Cargando…

Computer-Aided Multiclass Classification of Corn from Corn Images Integrating Deep Feature Extraction

Corn has great importance in terms of production in the field of agriculture and animal feed. Obtaining pure corn seeds in corn production is quite significant for seed quality. For this reason, the distinction of corn seeds that have numerous varieties plays an essential role in marketing. This stu...

Descripción completa

Detalles Bibliográficos
Autores principales: Kishore, Bhamidipati, Yasar, Ali, Taspinar, Yavuz Selim, Kursun, Ramazan, Cinar, Ilkay, Shankar, Venkatesh Gauri, Koklu, Murat, Ofori, Isaac
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9385333/
https://www.ncbi.nlm.nih.gov/pubmed/35990122
http://dx.doi.org/10.1155/2022/2062944
_version_ 1784769568338608128
author Kishore, Bhamidipati
Yasar, Ali
Taspinar, Yavuz Selim
Kursun, Ramazan
Cinar, Ilkay
Shankar, Venkatesh Gauri
Koklu, Murat
Ofori, Isaac
author_facet Kishore, Bhamidipati
Yasar, Ali
Taspinar, Yavuz Selim
Kursun, Ramazan
Cinar, Ilkay
Shankar, Venkatesh Gauri
Koklu, Murat
Ofori, Isaac
author_sort Kishore, Bhamidipati
collection PubMed
description Corn has great importance in terms of production in the field of agriculture and animal feed. Obtaining pure corn seeds in corn production is quite significant for seed quality. For this reason, the distinction of corn seeds that have numerous varieties plays an essential role in marketing. This study was conducted with 14,469 images of BT6470, Calipso, Es_Armandi, and Hiva types of corn licensed by BIOTEK. The classification of images was carried out in three stages. At the first stage, deep feature extraction of the four types of corn images was performed with the pretrained CNN model SqueezeNet 1000 deep features were obtained for each image. In the second stage, in order to reduce these features obtained from deep feature extraction with SqueezeNet, separate feature selection processes were performed with the Bat Optimization (BA), Whale Optimization (WOA), and Gray Wolf Optimization (GWO) algorithms among optimization algorithms. Finally, in the last stage, the features obtained from the first and second stages were classified by using the machine learning methods Decision Tree (DT), Naive Bayes (NB), multi-class Support Vector Machine (mSVM), k-Nearest Neighbor (KNN), and Neural Network (NN). In the classification processes of the features obtained in the first stage, the mSVM model has achieved the highest classification success with 89.40%. In the second stage, as a result of the classifications performed through the active features selected by using three types of feature selection algorithms (BA, WOA, GWO), the classification success obtained with the mSVM model was 88.82%, 88.72%, and 88.95%, respectively. The classification accuracies of the tested methods and the classification accuracies obtained in the first stage are close to each other in terms of classification success. However, with the algorithms used in feature selection, successful classification processes have been carried out with fewer features and in a shorter time. The results of the study, in which classification was carried out in the inexpensive, the objective, and the shorter time of processing for the corn types, present a different perspective in terms of classification performance.
format Online
Article
Text
id pubmed-9385333
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Hindawi
record_format MEDLINE/PubMed
spelling pubmed-93853332022-08-18 Computer-Aided Multiclass Classification of Corn from Corn Images Integrating Deep Feature Extraction Kishore, Bhamidipati Yasar, Ali Taspinar, Yavuz Selim Kursun, Ramazan Cinar, Ilkay Shankar, Venkatesh Gauri Koklu, Murat Ofori, Isaac Comput Intell Neurosci Research Article Corn has great importance in terms of production in the field of agriculture and animal feed. Obtaining pure corn seeds in corn production is quite significant for seed quality. For this reason, the distinction of corn seeds that have numerous varieties plays an essential role in marketing. This study was conducted with 14,469 images of BT6470, Calipso, Es_Armandi, and Hiva types of corn licensed by BIOTEK. The classification of images was carried out in three stages. At the first stage, deep feature extraction of the four types of corn images was performed with the pretrained CNN model SqueezeNet 1000 deep features were obtained for each image. In the second stage, in order to reduce these features obtained from deep feature extraction with SqueezeNet, separate feature selection processes were performed with the Bat Optimization (BA), Whale Optimization (WOA), and Gray Wolf Optimization (GWO) algorithms among optimization algorithms. Finally, in the last stage, the features obtained from the first and second stages were classified by using the machine learning methods Decision Tree (DT), Naive Bayes (NB), multi-class Support Vector Machine (mSVM), k-Nearest Neighbor (KNN), and Neural Network (NN). In the classification processes of the features obtained in the first stage, the mSVM model has achieved the highest classification success with 89.40%. In the second stage, as a result of the classifications performed through the active features selected by using three types of feature selection algorithms (BA, WOA, GWO), the classification success obtained with the mSVM model was 88.82%, 88.72%, and 88.95%, respectively. The classification accuracies of the tested methods and the classification accuracies obtained in the first stage are close to each other in terms of classification success. However, with the algorithms used in feature selection, successful classification processes have been carried out with fewer features and in a shorter time. The results of the study, in which classification was carried out in the inexpensive, the objective, and the shorter time of processing for the corn types, present a different perspective in terms of classification performance. Hindawi 2022-08-10 /pmc/articles/PMC9385333/ /pubmed/35990122 http://dx.doi.org/10.1155/2022/2062944 Text en Copyright © 2022 Bhamidipati Kishore et al. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Kishore, Bhamidipati
Yasar, Ali
Taspinar, Yavuz Selim
Kursun, Ramazan
Cinar, Ilkay
Shankar, Venkatesh Gauri
Koklu, Murat
Ofori, Isaac
Computer-Aided Multiclass Classification of Corn from Corn Images Integrating Deep Feature Extraction
title Computer-Aided Multiclass Classification of Corn from Corn Images Integrating Deep Feature Extraction
title_full Computer-Aided Multiclass Classification of Corn from Corn Images Integrating Deep Feature Extraction
title_fullStr Computer-Aided Multiclass Classification of Corn from Corn Images Integrating Deep Feature Extraction
title_full_unstemmed Computer-Aided Multiclass Classification of Corn from Corn Images Integrating Deep Feature Extraction
title_short Computer-Aided Multiclass Classification of Corn from Corn Images Integrating Deep Feature Extraction
title_sort computer-aided multiclass classification of corn from corn images integrating deep feature extraction
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9385333/
https://www.ncbi.nlm.nih.gov/pubmed/35990122
http://dx.doi.org/10.1155/2022/2062944
work_keys_str_mv AT kishorebhamidipati computeraidedmulticlassclassificationofcornfromcornimagesintegratingdeepfeatureextraction
AT yasarali computeraidedmulticlassclassificationofcornfromcornimagesintegratingdeepfeatureextraction
AT taspinaryavuzselim computeraidedmulticlassclassificationofcornfromcornimagesintegratingdeepfeatureextraction
AT kursunramazan computeraidedmulticlassclassificationofcornfromcornimagesintegratingdeepfeatureextraction
AT cinarilkay computeraidedmulticlassclassificationofcornfromcornimagesintegratingdeepfeatureextraction
AT shankarvenkateshgauri computeraidedmulticlassclassificationofcornfromcornimagesintegratingdeepfeatureextraction
AT koklumurat computeraidedmulticlassclassificationofcornfromcornimagesintegratingdeepfeatureextraction
AT oforiisaac computeraidedmulticlassclassificationofcornfromcornimagesintegratingdeepfeatureextraction