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dc.coverage.spatialintelligent systems
dc.coverage.spatialcontrol methods
dc.coverage.spatialconvolutional neural network
dc.coverage.spatialactivation functions
dc.coverage.spatialdatabase and knowledge
dc.coverage.spatialdecision making
dc.creatorNikitina M. A.
dc.date2023
dc.date.accessioned2025-08-22T12:18:50Z-
dc.date.available2025-08-22T12:18:50Z-
dc.date.issued2023
dc.identifier.identifierRU\НТБ СГАУ\541738
dc.identifier.citationNikitina, M. A. Evaluation of Neural Network for Automated Classification of Plant Component on Histological Section / M. A. Nikitina // Информационные технологии и нанотехнологии (ИТНТ-2023) : сб. тр. по материалам IX Междунар. конф. и молодеж. шк. (г. Самара, 17-23 апр. 2023 г.): в 6 т. / М-во науки и высш. образования Рос. Федерации, Самар. нац. исслед. ун-т им. С. П. Королева (Самар. ун-т), Ин-т систем обраб. изобр. РАН - Фил. Федер. науч.-исслед. центра "Кристаллография и фотоника" Рос. акад. наук. - Самара : Изд-во Самар. ун-та, 2023Распознавание, обработка и анализ изображений / под ред. В. В. Сергеева. - 2023. - С. 030673.
dc.identifier.urihttp://repo.ssau.ru/jspui/handle/123456789/13171-
dc.description.abstractClassification of plant component on image histological sections is critical for determining non-compliance type of undeclared additiveand further action for technologist, or other responsible person. However, this task is often challenging due to the absence of professional histologists or non-compliance with the conditions of microstructural analysisand also the subjective criteria for evaluation. In this study, we propose a machine learning model that automatically classifies the plant component on images histological sections. Our model uses a convolutional neural network to identify regions of plant components, then aggregates those classifications to infer predominant and minor plant components on histological sections image. We evaluated our model on an independent set of 95 images histological sections. It achieved a kappa score of 0,525 and an agreement of 66,6% with three histologists for classifying the predominant plant component, slightly higher than the inter-histologists kappa score of 0,485 a
dc.languageeng
dc.relation.ispartofИнформационные технологии и нанотехнологии (ИТНТ-2023) : сб. тр. по материалам IX Междунар. конф. и молодеж. шк. (г. Самара, 17-23 апр. 2023 г.): в 6
dc.sourceИнформационные технологии и нанотехнологии (ИТНТ-2023). - Т. 3 : Распознавание, обработка и анализ изображений
dc.subjectintelligent systems
dc.subjectcontrol methods
dc.subjectconvolutional neural network
dc.subjectactivation functions
dc.subjectdatabase and knowledge
dc.subjectdecision making
dc.titleEvaluation of Neural Network for Automated Classification of Plant Component on Histological Section
dc.typeText
dc.citation.spage030673
dc.citation.volume3
local.contributor.authorNikitina M. A.
local.identifier.oldurihttp://repo.ssau.ru/handle/Informacionnye-tehnologii-i-nanotehnologii/Evaluation-of-Neural-Network-for-Automated-Classification-of-Plant-Component-on-Histological-Section-105987
local.identifier.oldurihttp://repo.ssau.ru/handle/Informacionnye-tehnologii-i-nanotehnologii/Evaluation-of-Neural-Network-for-Automated-Classification-of-Plant-Component-on-Histological-Section-105987
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