  • Affiliations:
  • (Correspd. E-mail: anne@dimap.ufrn.br) Department of Informatics and Applied Mathematics, Federal University of RN, Natal Brazil and School of Engineering and Digital Arts, University of Kent, Can ...;School of Engineering and Digital Arts, University of Kent, Canterbury, UK;Department of Informatics and Applied Mathematics, Federal University of RN, Natal Brazil;Computing and Automation Engineering Department, Federal University of RN, Natal Brazil;Department of Informatics and Applied Mathematics, Federal University of RN, Natal Brazil;Computing and Automation Engineering Department, Federal University of RN, Natal Brazil

  • Venue:
  • International Journal of Hybrid Intelligent Systems - Feature and algorithm selection with Hybrid Intelligent Techniques
  • Year:
  • 2011

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Abstract

The main aim of biometric-based identification systems is to automatically recognize individuals based on their physiological and/or behavioural characteristics such as fingerprint, face, hand-geometry, among others. These systems offer several advantages over traditional forms of identity protection. However, there are still some important aspects that need to be addressed in these systems. The main questions are concerned with the security of biometric authentication systems since it is important to ensure the integrity and public acceptance of these systems. In order to avoid the problems arising from compromised biometric templates, the concept of cancellable biometrics has recently been introduced. The concept is to transform a biometric trait into a new representation for enrolment and matching. Although cancellable biometrics were proposed to solve privacy concerns, the concept raises new issues, since they make the authentication problem more complex and difficult to solve. Thus, more effective authentication structures are needed to perform these tasks. In this paper, we investigate the use of ensemble systems in cancellable biometrics, using fingerprint-based identification to illustrate the possible benefits accruing. In order to increase the effectiveness of the proposed ensemble systems, three feature selection methods will be used to distribute the attributes among the individual classifiers of an ensemble. The main aim of this paper is to analyse the performance of such well-established structures on transformed biometric data to determine whether they have a positive effect on the performance of this complex and difficult task.