DA COSTA ABREU, Marjory, FAIRHURST, M. and ERBILEK, M. (2015). Exploring gender prediction from iris biometrics. In: 2015 International Conference of the Biometrics Special Interest Group (BIOSIG). IEEE. [Book Section]
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  27292:596772
  Abstract
  Prediction of gender characteristics from iris images has been investigated and some successful results have been reported in the literature, but without considering performance for different iris features and classifiers. This paper investigates for the first time an approach to gender prediction from iris images using different types of features (including a small number of very simple geometric features, texture features and a combination of geometric and texture features) and a more versatile and intelligent classifier structure. Our proposed approaches can achieve gender prediction accuracies of up to 90% in the BioSecure Database.
        
      
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