Early-stage identification of fruit flowers that are in both opened and unopened condition in an orchard environment is significant information to perform crop load management operations such as flower thinning and pollination using automated and robotic platforms. These operations are important in tree-fruit agriculture to enhance fruit quality, manage crop load, and enhance the overall profit. The recent development in agricultural automation suggests that this can be done using robotics which includes machine vision technology. In this article, we proposed a vision system that detects early-stage flowers in an unstructured orchard environment using YOLOv5 object detection algorithm. For the robotics implementation, the position of a cluster of the flower blossom is important to navigate the robot and the end effector. The centroid of individual flowers (both open and unopen) was identified and associated with flower clusters via K-means clustering. The accuracy of the opened and unopened flower detection is achieved up to mAP of 81.9% in commercial orchard images.
翻译:在果园环境中,对于处于开放和未开放状态的果实花朵的早期识别是执行作物负载管理操作的重要信息,例如使用自动化和机器人平台进行花卉稀疏和授粉。这些操作在果树农业中非常重要,用于提高果实质量,管理作物负载并增加总利润。农业自动化的最新发展表明,这可以通过机器视觉技术来完成。在本文中,我们提出了一种视觉系统,使用YOLOv5目标检测算法在非结构化的果园环境中检测早期花朵。对于机器人实现,花开簇的位置对于导航机器人和末端执行器非常重要。通过K-均值聚类,识别了单个花朵(开放和未开放)的质心,并将其与花簇相关联。在商业果园图像中,开放和未开放花朵的检测准确率高达81.9%的平均精确度(mAP)。