Classification of mango disease using ensemble convolutional neural network

被引:1
|
作者
Bezabh, Yohannes Agegnehu [1 ,4 ]
Ayalew, Aleka Melese [1 ]
Abuhayi, Biniyam Mulugeta [2 ]
Demlie, Tensay Nigussie [3 ]
Awoke, Eshete Ayenew [2 ]
Mengistu, Taye Endeshaw [3 ]
机构
[1] Univ Gondar, Dept Informat Technol, Gondar, Ethiopia
[2] Univ Gondar, Gondar, Ethiopia
[3] Jigjiga Univ, Dept Informat Technol, Jigjiga, Ethiopia
[4] Univ Gondar, Informat Tecnol, Merawi, Ethiopia
来源
关键词
Classification mango disease; Digital imaging; Convolutional neural network model;
D O I
10.1016/j.atech.2024.100476
中图分类号
S2 [农业工程];
学科分类号
0828 ;
摘要
Mango is a highly significant fruit crop that thrives in a variety of agro-ecologies around the world. Mangoes are rich in vitamins and minerals. However, its yield is currently severely constrained due to disease and pest infestations. Thus, in order to improve mango fruit quality and productivity, illnesses and insect pests must be detected early on. In this study, we conceived and constructed a mango leaf disease detection mechanism utilizing an ensemble convolutional neural network approach. Healthy and diseased mango leaf images were manually obtained from main producing locations in Amhara Region for Merawi fruit and vegetable research identification. To improve the datasets, several pre-processing procedures (such as image resizing, noise reduction, and image augmentation) were used. To improve classification performance and meet the study 's purpose, various segmentation approaches such as k means and Mask R-CNN were applied. Furthermore, following pre-processing and segmentation, features of mango leaf images were retrieved using CNN to obtain important features. The classification model was then constructed using fully-connected layer classifiers on the retrieved features of mango leaf images. The ensemble proposed GoogLeNet and VGG16 based CNN model in the study encompasses various operations, including dataset collection, image preprocessing, noise removal, segmentation, data augmentation, feature extraction, and classification. Upon testing, the model demonstrated impressive performance with 99.87 % training classification accuracy, 99.72 % validation accuracy, and 99.21 % testing accuracy. This indicates the effectiveness of the ensemble approach in achieving high accuracy in image classification tasks.
引用
收藏
页数:11
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