Genetic programming for multibiometrics

  • Authors:
  • Romain Giot;Christophe Rosenberger

  • Affiliations:
  • GREYC Laboratory, ENSICAEN, University of Caen, CNRS, 6 Boulevard Maréchal Juin, 14000 Caen Cedex, France;GREYC Laboratory, ENSICAEN, University of Caen, CNRS, 6 Boulevard Maréchal Juin, 14000 Caen Cedex, France

  • Venue:
  • Expert Systems with Applications: An International Journal
  • Year:
  • 2012

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Abstract

Biometric systems suffer from some drawbacks: a biometric system can provide in general good performances except with some individuals as its performance depends highly on the quality of the capture... One solution to solve some of these problems is to use multibiometrics where different biometric systems are combined together (multiple captures of the same biometric modality, multiple feature extraction algorithms, multiple biometric modalities...). In this paper, we are interested in score level fusion functions application (i.e., we use a multibiometric authentication scheme which accept or deny the claimant for using an application). In the state of the art, the weighted sum of scores (which is a linear classifier) and the use of an SVM (which is a non linear classifier) provided by different biometric systems provide one of the best performances. We present a new method based on the use of genetic programming giving similar or better performances (depending on the complexity of the database). We derive a score fusion function by assembling some classical primitives functions (+,*,-,... ). We have validated the proposed method on three significant biometric benchmark datasets from the state of the art.