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Programming and Computer Software

, Volume 45, Issue 3, pp 133–139 | Cite as

A Semi-Automatic Method of Collecting Samples for Learning a Face Identification Algorithm

  • N. Yu. BagrovEmail author
  • A. S. KonushinEmail author
  • V. S. KonushinEmail author
Article
  • 6 Downloads

Abstract

A method for the semi-automatic collection of samples for learning face identification algorithms is proposed. In the experimental evaluation, the operation of the face identification algorithm on ethnically diverse data is considered. The algorithm operation is also evaluated on the data with a wide variation of ages. The proposed method makes it possible to expand the training sample by indexing new data.

Notes

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Copyright information

© 2019 2019

Authors and Affiliations

  1. 1. Faculty of Computational Mathematics and Cybernetics, Moscow State UniversityMoscowRussia
  2. 2.Video Analysis TechnologiesMoscowRussia

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