A minutia-based partial fingerprint recognition system

  • Authors:
  • Tsai-Yang Jea;Venu Govindaraju

  • Affiliations:
  • Center for Unified Biometrics and Sensors, University at Buffalo, State University of New York, Amherst, NY 14228, USA;Center for Unified Biometrics and Sensors, University at Buffalo, State University of New York, Amherst, NY 14228, USA

  • Venue:
  • Pattern Recognition
  • Year:
  • 2005

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Abstract

Matching incomplete or partial fingerprints continues to be an important challenge today, despite the advances made in fingerprint identification techniques. While the introduction of compact silicon chip-based sensors that capture only part of the fingerprint has made this problem important from a commercial perspective, there is also considerable interest in processing partial and latent fingerprints obtained at crime scenes. When the partial print does not include structures such as core and delta, common matching methods based on alignment of singular structures fail. We present an approach that uses localized secondary features derived from relative minutiae information. A flow network-based matching technique is introduced to obtain one-to-one correspondence of secondary features. Our method balances the tradeoffs between maximizing the number of matches and minimizing total feature distance between query and reference fingerprints. A two-hidden-layer fully connected neural network is trained to generate the final similarity score based on minutiae matched in the overlapping areas. Since the minutia-based fingerprint representation is an ANSI-NIST standard [American National Standards Institute, New York, 1993], our approach has the advantage of being directly applicable to existing databases. We present results of testing on FVC2002's DB1 and DB2 databases.