Zhu Xinghui, Huang Zhongrui, Li Bin
College of Information and Intelligence, Hunan Agricultural University, Changsha 410128, China.
Hunan Engineering Technology Research Center of Agricultural Rural Informatization, Changsha 410128, China.
Plants (Basel). 2024 Nov 29;13(23):3368. doi: 10.3390/plants13233368.
Precise acquisition of potted plant traits has great theoretical significance and practical value for variety selection and guiding scientific cultivation practices. Although phenotypic analysis using two dimensional(2D) digital images is simple and efficient, leaf occlusion reduces the available phenotype information. To address the current challenge of acquiring sufficient non-destructive information from living potted plants, we proposed a three dimensional (3D) phenotyping pipeline that combines neural radiation field reconstruction with path analysis. An indoor collection system was constructed to obtain multi-view image sequences of potted plants. The structure from motion and neural radiance fields (SFM-NeRF) algorithm was then utilized to reconstruct 3D point clouds, which were subsequently denoised and calibrated. Geometric-feature-based path analysis was employed to separate stems from leaves, and density clustering methods were applied to segment the canopy leaves. Phenotypic parameters of potted plant organs were extracted, including height, stem thickness, leaf length, leaf width, and leaf area, and they were manually measured to obtain the true values. The results showed that the coefficient of determination (R) values, indicating the correlation between the model traits and the true traits, ranged from 0.89 to 0.98, indicating a strong correlation. The reconstruction quality was good. Additionally, 22 potted plants were selected for exploratory experiments. The results indicated that the method was capable of reconstructing plants of various varieties, and the experiments identified key conditions essential for successful reconstruction. In summary, this study developed a low-cost and robust 3D phenotyping pipeline for the phenotype analysis of potted plants. This proposed pipeline not only meets daily production requirements but also advances the field of phenotype calculation for potted plants.
精准获取盆栽植物性状对于品种选择和指导科学栽培实践具有重要的理论意义和实用价值。尽管使用二维(2D)数字图像进行表型分析简单高效,但叶片遮挡会减少可用的表型信息。为应对当前从活体盆栽植物中获取足够无损信息的挑战,我们提出了一种将神经辐射场重建与路径分析相结合的三维(3D)表型分析流程。构建了一个室内采集系统来获取盆栽植物的多视图图像序列。然后利用运动结构和神经辐射场(SFM-NeRF)算法重建3D点云,随后对其进行去噪和校准。采用基于几何特征的路径分析将茎与叶分离,并应用密度聚类方法分割冠层叶片。提取了盆栽植物器官的表型参数,包括高度、茎粗、叶长、叶宽和叶面积,并通过人工测量获得真实值。结果表明,决定系数(R)值(表明模型性状与真实性状之间的相关性)在0.89至0.98之间,表明相关性很强。重建质量良好。此外,选择了22株盆栽植物进行探索性实验。结果表明该方法能够重建各种品种的植物,并且实验确定了成功重建所需的关键条件。总之,本研究开发了一种低成本且强大的3D表型分析流程用于盆栽植物的表型分析。所提出的流程不仅满足日常生产需求,还推动了盆栽植物表型计算领域的发展。