CHOOSING THE MODEL OF BIOLOGICAL NEURAL NETWORK FOR IMAGE SEGMENTATION OF A BIO-LIQUID FACIE

In the paper, the biological neural network models are analyzed with a purpose to solve the problems of segmentation and pattern recognition when applied to the bio-liquid facies obtained by the cuneiform dehydration method. The peculiarities of the facies’ patterns and the key steps of their digita...

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Main Authors: M. E. Semenov, T.Yu. Zablotskaya
Format: Article
Language:English
Published: KamGU by Vitus Bering 2019-05-01
Series:Vestnik KRAUNC: Fiziko-Matematičeskie Nauki
Subjects:
Online Access:http://krasec.ru/Sem2019261/
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spelling doaj-a597f4543b0f43329470e74bf9334d4f2020-11-24T23:49:11ZengKamGU by Vitus BeringVestnik KRAUNC: Fiziko-Matematičeskie Nauki2079-66412079-665X2019-05-01261789310.26117/2079-6641-2019-26-1-78-93CHOOSING THE MODEL OF BIOLOGICAL NEURAL NETWORK FOR IMAGE SEGMENTATION OF A BIO-LIQUID FACIE M. E. Semenov0T.Yu. Zablotskaya1Federal Research Center «Geophysical Survey of the Russian Academy of Sciences 249035, Obninsk, Lenina av. 189, Russia; Zhukovsky-Gagarin Air Force Academy, 394064, Voronezh, Starykh Bolshevikov Str. 54A, RussiaA. A. Ugarov Technological Institute of National University of Science and Technology «MISIS»(Stary Oskol branch), 309516, Stary Oskol, Mikrorayon Makarenko 42, Russia; Voronezh Institute of Law and Economics (Stary Oskol branch), 309514, Stary Oskol, Lenina Str. 59, RussiaIn the paper, the biological neural network models are analyzed with a purpose to solve the problems of segmentation and pattern recognition when applied to the bio-liquid facies obtained by the cuneiform dehydration method. The peculiarities of the facies’ patterns and the key steps of their digital processing are specified in the frame of the pattern recognition. Feasibility of neural network techniques for the different image data level digital processing is reviewed as well as for image segmentation. The real-life biological neural network architecture concept is described using the mechanisms of the electrical input-output membrane voltage and both induced and endogenic (spontaneous) activities of the neural clusters when spiking. The mechanism of spike initiation is described for metabotropic and ionotropic receptive clusters with the nature of environmental exciting impact specified. Also, the mathematical models of biological neural networks that comprise ot only functional nonlinearities but the hysteretic ones are analyzed and the reasons are given for preference of the mathematical model with delay differential equations is chosen providing its applicability for modeling a single neuron and neural network as well.http://krasec.ru/Sem2019261/biological neural networkhysteresisfacietexture
collection DOAJ
language English
format Article
sources DOAJ
author M. E. Semenov
T.Yu. Zablotskaya
spellingShingle M. E. Semenov
T.Yu. Zablotskaya
CHOOSING THE MODEL OF BIOLOGICAL NEURAL NETWORK FOR IMAGE SEGMENTATION OF A BIO-LIQUID FACIE
Vestnik KRAUNC: Fiziko-Matematičeskie Nauki
biological neural network
hysteresis
facie
texture
author_facet M. E. Semenov
T.Yu. Zablotskaya
author_sort M. E. Semenov
title CHOOSING THE MODEL OF BIOLOGICAL NEURAL NETWORK FOR IMAGE SEGMENTATION OF A BIO-LIQUID FACIE
title_short CHOOSING THE MODEL OF BIOLOGICAL NEURAL NETWORK FOR IMAGE SEGMENTATION OF A BIO-LIQUID FACIE
title_full CHOOSING THE MODEL OF BIOLOGICAL NEURAL NETWORK FOR IMAGE SEGMENTATION OF A BIO-LIQUID FACIE
title_fullStr CHOOSING THE MODEL OF BIOLOGICAL NEURAL NETWORK FOR IMAGE SEGMENTATION OF A BIO-LIQUID FACIE
title_full_unstemmed CHOOSING THE MODEL OF BIOLOGICAL NEURAL NETWORK FOR IMAGE SEGMENTATION OF A BIO-LIQUID FACIE
title_sort choosing the model of biological neural network for image segmentation of a bio-liquid facie
publisher KamGU by Vitus Bering
series Vestnik KRAUNC: Fiziko-Matematičeskie Nauki
issn 2079-6641
2079-665X
publishDate 2019-05-01
description In the paper, the biological neural network models are analyzed with a purpose to solve the problems of segmentation and pattern recognition when applied to the bio-liquid facies obtained by the cuneiform dehydration method. The peculiarities of the facies’ patterns and the key steps of their digital processing are specified in the frame of the pattern recognition. Feasibility of neural network techniques for the different image data level digital processing is reviewed as well as for image segmentation. The real-life biological neural network architecture concept is described using the mechanisms of the electrical input-output membrane voltage and both induced and endogenic (spontaneous) activities of the neural clusters when spiking. The mechanism of spike initiation is described for metabotropic and ionotropic receptive clusters with the nature of environmental exciting impact specified. Also, the mathematical models of biological neural networks that comprise ot only functional nonlinearities but the hysteretic ones are analyzed and the reasons are given for preference of the mathematical model with delay differential equations is chosen providing its applicability for modeling a single neuron and neural network as well.
topic biological neural network
hysteresis
facie
texture
url http://krasec.ru/Sem2019261/
work_keys_str_mv AT mesemenov choosingthemodelofbiologicalneuralnetworkforimagesegmentationofabioliquidfacie
AT tyuzablotskaya choosingthemodelofbiologicalneuralnetworkforimagesegmentationofabioliquidfacie
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