Structural-functional model of a parallel-hierarchical optical network as a systematic tool for artificial intelligence methods
Author
Tymchenko, Leonid
Kokriatska, Natalia
Tverdomed, Volodymyr
Pavlov, Sergii
Bondarenko, Zlata
Vitiuk, Anna
Didenko, Yurii
Semenova, Liudmyla
Zhuk, Dmytro
Sawicki, Daniel
Amirgaliyev, Yedilkhan
Smailova, Saule
Павлов, С. В.
Бондаренко, З. В.
Вітюк, А. В.
Date
2023Metadata
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- Наукові роботи каф. ММЕ [358]
Abstract
The article discusses the challenges of real-time data processing and analyzes various methods used to solve them, with a focus on image processing. It points out the limitations of existing methods and argues for the need to use more effective and modern technologies, proposing parallel-hierarchical networks as a promising solution. The article provides a detailed description of the structural-functional model of this type of network, which involves cyclically transforming the input data matrix using a \"common part\" criterion and an array evolution operator until a set of individual elements is formed. The proposed model is expected to improve real-time image recognition and can potentially be applied to other fields by using the \"common part\" criterion.
URI:
http://ir.lib.vntu.edu.ua//handle/123456789/41437