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首页> 外文期刊>BMC Bioinformatics >Automated interpretation of 3D laserscanned point clouds for plant organ segmentation
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Automated interpretation of 3D laserscanned point clouds for plant organ segmentation

机译:自动解释3D激光扫描点云以进行植物器官分割

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Background Plant organ segmentation from 3D point clouds is a relevant task for plant phenotyping and plant growth observation. Automated solutions are required to increase the efficiency of recent high-throughput plant phenotyping pipelines. However, plant geometrical properties vary with time, among observation scales and different plant types. The main objective of the present research is to develop a fully automated, fast and reliable data driven approach for plant organ segmentation. Results The automated segmentation of plant organs using unsupervised, clustering methods is crucial in cases where the goal is to get fast insights into the data or no labeled data is available or costly to achieve. For this we propose and compare data driven approaches that are easy-to-realize and make the use of standard algorithms possible. Since normalized histograms, acquired from 3D point clouds, can be seen as samples from a probability simplex, we propose to map the data from the simplex space into Euclidean space using Aitchisons log ratio transformation, or into the positive quadrant of the unit sphere using square root transformation. This, in turn, paves the way to a wide range of commonly used analysis techniques that are based on measuring the similarities between data points using Euclidean distance. We investigate the performance of the resulting approaches in the practical context of grouping 3D point clouds and demonstrate empirically that they lead to clustering results with high accuracy for monocotyledonous and dicotyledonous plant species with diverse shoot architecture. Conclusion An automated segmentation of 3D point clouds is demonstrated in the present work. Within seconds first insights into plant data can be deviated – even from non-labelled data. This approach is applicable to different plant species with high accuracy. The analysis cascade can be implemented in future high-throughput phenotyping scenarios and will support the evaluation of the performance of different plant genotypes exposed to stress or in different environmental scenarios.
机译:背景技术从3D点云中分割植物器官是植物表型鉴定和植物生长观察的重要任务。需要自动化解决方案来提高最近的高通量植物表型鉴定管道的效率。但是,植物的几何特性在观察尺度和不同植物类型之间随时间变化。本研究的主要目的是开发一种用于植物器官分割的全自动,快速和可靠的数据驱动方法。结果在目标是快速了解数据或无法获得标记数据或成本高昂的情况下,使用无监督聚类方法对植物器官进行自动分割至关重要。为此,我们提出并比较了易于实现的数据驱动方法,并使使用标准算法成为可能。由于从3D点云获取的归一化直方图可以看作是概率单纯形的样本,因此我们建议使用Aitchisons对数比变换将数据从单纯形空间映射到欧几里得空间,或者使用平方映射到单位球面的正象限根转换。反过来,这又为使用基于欧几里德距离测量数据点之间相似度的各种常用分析技术铺平了道路。我们在对3D点云进行分组的实际情况下研究了所得方法的性能,并凭经验证明了它们可为具有不同枝构型的单子叶和双子叶植物物种带来高精度的聚类结果。结论在当前工作中演示了3D点云的自动分割。几秒钟之内,即使是未标记的数据,对植物数据的最初见解也可能会偏离。该方法适用于高精度的不同植物物种。可以在未来的高通量表型分析方案中实施分析级联,并将支持评估暴露于胁迫下或在不同环境方案中的不同植物基因型的性能。

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