Integrasi Dominating Set dalam Penerapan YOLO untuk Identifikasi Penyakit VSD pada Tanaman Kakao
Abstract
This research is an application of machine learning in the field of precision
agriculture. It aims to obtain an object detection model to detect VSD disease in
cocoa plants. The dataset used is primary data, which consists of 2 classes, namely
the healthy class and the VSD class, with 1250 images in each class. The method
used is the YOLOv1-YOLOv8 network model. Each YOLO network is applied in the
training data process with 4000 iterations. The mean average precision (mAP)
value and the number of iterations where the early stopping point (ESP) occurs in
each YOLO network model are used as model evaluations. The best results were
obtained from the YOLOv5 and YOLOv8 network models. YOLOv5 has the highest
mAP value of 99.006% with an early stop point (ESP) in the 75th iteration, while
YOLOv8 has the highest mAP value of 98.929% with ESP in the 20th iteration. The
results of the model analysis show that YOLOv8 is superior to YOLOv5 because in
the 20th iteration, YOLOv8 has achieved ESP, while YOLOv5 has achieved ESP in
the 75th iteration, with a MAP value that is not much different. The next stage is to
identify the level of spread of VSD disease in cocoa plants in a field. The graph
dominating set theory is used. Field is represented as a king graph 𝑃𝑚 ⊠ 𝑃𝑛. Based
on the results of the observations, the severity level on land 1 was low, land 2 and
land 3 was high so the treatment must be carried out immediately on land 2 and 3.
Collections
- MT-Mathematic [100]