{"title":"利用集合卷积神经网络对芒果病进行分类","authors":"Yohannes Agegnehu Bezabh , Aleka Melese Ayalew , Biniyam Mulugeta Abuhayi , Tensay Nigussie Demlie , Eshete Ayenew Awoke , Taye Endeshaw Mengistu","doi":"10.1016/j.atech.2024.100476","DOIUrl":null,"url":null,"abstract":"<div><p>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.</p></div>","PeriodicalId":74813,"journal":{"name":"Smart agricultural technology","volume":null,"pages":null},"PeriodicalIF":6.3000,"publicationDate":"2024-05-21","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.sciencedirect.com/science/article/pii/S2772375524000819/pdfft?md5=1e24c1b219d90d48acab421575906d5a&pid=1-s2.0-S2772375524000819-main.pdf","citationCount":"0","resultStr":"{\"title\":\"Classification of mango disease using ensemble convolutional neural network\",\"authors\":\"Yohannes Agegnehu Bezabh , Aleka Melese Ayalew , Biniyam Mulugeta Abuhayi , Tensay Nigussie Demlie , Eshete Ayenew Awoke , Taye Endeshaw Mengistu\",\"doi\":\"10.1016/j.atech.2024.100476\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><p>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. 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引用次数: 0
摘要
芒果是一种非常重要的水果作物,在世界各地的各种农业生态环境中都能茁壮成长。芒果富含维生素和矿物质。然而,目前由于病虫害,芒果的产量受到严重制约。因此,为了提高芒果果实的质量和产量,必须及早发现病虫害。在这项研究中,我们利用集合卷积神经网络方法构思并构建了一种芒果叶病害检测机制。我们从阿姆哈拉地区的主要产地人工获取了健康和病害芒果叶图像,用于梅拉维果蔬研究鉴定。为了改进数据集,使用了一些预处理程序(如图像大小调整、降噪和图像增强)。为了提高分类性能并达到研究目的,采用了多种分割方法,如 k means 和 Mask R-CNN。此外,在预处理和分割之后,还使用 CNN 检索了芒果叶图像的特征,以获得重要特征。然后使用全连接层分类器对检索到的芒果叶图像特征构建分类模型。研究中提出的基于 GoogLeNet 和 VGG16 的 CNN 模型集合包含各种操作,包括数据集收集、图像预处理、噪声去除、分割、数据增强、特征提取和分类。经过测试,该模型表现出令人印象深刻的性能,训练分类准确率为 99.87%,验证准确率为 99.72%,测试准确率为 99.21%。这表明集合方法在图像分类任务中实现高准确率的有效性。
Classification of mango disease using ensemble convolutional neural network
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.