Utilization of the Convolutional Neural Network Method for Detecting Banana Leaf Disease

Banana leaf diseases such as Sigatoka, Cordana, and Pestalotiopsis pose a significant threat to banana productivity, with implications for food security and the global economy. Early detection of this disease is an important step to reduce its spread and maintain crop yield stability. This research...

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Main Authors: Nita Helmawati, Ema Utami
Format: Article
Language:English
Published: Ikatan Ahli Informatika Indonesia 2024-12-01
Series:Jurnal RESTI (Rekayasa Sistem dan Teknologi Informasi)
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Online Access:https://jurnal.iaii.or.id/index.php/RESTI/article/view/6140
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author Nita Helmawati
Ema Utami
author_facet Nita Helmawati
Ema Utami
author_sort Nita Helmawati
collection DOAJ
description Banana leaf diseases such as Sigatoka, Cordana, and Pestalotiopsis pose a significant threat to banana productivity, with implications for food security and the global economy. Early detection of this disease is an important step to reduce its spread and maintain crop yield stability. This research utilizes the Convolutional Neural Network (CNN) method to detect banana leaf diseases based on image analysis of infected and healthy leaves. The dataset used includes 937 images consisting of four main categories, namely healthy leaves, Sigatoka, Cordana, and Pestalotiopsis. The dataset is processed through augmentation to increase data diversity and quality. The CNN model was applied for classification, with evaluation results reaching 92.85% accuracy, 95.73% recall, 93.52% precision, and 94.60% F1-score. This research contributes to the development of Artificial Intelligence-based technology for applications in the agricultural sector, especially in supporting farmers to detect banana leaf diseases quickly, accurately and efficiently. The research results also provide recommendations for exploring additional data augmentation and increasing dataset variety to improve model detection performance in the future. This shows CNN's potential in supporting sustainable agriculture in the modern era.
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institution Kabale University
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series Jurnal RESTI (Rekayasa Sistem dan Teknologi Informasi)
spelling doaj-art-83ca54dbb07047a4a7437bcdd30602042025-01-13T03:30:32ZengIkatan Ahli Informatika IndonesiaJurnal RESTI (Rekayasa Sistem dan Teknologi Informasi)2580-07602024-12-018679980410.29207/resti.v8i6.61406140Utilization of the Convolutional Neural Network Method for Detecting Banana Leaf DiseaseNita Helmawati0Ema Utami1Universitas Amikom YogyakartaUniversitas Amikom YogyakartaBanana leaf diseases such as Sigatoka, Cordana, and Pestalotiopsis pose a significant threat to banana productivity, with implications for food security and the global economy. Early detection of this disease is an important step to reduce its spread and maintain crop yield stability. This research utilizes the Convolutional Neural Network (CNN) method to detect banana leaf diseases based on image analysis of infected and healthy leaves. The dataset used includes 937 images consisting of four main categories, namely healthy leaves, Sigatoka, Cordana, and Pestalotiopsis. The dataset is processed through augmentation to increase data diversity and quality. The CNN model was applied for classification, with evaluation results reaching 92.85% accuracy, 95.73% recall, 93.52% precision, and 94.60% F1-score. This research contributes to the development of Artificial Intelligence-based technology for applications in the agricultural sector, especially in supporting farmers to detect banana leaf diseases quickly, accurately and efficiently. The research results also provide recommendations for exploring additional data augmentation and increasing dataset variety to improve model detection performance in the future. This shows CNN's potential in supporting sustainable agriculture in the modern era.https://jurnal.iaii.or.id/index.php/RESTI/article/view/6140agricultural sectorartificial intelligencebanana leaf diseasecnn modeltechnology development
spellingShingle Nita Helmawati
Ema Utami
Utilization of the Convolutional Neural Network Method for Detecting Banana Leaf Disease
Jurnal RESTI (Rekayasa Sistem dan Teknologi Informasi)
agricultural sector
artificial intelligence
banana leaf disease
cnn model
technology development
title Utilization of the Convolutional Neural Network Method for Detecting Banana Leaf Disease
title_full Utilization of the Convolutional Neural Network Method for Detecting Banana Leaf Disease
title_fullStr Utilization of the Convolutional Neural Network Method for Detecting Banana Leaf Disease
title_full_unstemmed Utilization of the Convolutional Neural Network Method for Detecting Banana Leaf Disease
title_short Utilization of the Convolutional Neural Network Method for Detecting Banana Leaf Disease
title_sort utilization of the convolutional neural network method for detecting banana leaf disease
topic agricultural sector
artificial intelligence
banana leaf disease
cnn model
technology development
url https://jurnal.iaii.or.id/index.php/RESTI/article/view/6140
work_keys_str_mv AT nitahelmawati utilizationoftheconvolutionalneuralnetworkmethodfordetectingbananaleafdisease
AT emautami utilizationoftheconvolutionalneuralnetworkmethodfordetectingbananaleafdisease