The thesis presents the development of a system for the automatic detection of food labels specific to the Nutri-Score, BIO, and V-Label schemes. The main goal was to establish a model for recognizing these labels on food packaging images based on the YOLO system. The study showcases the successful implementation of YOLOv5 and YOLOv10 models, detailing the process of dataset preparation, training, and integrating the YOLOv10 model into two applications: the first one processes images in bulk within a folder, while the second enables real-time label detection via a web interface. The results show that the two models are very similar in terms of accuracy, but YOLOv10 offers 25% faster performance, making it a more suitable choice for real-time applications.
|