DEVELOPMENT OF INTELLECTUAL RECOGNITION AND IDENTIFICATION SYSTEM IN REAL TIME

  • S. Boranbaev Eurasian National University named after L.N. Gumilyov, Nur-Sultan, Kazakhstan
  • M. Amirtaev Eurasian National University named after L.N. Gumilyov, Nur-Sultan, Kazakhstan
Keywords: face recognition system

Abstract

In this study, a real-time face recognition system was built using the Open Face tools of the Open CV library. The article describes the methodology for creating a system and the results of its testing. The Open CV library has various modules that perform a variety of tasks. In this work, the Open CV modules were used for face recognition in images and face identification in real time. In addition, the HOG method was applied in order to detect a person from the front of their face. After performing the HOG method, 128 face measurements were obtained using the image coding method. Then, a convolutional neural network was used to identify people's faces using a linear algorithm

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Published
2021-04-15
How to Cite
Boranbaev , S., and M. Amirtaev. 2021. “DEVELOPMENT OF INTELLECTUAL RECOGNITION AND IDENTIFICATION SYSTEM IN REAL TIME”. EurasianUnionScientists 6 (3(84), 9-18. https://archive.euroasia-science.ru/index.php/Euroasia/article/view/689.