Feature Set Selection for On-Line Signatures Using Selection of Regression Variables

  • Desislava Boyadzieva
  • Georgi Gluhchev
Part of the Lecture Notes in Computer Science book series (LNCS, volume 6744)

Abstract

In this paper we approach feature set selection phase in signature verification by applying the method for selection of regression variables based on Mallows Cp criterion for regression. In this way we identify best feature subsets of various sizes for each user of our database on the basis of his/her ten genuine and ten random forgery on-line signatures. Among these subsets we select the best subset that have Cp value closest to p, where p is the number of regression coefficients. Thus, we obtain for each user the best feature subset of a different size. Our aim is to check whether there are common features among best feature subsets for all users which will justify the removal of the rest features from the initial feature set. The results obtained with the database of 140 signatures collected from fourteen users demonstrated that we cannot restrict to common feature set valid for all users but instead of that we have to consider each user best feature set separately in signature verification.

Keywords

Signature verification feature selection on-line signatures selection of regression variables Mallows Cp criterion 

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Copyright information

© Springer-Verlag Berlin Heidelberg 2011

Authors and Affiliations

  • Desislava Boyadzieva
    • 1
  • Georgi Gluhchev
    • 1
  1. 1.IICT-BASSofiaBulgaria

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