The conventional methods adopted by the formers for leaf disease detection and classification can be monotonous and unreliable. It is challenging for formers sometimes to attempt and anticipate the type of disease manually. The inability to early diagnose the disease and erroneous predictions may da...

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Principais autores: Venkata Sireesha Nagineni, Rekha Gillala, Arpita Gupta
Formato: Artigo
Acesso em linha:https://doaj.org/article/3a3cbeef0f614dc3ba27bb9e68cc4892
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author Venkata Sireesha Nagineni
Rekha Gillala
Arpita Gupta
author_facet Venkata Sireesha Nagineni
Rekha Gillala
Arpita Gupta
date_str_mv 2024-09-01T00:00:00Z
description The conventional methods adopted by the formers for leaf disease detection and classification can be monotonous and unreliable. It is challenging for formers sometimes to attempt and anticipate the type of disease manually. The inability to early diagnose the disease and erroneous predictions may damage the crop, resulting in loss of crop production. To prevent losses and increase crop production, computer-based image classification methods can be adopted by the formers. Several methods have been suggested and utilized to predict crop plant diseases using pictures of unhealthy leaves. Investigators are currently making significant advances in the detection of plant diseases by experimenting with various methodologies and models. Artificial Neural Networks (ANNs) stand out as a widely employed machine learning method for effectively classifying images and predicting diseases. Alongside ANNs, other prevalent algorithms include Linear Regression (LNR), Random Forest Algorithm (RFA), Support Vector Machine (SVM), Convolutional Neural Networks (CNN), and k-nearest Neighbor (KNN). Combining these algorithms has been explored in various studies to enhance accuracy. This review examines their application in classifying diseases in citrus crop leaves, focusing on metrics like Accuracy, Precision, and Sensitivity. Each algorithm has its strengths and weaknesses in disease identification from leaf images. The accuracy and effectiveness of these algorithms depend significantly on the quality and dimensionality of the leaf images. Therefore, a reliable leaf image database is crucial for developing a robust machine-learning model for disease detection and analysis.
doi_str 10.32919/uesit.2024.03.03
format Article
id oai_oai_doaj.org_article_3a3cbeef0f614dc3ba27bb9e68cc4892
issn_str_mv 2521-1234
language_str_mv EN
RU
UK
oai_datestamp_str 2025-01-01T16:20:18Z
oai_identifier_str oai:doaj.org/article:3a3cbeef0f614dc3ba27bb9e68cc4892
publisher_str Profi.Net.Ua Group; Department of Informatics and Cybernetics; Melitopol Bohdan Khmelnytsky State Pedagogical University
relation_str_mv https://uesit.org.ua/index.php/itse/article/view/468
https://doaj.org/toc/2521-1234
source_str JOURNAL_A
source_txt Ukrainian Journal of Educational Studies and Information Technology, Vol 12, Iss 3 (2024)
spellingShingle A comprehensive review on citrus leaf disease image classification using machine learning techniques
Venkata Sireesha Nagineni
Rekha Gillala
Arpita Gupta
subject_str_mv Image Classification
Disease Prediction
Machine Learning Algorithms
Leaf Disease Analysis
ANN
KNN
Special aspects of education
LC8-6691
Electronic computers. Computer science
QA75.5-76.95
title A comprehensive review on citrus leaf disease image classification using machine learning techniques
type_str article
url https://doaj.org/article/3a3cbeef0f614dc3ba27bb9e68cc4892