Zhang Wenqi, Wu Sheng, Wen Weiliang, Lu Xianju, Wang Chuanyu, Gou Wenbo, Li Yuankun, Guo Xinyu, Zhao Chunjiang
Information Technology Research Center, Beijing Academy of Agriculture and Forestry Sciences, Beijing, 100097, China.
Beijing Key Lab of Digital Plant, National Engineering Research Center for Information Technology in Agriculture, Beijing, 100097, China.
Plant Methods. 2023 Aug 1;19(1):76. doi: 10.1186/s13007-023-01051-9.
The morphological structure phenotype of maize tassel plays an important role in plant growth, reproduction, and yield formation. It is an important step in the distinctness, uniformity, and stability (DUS) testing to obtain maize tassel phenotype traits. Plant organ segmentation can be achieved with high-precision and automated acquisition of maize tassel phenotype traits because of the advances in the point cloud deep learning method. However, this method requires a large number of data sets and is not robust to automatic segmentation of highly adherent organ components; thus, it should be combined with point cloud processing technology.
An innovative method of incomplete annotation of point cloud data was proposed for easy development of the dataset of maize tassels,and an automatic maize tassel phenotype analysis system: MaizeTasselSeg was developed. The tip feature of point cloud is trained and learned based on PointNet + + network, and the tip point cloud of tassel branch was automatically segmented. Complete branch segmentation was realized based on the shortest path algorithm. The Intersection over Union (IoU), precision, and recall of the segmentation results were 96.29, 96.36, and 93.01, respectively. Six phenotypic traits related to morphological structure (branch count, branch length, branch angle, branch curvature, tassel volume, and dispersion) were automatically extracted from the segmentation point cloud. The squared correlation coefficients (R) for branch length, branch angle, and branch count were 0.9897, 0.9317, and 0.9587, respectively. The root mean squared error (RMSE) for branch length, branch angle, and branch count were 0.529 cm, 4.516, and 0.875, respectively.
The proposed method provides an efficient scheme for high-throughput organ segmentation of maize tassels and can be used for the automatic extraction of phenotypic traits of maize tassel. In addition, the incomplete annotation approach provides a new idea for morphology-based plant segmentation.
玉米雄穗的形态结构表型在植株生长、繁殖及产量形成中发挥着重要作用。获取玉米雄穗表型性状是特异性、一致性和稳定性(DUS)测试的重要环节。由于点云深度学习方法的进步,植物器官分割可实现高精度且自动化地获取玉米雄穗表型性状。然而,该方法需要大量数据集,且对高度粘连器官部件的自动分割不够稳健,因此应与点云处理技术相结合。
提出了一种点云数据不完全标注的创新方法,便于构建玉米雄穗数据集,并开发了一个自动玉米雄穗表型分析系统:MaizeTasselSeg。基于PointNet++网络训练并学习点云的尖端特征,自动分割雄穗分支的尖端点云。基于最短路径算法实现了完整分支分割。分割结果的交并比(IoU)、精度和召回率分别为96.29、96.36和93.01。从分割后的点云中自动提取了六个与形态结构相关的表型性状(分支数、分支长度、分支角度、分支曲率、雄穗体积和离散度)。分支长度、分支角度和分支数的平方相关系数(R)分别为0.9897、0.9317和0.9587。分支长度、分支角度和分支数的均方根误差(RMSE)分别为0.529厘米、4.516和0.875。
所提出的方法为玉米雄穗的高通量器官分割提供了一种有效方案,可用于玉米雄穗表型性状的自动提取。此外,不完全标注方法为基于形态学的植物分割提供了新思路。