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Automated Stem Angle Determination for Temporal Plant Phenotyping Analysis

机译:自动茎角测定用于植物时空表型分析

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Image-based plant phenotyping analysis refers to the monitoring and quantification of phenotyping traits by analyzing images of the plants captured by different types of cameras at regular intervals in a controlled environment. Extracting meaningful phenotypes for temporal phenotyping analysis by considering individual parts of a plant, e.g., leaves and stem, using computer-vision based techniques remains a critical bottleneck due to constantly increasing complexity in plant architecture with variations in self-occlusions and phyllotaxy. The paper introduces an algorithm to compute the stem angle, a potential measure for plants' susceptibility to lodging, i.e., the bending of stem of the plant. Annual yield losses due to stem lodging in the U.S. range between 5 and 25%. In addition to outright yield losses, grain quality may also decline as a result of stem lodging. The algorithm to compute stem angle involves the identification of leaf-tips and leaf-junctions based on a graph theoretic approach. The efficacy of the proposed method is demonstrated based on experimental analysis on a publicly available dataset called Panicoid Phenomap-1. A time-series clustering analysis is also performed on the values of stem angles for a significant time interval during vegetative stage life cycle of the maize plants. This analysis effectively summarizes the temporal patterns of the stem angles into three main groups, which provides further insight into genotype specific behavior of the plants. A comparison of genotypic purity using time series analysis establishes that the temporal variation of the stem angles is likely to be regulated by genetic variation under similar environmental conditions.
机译:基于图像的植物表型分析是指通过在受控环境中以固定间隔分析由不同类型的相机捕获的植物图像,来监控和量化表型性状。使用计算机视觉技术,通过考虑植物的各个部分(例如叶和茎)来提取有意义的表型,以进行时间表型分析,这是一个关键的瓶颈,因为植物结构的复杂性不断提高,并且存在自闭塞和叶序变化。该论文介绍了一种计算茎角的算法,这是一种植物对倒伏敏感性的潜在度量,即植物茎的弯曲度。在美国,由于茎倒伏导致的年度产量损失介于5%和25%之间。除了直接损失产量外,由于茎倒伏,谷物质量也可能下降。计算茎角的算法涉及基于图论方法的叶尖和叶结的识别。基于对称为Panicoid Phenomap-1的公开可用数据集的实验分析,证明了该方法的有效性。在玉米植物的营养阶段生命周期中的重要时间间隔内,还对茎角的值进行了时间序列聚类分析。该分析有效地将茎角的时间模式概括为三个主要组,从而提供了对植物基因型特定行为的进一步了解。使用时间序列分析对基因型纯度进行比较,可以确定,在相似的环境条件下,茎角的时间变化很可能受到遗传变异的调节。

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