location:Home > 2019 Vol.2 Dec. No.6 > Research on Fingerprint Image Adaptive Recognition Based on New Genetic Algorithm

2019 Vol.2 Dec. No.6

  • Title: Research on Fingerprint Image Adaptive Recognition Based on New Genetic Algorithm
  • Name: Itou Natsumi
  • Company: Shonan Institute of Technology
  • Abstract:

    Adaptive recognition methods are widely used in fingerprint image recognition applications. However, due to the diversity of fingerprint image data, traditional adaptive recognition methods have the disadvantages of low recognition and low accuracy. Therefore, an adaptive fingerprint image recognition method based on a new genetic algorithm is proposed. The feature enhancement calculation is used to organize the multivariate data, and the fingerprint image information is processed through feature transformation recognition to complete the fingerprint image data for rapid identification. The experimental data show that the new fingerprint algorithm based on the new genetic algorithm adaptive recognition method is 20.6% more accurate than the traditional method, which is more suitable for adaptive fingerprint image recognition.

  • Keyword: New Genetic Algorithm; Fingerprint Image; Adaptive Recognition
  • DOI: 10.12250/jpciams2019060652
  • Citation form: Itou Natsumi.Research on Fingerprint Image Adaptive Recognition Based on New Genetic Algorithm[J]. Computer Informatization and Mechanical System, 2019, vol. 2, pp. 72-76.
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Tsuruta Institute of Medical Information Technology
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