To enhance the training set, augmentations such as rotation and blur were applied, increasing its size to 2544 images, while the validation and testing sets contained 284 and 283 images respectively. This extensive preparation and augmentation laid a solid foundation for the subsequent model training and evaluation phases. RoboFlow’s visual aids provided valuable insights into dataset characteristics, including label representation and object placement within images, contributing to a more effective and insightful annotation process.