JOURNAL ARTICLE

Comparison of Machine Learning Algorithms in Detecting Tea Leaf Diseases

Candra Nur IhsanNova AgustinaMuchammad NaseerHarya GusdeviJack Febrian RusdiAri HadhiwibowoFahmi Abdullah

Year: 2024 Journal:   Jurnal RESTI (Rekayasa Sistem dan Teknologi Informasi) Vol: 8 (1)Pages: 135-141   Publisher: Ikatan Ahli Indormatika Indonesia

Abstract

Tea is one of the top ten export products sent from Indonesia to foreign countries. However, in recent years, the amount of tea leaf exports from Indonesia has decreased, although the value of the export impacts the country’s economic structure. In addition to market competition, Indonesia must maintain tea leaf production so that the increase in export decline is not significant or even increases tea leaf export production. To improve production quality and reduce production costs, early detection of tea leaf diseases is necessary. This study aims to classify tea leaf images for early detection of tea leaf disease so that appropriate treatment can be carried out early. This study compares machine learning algorithms to determine the best algorithm for detecting tea leaf diseases. The algorithms tested as performance comparisons in classifying tea leaf diseases are random forest (RF), support vector classifier (SVC), extra tree classifier (ETC), decision tree (DT), XGBoost classifier (XGB), and convolutional neural algorithms. Network (CNN). As a result, the average accuracy performance generated by ETC produces a higher value than other algorithms, i.e., getting an average accuracy performance of 77.47%. Another algorithm, SVC, has an average accuracy of 76.57%, RF of 76.12%, DT of 65.31%, XGB of 71.62%, and the lowest is CNN of 59.08%. ETC has been proven to be the most superior machine learning algorithm for detecting tea leaf diseases in this study.

Keywords:
Computer science Machine learning Artificial intelligence Algorithm

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Topics

Smart Agriculture and AI
Life Sciences →  Agricultural and Biological Sciences →  Plant Science
Spectroscopy and Chemometric Analyses
Physical Sciences →  Chemistry →  Analytical Chemistry
Leaf Properties and Growth Measurement
Life Sciences →  Agricultural and Biological Sciences →  Plant Science
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