Cross validation analysis of convolutional neural network variants with various white blood cells datasets for the classification task

White Blood Cells (WBCs) analysis is an important procedure to detect diseases is that closely related to human immunity system. Manual WBCs analysis is laborious and hence computer aided system (CAD) is a better option to alleviate the shortcoming. Since conventional segmentation�classificati...

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Main Authors: Mohd Safuan, Syadia Nabilah, Md Tomari, Mohd Razali, Wan Zakaria, Wan Nurshazwani
Format: Article
Language:English
Published: 2022
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Online Access:http://eprints.uthm.edu.my/6898/1/J14007_ae0dfb382d7a292ca03249e26f23cd8c.pdf
http://eprints.uthm.edu.my/6898/
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spelling my.uthm.eprints.68982022-04-12T06:36:45Z http://eprints.uthm.edu.my/6898/ Cross validation analysis of convolutional neural network variants with various white blood cells datasets for the classification task Mohd Safuan, Syadia Nabilah Md Tomari, Mohd Razali Wan Zakaria, Wan Nurshazwani TP248.13-248.65 Biotechnology White Blood Cells (WBCs) analysis is an important procedure to detect diseases is that closely related to human immunity system. Manual WBCs analysis is laborious and hence computer aided system (CAD) is a better option to alleviate the shortcoming. Since conventional segmentation�classification approach is tedious to configure, a Convolutional Neural Network (CNN) become recent trend for WBCs classification. Previously, there are many works proposed for WBCs identification. However, the models that can be generalised to works well among various datasets is remain vague. In this paper, an analysis of various CNN models which are simple Alexnet, embedded friendly Mobilenet, inception based Googlenet, systematic architecture VGG�16 and skip connection based model (Resnet & Densenet), are tested with three major WBCs datasets (Kaggle, LISC and IDB-2). From the rigorous experi�ments, it can be concluded that simple CNN model of Alexnet performs well across all three datasets with 98.08% accuracy on Kaggle, 96.34% accuracy on IDB-2 and 84.52% on LISC. This outcome can be utilise as a basis to improve the CNN classification model that can be generalize to works under various WBCs datasets. 2022 Article PeerReviewed text en http://eprints.uthm.edu.my/6898/1/J14007_ae0dfb382d7a292ca03249e26f23cd8c.pdf Mohd Safuan, Syadia Nabilah and Md Tomari, Mohd Razali and Wan Zakaria, Wan Nurshazwani (2022) Cross validation analysis of convolutional neural network variants with various white blood cells datasets for the classification task. International Journal of Online and Biomedical Engineering, 18 (2). pp. 123-140.
institution Universiti Tun Hussein Onn Malaysia
building UTHM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tun Hussein Onn Malaysia
content_source UTHM Institutional Repository
url_provider http://eprints.uthm.edu.my/
language English
topic TP248.13-248.65 Biotechnology
spellingShingle TP248.13-248.65 Biotechnology
Mohd Safuan, Syadia Nabilah
Md Tomari, Mohd Razali
Wan Zakaria, Wan Nurshazwani
Cross validation analysis of convolutional neural network variants with various white blood cells datasets for the classification task
description White Blood Cells (WBCs) analysis is an important procedure to detect diseases is that closely related to human immunity system. Manual WBCs analysis is laborious and hence computer aided system (CAD) is a better option to alleviate the shortcoming. Since conventional segmentation�classification approach is tedious to configure, a Convolutional Neural Network (CNN) become recent trend for WBCs classification. Previously, there are many works proposed for WBCs identification. However, the models that can be generalised to works well among various datasets is remain vague. In this paper, an analysis of various CNN models which are simple Alexnet, embedded friendly Mobilenet, inception based Googlenet, systematic architecture VGG�16 and skip connection based model (Resnet & Densenet), are tested with three major WBCs datasets (Kaggle, LISC and IDB-2). From the rigorous experi�ments, it can be concluded that simple CNN model of Alexnet performs well across all three datasets with 98.08% accuracy on Kaggle, 96.34% accuracy on IDB-2 and 84.52% on LISC. This outcome can be utilise as a basis to improve the CNN classification model that can be generalize to works under various WBCs datasets.
format Article
author Mohd Safuan, Syadia Nabilah
Md Tomari, Mohd Razali
Wan Zakaria, Wan Nurshazwani
author_facet Mohd Safuan, Syadia Nabilah
Md Tomari, Mohd Razali
Wan Zakaria, Wan Nurshazwani
author_sort Mohd Safuan, Syadia Nabilah
title Cross validation analysis of convolutional neural network variants with various white blood cells datasets for the classification task
title_short Cross validation analysis of convolutional neural network variants with various white blood cells datasets for the classification task
title_full Cross validation analysis of convolutional neural network variants with various white blood cells datasets for the classification task
title_fullStr Cross validation analysis of convolutional neural network variants with various white blood cells datasets for the classification task
title_full_unstemmed Cross validation analysis of convolutional neural network variants with various white blood cells datasets for the classification task
title_sort cross validation analysis of convolutional neural network variants with various white blood cells datasets for the classification task
publishDate 2022
url http://eprints.uthm.edu.my/6898/1/J14007_ae0dfb382d7a292ca03249e26f23cd8c.pdf
http://eprints.uthm.edu.my/6898/
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score 13.160551