Wang Dabao, Song Zhi, Miao Teng, Zhu Chao, Yang Xin, Yang Tao, Zhou Yuncheng, Den Hanbing, Xu Tongyu
College of Information and Electrical Engineering, Shenyang Agricultural University, Shenyang, China.
College of Science, Shenyang Agricultural University, Shenyang, China.
Front Plant Sci. 2023 Jan 31;14:1109314. doi: 10.3389/fpls.2023.1109314. eCollection 2023.
The 3D point cloud data are used to analyze plant morphological structure. Organ segmentation of a single plant can be directly used to determine the accuracy and reliability of organ-level phenotypic estimation in a point-cloud study. However, it is difficult to achieve a high-precision, automatic, and fast plant point cloud segmentation. Besides, a few methods can easily integrate the global structural features and local morphological features of point clouds relatively at a reduced cost. In this paper, a distance field-based segmentation pipeline (DFSP) which could code the global spatial structure and local connection of a plant was developed to realize rapid organ location and segmentation. The terminal point clouds of different plant organs were first extracted DFSP during the stem-leaf segmentation, followed by the identification of the low-end point cloud of maize stem based on the local geometric features. The regional growth was then combined to obtain a stem point cloud. Finally, the instance segmentation of the leaf point cloud was realized using DFSP. The segmentation method was tested on 420 maize and compared with the manually obtained ground truth. Notably, DFSP had an average processing time of 1.52 s for about 15,000 points of maize plant data. The mean precision, recall, and micro F1 score of the DFSP segmentation algorithm were 0.905, 0.899, and 0.902, respectively. These findings suggest that DFSP can accurately, rapidly, and automatically achieve maize stem-leaf segmentation tasks and could be effective in maize phenotype research. The source code can be found at https://github.com/syau-miao/DFSP.git.
三维点云数据用于分析植物形态结构。在点云研究中,单株植物的器官分割可直接用于确定器官水平表型估计的准确性和可靠性。然而,实现高精度、自动且快速的植物点云分割较为困难。此外,很少有方法能够以较低成本相对轻松地整合点云的全局结构特征和局部形态特征。本文开发了一种基于距离场的分割管道(DFSP),该管道可以编码植物的全局空间结构和局部连接,以实现器官的快速定位和分割。在茎叶分割过程中,首先通过DFSP提取不同植物器官的端点云,然后基于局部几何特征识别玉米茎的低端点云。接着结合区域生长获得茎点云。最后,使用DFSP实现叶点云的实例分割。该分割方法在420株玉米上进行了测试,并与手动获取的地面真值进行了比较。值得注意的是,对于约15000个玉米植株数据点,DFSP的平均处理时间为1.52秒。DFSP分割算法的平均精度、召回率和微观F1分数分别为0.905、0.899和0.902。这些结果表明,DFSP能够准确、快速且自动地完成玉米茎叶分割任务,并且在玉米表型研究中可能有效。源代码可在https://github.com/syau-miao/DFSP.git找到。