Résumé:
This thesis presents an embedded system for intelligent apricot ripeness detection using
YOLOv8 on Raspberry Pi 5, aiming to modernize fruit quality assessment in Algerian
agriculture. By creating and preprocessing a custom dataset, training and evaluating several
YOLOv8 models, and optimizing for real-time edge deployment, the system enables accurate,
fast, and objective classification of ripe and unripe apricots. The solution addresses challenges
of labor scarcity and post-harvest losses, offering farmers a practical tool for better harvest
timing and sustainable orchard management. This work demonstrates the potential of deep
learning and embedded AI to bring tangible benefits to precision agriculture.