Real-Time Detection of Shot-Hole Disease in Cherry Fruit Using Deep Learning Techniques via Smartphone

Nowadays, pesticides are generally used to control diseases and pests. However, many farmers often do not fully understand what diseases and pests are and the extent of their effects. For this reason, the optimal use time of pesticides may be missed, or excessive amounts of pesticides may be used. F...

Ausführliche Beschreibung

Gespeichert in:
Bibliographische Detailangaben
Veröffentlicht in:Applied Fruit Science 2024-06, Vol.66 (3), p.875-885
Hauptverfasser: Uygun, Tahsin, Ozguven, Mehmet Metin
Format: Artikel
Sprache:eng
Schlagworte:
Online-Zugang:Volltext
Tags: Tag hinzufügen
Keine Tags, Fügen Sie den ersten Tag hinzu!
Beschreibung
Zusammenfassung:Nowadays, pesticides are generally used to control diseases and pests. However, many farmers often do not fully understand what diseases and pests are and the extent of their effects. For this reason, the optimal use time of pesticides may be missed, or excessive amounts of pesticides may be used. For this reason, early detection and identification of the disease and pest should be made. One of the methods that allows early detection is deep learning. In this study, deep learning methods were used to detect shot-hole disease, which causes damage to the fruit part of the cherry tree, one of the Prunus species, in real time via a smartphone. To achieve this determination, studies were first carried out on object recognition algorithms in three different methodologies. These models are YOLOv8s, DETR Transformer and RTMDet MMDetection. In the training and test results performed on the created hybrid dataset, it was seen that the most successful algorithm was YOLOv8s. For the YOLOv8s algorithm, mAP 50 , mAP 50-95 , precision and recall performance metrics were found to be 92.7%, 58.9%, 86.7% and 90.2%, respectively. Since YOLOv8s showed the highest successful performance, this algorithm was used in the study for real-time detection. In the real-time experiment, it was determined that it correctly detected 115 of 119 images on the test dataset with an F1 score value of over 80%. As the output of the study, a QR (Quick Response) code was created in the study so that real-time detection can be attempted with a smartphone.
ISSN:2948-2623
0014-0309
2948-2631
1439-0302
DOI:10.1007/s10341-024-01085-w