Contemporary robots in precision agriculture focus primarily on automated harvesting or remote sensing to monitor crop health. Comparatively less work has been performed with respect to collecting physical leaf samples in the field and retaining them for further analysis. Typically, orchard growers manually collect sample leaves and utilize them for stem water potential measurements to analyze tree health and determine irrigation routines. While this technique benefits orchard management, the process of collecting, assessing, and interpreting measurements requires significant human labor and often leads to infrequent sampling. Automated sampling can provide highly accurate and timely information to growers. The first step in such automated in-situ leaf analysis is identifying and cutting a leaf from a tree. This retrieval process requires new methods for actuation and perception. We present a technique for detecting and localizing candidate leaves using point cloud data from a depth camera. This technique is tested on both indoor and outdoor point clouds from avocado trees. We then use a custom-built leaf-cutting end-effector on a 6-DOF robotic arm to test the proposed detection and localization technique by cutting leaves from an avocado tree. Experimental testing with a real avocado tree demonstrates our proposed approach can enable our mobile manipulator and custom end-effector system to successfully detect, localize, and cut leaves.
翻译:精密农业中的现代机器人主要侧重于自动采集或遥感,以监测作物健康; 相对而言,在收集实地的物理叶片样本并保留这些样本以供进一步分析方面开展的工作较少; 通常,果园种植者手工收集样本,并将这些样本用于干水潜力测量,以分析树木健康和确定灌溉常规; 虽然这种技术有利于果园管理,但收集、评估和解释测量过程需要大量的人力劳动,往往导致不经常取样; 自动化取样可以为种植者提供非常准确和及时的信息; 这种自动的原生叶分析的第一步是从树上找出和切除一片叶子。 这一检索过程需要新的动作和感知方法。 我们提出一种技术,利用深度照相机提供的点云数据来探测候选人的叶子并将其本地化。 这种技术在来自avocado树的室内和室外点云上进行测试。 我们随后在6DOF机器人臂上使用自定制的切叶片断叶片终端测试拟议的检测和本地化技术。 与实际的avocadoor 树的实验性测试、 移动性树的升级方法展示了我们的拟议做法。