Fu Yuxing, Xia Yuyang, Zhang Huiming, Fu Meng, Wang Yong, Fu Wei, Shen Congju
School of Mechanical and Electrical Engineering, Hainan University, Haikou, China.
School of Information and Communication Engineering, Hainan University, Haikou, China.
Front Plant Sci. 2023 Jan 19;13:1103794. doi: 10.3389/fpls.2022.1103794. eCollection 2022.
The dormant pruning of jujube is a labor-intensive and time-consuming activity in the production and management of jujube orchards, which mainly depends on manual operation. Automatic pruning using robots could be a better way to solve the shortage of skilled labor and improve efficiency. In order to realize automatic pruning of jujube trees, a method of pruning point identification based on skeleton information is presented. This study used an RGB-D camera to collect multi-view information on jujube trees and built a complete point cloud information model of jujube trees. The space colonization algorithm acts on the global point cloud to generate the skeleton of jujube trees. The iterative relationship between skeleton points was represented by constructing a directed graph. The proposed skeleton analysis algorithm marked the skeleton as the trunk, the primary branches, and the lateral branches and identified the pruning points under the guidance of pruning rules. Finally, the visual model of the pruned jujube tree was established through the skeleton information. The results showed that the registration errors of individual jujube trees were less than 0.91 cm, and the average registration error was 0.66 cm, which provided a favorable database for skeleton extraction. The skeleton structure extracted by the space colonization algorithm had a high degree of coincidence with jujube trees, and the identified pruning points were all located on the primary branches of jujube trees. The study provides a method to identify the pruning points of jujube trees and successfully verifies the validity of the pruning points, which can provide a reference for the location of the pruning points and visual research basis for automatic pruning.
枣树休眠期修剪是枣园生产管理中一项劳动强度大且耗时的工作,主要依靠人工操作。利用机器人进行自动修剪可能是解决熟练劳动力短缺并提高效率的更好方法。为了实现枣树的自动修剪,提出了一种基于骨架信息的修剪点识别方法。本研究使用RGB-D相机收集枣树的多视图信息,构建了完整的枣树点云信息模型。空间拓殖算法作用于全局点云以生成枣树的骨架。通过构建有向图来表示骨架点之间的迭代关系。所提出的骨架分析算法将骨架标记为主干、一级分支和侧枝,并在修剪规则的指导下识别修剪点。最后,通过骨架信息建立了修剪后枣树的视觉模型。结果表明,单株枣树的配准误差小于0.91厘米,平均配准误差为0.66厘米,为骨架提取提供了良好的数据库。空间拓殖算法提取的骨架结构与枣树高度吻合,识别出的修剪点均位于枣树的一级分支上。该研究提供了一种识别枣树修剪点的方法,并成功验证了修剪点的有效性,可为修剪点的定位提供参考,为自动修剪提供视觉研究依据。