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Automated morphological traits extraction for sorghum plants via 3D point cloud data analysis

机译:通过3D点云数据分析自动化形态特征对高粱植物提取

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摘要

The ability to correlate morphological traits of plants with their genotypes plays an important role in plant phenomics research. However, measuring phenotypes manually is time-consuming, labor intensive, and prone to human errors. The 3D surface model of a plant can potentially provide an efficient and accurate way to digitize plant architecture. This study focused on the extraction of morphological traits at multiple developmental timepoints from sorghum plants grown under controlled conditions. A non-destructive 3D scanning system using a commodity depth camera was implemented to capture sequential images of a plant at different heights. To overcome the challenges of overlapping tillers, an algorithm was developed to first search for the stem in the merged point cloud data, and then the associated leaves. A 3D skeletonization algorithm was created by slicing the point cloud along the vertical direction, and then linking the connected Euclidean clusters between adjacent layers. Based on the structural clues of the sorghum plant, heuristic rules were implemented to separate overlapping tillers. Finally, each individual leaf was automatically segmented, and multiple parameters were obtained from the skeleton and the reconstructed point cloud including: plant height, stem diameter, leaf angle, and leaf surface area. The results showed high correlations between the manual measurements and the estimated values generated by the system. Statistical analyses between biomass and extracted traits revealed that stem volume was a promising predictor of shoot fresh weight and shoot dry weight, and the total leaf area was strongly correlated to shoot biomass at early stages.
机译:将植物形态特征与其基因型相关的能力在植物表情研究中起着重要作用。然而,手动测量表型是耗时,劳动密集,并且容易出现人类错误。植物的3D表面模型可能提供一种高效准确的方式来数字化工厂架构。本研究重点研究了在受控条件下生长的高粱植物的多发性发育时间点的形态特征的提取。实现使用商品深度相机的非破坏性3D扫描系统以捕获不同高度的植物的顺序图像。为了克服重叠分蘖的挑战,开发了一种算法,首先在合并点云数据中搜索茎,然后是相关的叶子。通过沿垂直方向切片点云,然后将连接的欧几里德簇链接在相邻层之间来创建3D骨架化算法。基于高粱植物的结构线索,实施了启发式规则以分离重叠分蘖。最后,每个单独的叶片自动分段,并从骨架和重建点云获得多个参数,包括:植物高度,杆直径,叶角和叶面积。结果显示了手动测量和系统产生的估计值之间的高相关性。生物质和提取的性状之间的统计分析显示,茎体积是芽鲜重和芽干重的有希望的预测因子,并且总叶面积与早期阶段拍摄生物质。

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