Image processing spots laser beam using parallel-hierarchical network

Authors

  • Леонід Іванович Тимченко State Economic Technological University of Transport Lukashevych 19, Kyiv, Ukraine, 03049, Ukraine
  • Світлана Вячеславівна Наконечна Державний економіко-технологічний університет транспорту вул. Лукашевича, 19, м. Київ, Україна, 03049, Ukraine

DOI:

https://doi.org/10.15587/2313-8416.2014.27536

Keywords:

classification, spots similar image profile of the laser beam, energy center

Abstract

The basic steps for classification and prediction coordinates energy centers image spots of the laser beam, which makes it possible to develop a new intelligent technologies for classification and prediction of the position coordinate their energy centers. Experiments on the comparative evaluation of prediction based on known neural networks, and proposed method using a parallel-hierarchical network was conducted.

Author Biographies

Леонід Іванович Тимченко, State Economic Technological University of Transport Lukashevych 19, Kyiv, Ukraine, 03049

Professor

Department of Telecommunication technologies and automation

Світлана Вячеславівна Наконечна, Державний економіко-технологічний університет транспорту вул. Лукашевича, 19, м. Київ, Україна, 03049

Аспірант

Кафедра телекомунікаційних технологій та автоматики

References

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Published

2014-10-14

Issue

Section

Technical Sciences