Author
Listed:
- Yunus Egi
(College of Engineering and Technology, American University of the Middle East, Egaila 54200, Kuwait)
- Mortaza Hajyzadeh
(Department of Field Crop, Faculty of Agriculture, Şırnak University, Şırnak 73000, Türkiye)
- Engin Eyceyurt
(Department of Electrical and Electronics Engineering, Faculty of Engineering and Arts, Nevşehir Haci Bektaş Veli University, Nevşehir 50300, Türkiye)
Abstract
The growth and development of generative organs of the tomato plant are essential for yield estimation and higher productivity. Since the time-consuming manual counting methods are inaccurate and costly in a challenging environment, including leaf and branch obstruction and duplicate tomato counts, a fast and automated method is required. This research introduces a computer vision and AI-based drone system to detect and count tomato flowers and fruits, which is a crucial step for developing automated harvesting, which improves time efficiency for farmers and decreases the required workforce. The proposed method utilizes the drone footage of greenhouse tomatoes data set containing three classes (red tomato, green tomato, and flower) to train and test the counting model through YOLO V5 and Deep Sort cutting-edge deep learning algorithms. The best model for all classes is obtained at epoch 96 with an accuracy of 0.618 at mAP 0.5. Precision and recall values are determined as 1 and 0.85 at 0.923 and 0 confidence levels, respectively. The F1 scores of red tomato, green tomato, and flower classes are determined as 0.74, 0.56, and 0.61, respectively. The average F1 score for all classes is also obtained as 0.63. Through obtained detection and counting model, the tomato fruits and flowers are counted systematically from the greenhouse environment. The manual and AI-Drone counting results show that red tomato, green tomato, and flowers have 85%, 99%, and 50% accuracy, respectively.
Suggested Citation
Yunus Egi & Mortaza Hajyzadeh & Engin Eyceyurt, 2022.
"Drone-Computer Communication Based Tomato Generative Organ Counting Model Using YOLO V5 and Deep-Sort,"
Agriculture, MDPI, vol. 12(9), pages 1-17, August.
Handle:
RePEc:gam:jagris:v:12:y:2022:i:9:p:1290-:d:895477
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