Klasifikasi Penyakit Daun pada Tanaman Kopi dengan Penerapan Metode Faster Region Convolutional Neural Network (Faster R-CNN)
Classification of Leaf Diseases in Coffee Plants Using The Faster Region Convolutional Neural Network (Faster R-CNN) Method

Date
2024Author
Sitorus, Ian Ariessa
Advisor(s)
Seniman
Lubis, Fahrurrozi
Metadata
Show full item recordAbstract
Coffee is a high-value agricultural commodity with a significant contribution to foreign
exchange for the Indonesian state. With a cultivation area of 1.24 million hectares,
Indonesia is among the largest coffee producers in the world. Despite this substantial
potential, it has not been fully realized due to the ineffective management of disease
prevention and control. Diseases can be indicated by changes in the shape and color of
the leaves. However, factors such as vision, experience, as well as the vast complexity
of the land and the large number of coffee plants pose challenges for farmers. Research
is conducted to find an alternative solution by developing a computer vision-based
system using the Faster R-CNN application to classify three types of leaf diseases: Leaf
Rust, Leaf Blight, and Leaf Miner. This study employs a dataset comprising 3,600
images, divided into 2,880 training data, 360 validation data, and 360 testing data.
Testing results of the system implementing the Faster R-CNN method achieve an
accuracy value of 95%.
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- Undergraduate Theses [765]