Identification of bean varieties according to color features using artificial neural network

A machine vision and a multilayer perceptron artificial neural network (MLP-ANN) were applied to identify bean varieties, based on color features. Ten varieties of beans, which were grown in Iran (Khomein1, KS21108, Khomein2, Sarab1, Khomein3, KS21409, Akhtar2, Sarab2, KS21205, and G11870) were coll...

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Main Authors: A. Nasirahmadi, N. Behroozi-Khazaei
Format: Article
Language:English
Published: Instituto Nacional de Investigación y Tecnología Agraria y Alimentaria 2013-07-01
Series:Spanish Journal of Agricultural Research
Subjects:
Online Access:http://revistas.inia.es/index.php/sjar/article/view/3942
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spelling doaj-72d5ceb6abf9449c9f4a16ff0b53ab0a2020-11-24T20:47:03ZengInstituto Nacional de Investigación y Tecnología Agraria y AlimentariaSpanish Journal of Agricultural Research2171-92922013-07-0111367067710.5424/sjar/2013113-39421867Identification of bean varieties according to color features using artificial neural networkA. Nasirahmadi0N. Behroozi-Khazaei1Department of Agricultural Machinery. Ferdowsi University of Mashhad. P.O. Box 91775. 1163 Mashhad, IranDepartment of Agricultural Machinery. University of Kurdistan. Sanandaj, IranA machine vision and a multilayer perceptron artificial neural network (MLP-ANN) were applied to identify bean varieties, based on color features. Ten varieties of beans, which were grown in Iran (Khomein1, KS21108, Khomein2, Sarab1, Khomein3, KS21409, Akhtar2, Sarab2, KS21205, and G11870) were collected. Six color features of the bean and six color features of the spots were extracted and used as input for MLP-ANN classifier. In this study, 1000 data sets were used, 70% for training, 15% for validating and 15% for testing. The results showed that the applied machine vision and neural network were able to classify bean varieties with 100% sensibility and specificity, except with Sarab1 with sensibilities of 100%, 73.3%, 60% for the training, validation and testing processes, respectively and KS21108 with specificities of 100%, 79% and 71%, respectively for the aforementioned processes. Considering total sensibilities of 100%, 97.33%, 96% and also specificities of 100%, 97.9% and 97.1% for training, validation and testing of beans, respectively, the ANN could be used as a effective tool for classification of bean varieties.http://revistas.inia.es/index.php/sjar/article/view/3942classificationPhaseolus vulgarisimage processingmachine vision
collection DOAJ
language English
format Article
sources DOAJ
author A. Nasirahmadi
N. Behroozi-Khazaei
spellingShingle A. Nasirahmadi
N. Behroozi-Khazaei
Identification of bean varieties according to color features using artificial neural network
Spanish Journal of Agricultural Research
classification
Phaseolus vulgaris
image processing
machine vision
author_facet A. Nasirahmadi
N. Behroozi-Khazaei
author_sort A. Nasirahmadi
title Identification of bean varieties according to color features using artificial neural network
title_short Identification of bean varieties according to color features using artificial neural network
title_full Identification of bean varieties according to color features using artificial neural network
title_fullStr Identification of bean varieties according to color features using artificial neural network
title_full_unstemmed Identification of bean varieties according to color features using artificial neural network
title_sort identification of bean varieties according to color features using artificial neural network
publisher Instituto Nacional de Investigación y Tecnología Agraria y Alimentaria
series Spanish Journal of Agricultural Research
issn 2171-9292
publishDate 2013-07-01
description A machine vision and a multilayer perceptron artificial neural network (MLP-ANN) were applied to identify bean varieties, based on color features. Ten varieties of beans, which were grown in Iran (Khomein1, KS21108, Khomein2, Sarab1, Khomein3, KS21409, Akhtar2, Sarab2, KS21205, and G11870) were collected. Six color features of the bean and six color features of the spots were extracted and used as input for MLP-ANN classifier. In this study, 1000 data sets were used, 70% for training, 15% for validating and 15% for testing. The results showed that the applied machine vision and neural network were able to classify bean varieties with 100% sensibility and specificity, except with Sarab1 with sensibilities of 100%, 73.3%, 60% for the training, validation and testing processes, respectively and KS21108 with specificities of 100%, 79% and 71%, respectively for the aforementioned processes. Considering total sensibilities of 100%, 97.33%, 96% and also specificities of 100%, 97.9% and 97.1% for training, validation and testing of beans, respectively, the ANN could be used as a effective tool for classification of bean varieties.
topic classification
Phaseolus vulgaris
image processing
machine vision
url http://revistas.inia.es/index.php/sjar/article/view/3942
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