Multidimensional Attention-Based CNN Model for Identifying Apple Leaf Disease

To prevent the spread of illnesses and guarantee the steady and healthy growth of the apple sector, the proper diagnosis of apple leaf diseases is of utmost importance. The subtle interclass variations and enormous intraclass variances among apple leaf disease features, together with the uniformity...

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Main Authors: Kahkashan Perveen, Sanjay Kumar, Sahil Kansal, Mukesh Soni, Najla A. Alshaikh, Shanzeh Batool, Mehrun Nisha Khanam, Bernard Osei
Format: Article
Language:English
Published: Wiley 2023-01-01
Series:Journal of Food Quality
Online Access:http://dx.doi.org/10.1155/2023/9504186
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author Kahkashan Perveen
Sanjay Kumar
Sahil Kansal
Mukesh Soni
Najla A. Alshaikh
Shanzeh Batool
Mehrun Nisha Khanam
Bernard Osei
author_facet Kahkashan Perveen
Sanjay Kumar
Sahil Kansal
Mukesh Soni
Najla A. Alshaikh
Shanzeh Batool
Mehrun Nisha Khanam
Bernard Osei
author_sort Kahkashan Perveen
collection DOAJ
description To prevent the spread of illnesses and guarantee the steady and healthy growth of the apple sector, the proper diagnosis of apple leaf diseases is of utmost importance. The subtle interclass variations and enormous intraclass variances among apple leaf disease features, together with the uniformity of disease spots and the complicated background environment, make apple leaf disease diagnosis extremely challenging. A unique dual-branch apple leaf disease diagnosis system (DBNet) was put out to address the aforementioned issues. An attention branch with many dimensions and a multiscale joint branch (MS) make up the dual-branch network topology of the DBNet (DA). In this study, the MS branch and the DA branch are combined to create a DBNet, which successfully improves recognition accuracy while mitigating the negative impacts of complicated backdrop environments and lesion similarities. The accuracy of the DBNet network increases by 0.02843, 0.02412, 0.0144, and 0.0125, respectively, when compared to previous leaf disease detection models. This makes it evident that the suggested DBNet model has certain benefits over others in terms of identifying apple leaf disease.
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institution Kabale University
issn 1745-4557
language English
publishDate 2023-01-01
publisher Wiley
record_format Article
series Journal of Food Quality
spelling doaj-art-db83b05aec104d9cbc7c784750c8a6e72025-02-03T06:04:52ZengWileyJournal of Food Quality1745-45572023-01-01202310.1155/2023/9504186Multidimensional Attention-Based CNN Model for Identifying Apple Leaf DiseaseKahkashan Perveen0Sanjay Kumar1Sahil Kansal2Mukesh Soni3Najla A. Alshaikh4Shanzeh Batool5Mehrun Nisha Khanam6Bernard Osei7Department of Botany & MicrobiologyComputer Science Engineering DepartmentITDepartment of CSEDepartment of Botany & MicrobiologySchool of Computer Science Engineering (SCSE)School of Biological SciencesKwame Nkrumah University of Science and TechnologyTo prevent the spread of illnesses and guarantee the steady and healthy growth of the apple sector, the proper diagnosis of apple leaf diseases is of utmost importance. The subtle interclass variations and enormous intraclass variances among apple leaf disease features, together with the uniformity of disease spots and the complicated background environment, make apple leaf disease diagnosis extremely challenging. A unique dual-branch apple leaf disease diagnosis system (DBNet) was put out to address the aforementioned issues. An attention branch with many dimensions and a multiscale joint branch (MS) make up the dual-branch network topology of the DBNet (DA). In this study, the MS branch and the DA branch are combined to create a DBNet, which successfully improves recognition accuracy while mitigating the negative impacts of complicated backdrop environments and lesion similarities. The accuracy of the DBNet network increases by 0.02843, 0.02412, 0.0144, and 0.0125, respectively, when compared to previous leaf disease detection models. This makes it evident that the suggested DBNet model has certain benefits over others in terms of identifying apple leaf disease.http://dx.doi.org/10.1155/2023/9504186
spellingShingle Kahkashan Perveen
Sanjay Kumar
Sahil Kansal
Mukesh Soni
Najla A. Alshaikh
Shanzeh Batool
Mehrun Nisha Khanam
Bernard Osei
Multidimensional Attention-Based CNN Model for Identifying Apple Leaf Disease
Journal of Food Quality
title Multidimensional Attention-Based CNN Model for Identifying Apple Leaf Disease
title_full Multidimensional Attention-Based CNN Model for Identifying Apple Leaf Disease
title_fullStr Multidimensional Attention-Based CNN Model for Identifying Apple Leaf Disease
title_full_unstemmed Multidimensional Attention-Based CNN Model for Identifying Apple Leaf Disease
title_short Multidimensional Attention-Based CNN Model for Identifying Apple Leaf Disease
title_sort multidimensional attention based cnn model for identifying apple leaf disease
url http://dx.doi.org/10.1155/2023/9504186
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