Using high-throughput phenotype platform MVS-Pheno to reconstruct the 3D morphological structure of wheat

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Wenrui Li, Sheng Wu, Weiliang Wen, Xianju Lu, Haishen Liu, Minggang Zhang, Pengliang Xiao, Xinyu Guo, Chunjiang Zhao
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引用次数: 0

Abstract

It is of great significance to study the plant morphological structure for improving crop yield and achieving efficient use of resources. Three dimensional (3D) information can more accurately describe the morphological and structural characteristics of crop plants. Automatic acquisition of 3D information is one of the key steps in plant morphological structure research. Taking wheat as the research object, we propose a point cloud data-driven 3D reconstruction method that achieves 3D structure reconstruction and plant morphology parameterization at the phytomer scale. Specifically, we use the MVS-Pheno platform to reconstruct the point cloud of wheat plants and segment organs through the deep learning algorithm. On this basis, we automatically reconstructed the 3D structure of leaves and tillers and extracted the morphological parameters of wheat. The results show that the semantic segmentation accuracy of organs is 95.2%, and the instance segmentation accuracy AP50 is 0.665. The R2 values for extracted leaf length, leaf width, leaf attachment height, stem leaf angle, tiller length, and spike length were 0.97, 0.80, 1.00, 0.95, 0.99, and 0.95, respectively. This method can significantly improve the accuracy and efficiency of 3D morphological analysis of wheat plants, providing strong technical support for research in fields such as agricultural production optimization and genetic breeding.
利用高通量表型平台 MVS-Pheno 重建小麦的三维形态结构
研究植物形态结构对于提高作物产量和实现资源的有效利用具有重要意义。三维(3D)信息能更准确地描述作物植株的形态结构特征。自动获取三维信息是植物形态结构研究的关键步骤之一。我们以小麦为研究对象,提出了一种点云数据驱动的三维重建方法,实现了植物体尺度上的三维结构重建和植物形态参数化。具体来说,我们利用 MVS-Pheno 平台重建小麦植株的点云,并通过深度学习算法分割器官。在此基础上,我们自动重建了叶片和分蘖的三维结构,并提取了小麦的形态参数。结果表明,器官的语义分割准确率为 95.2%,实例分割准确率 AP50 为 0.665。提取的叶长、叶宽、叶片附着高度、茎叶角度、分蘖长度和穗长的 R2 值分别为 0.97、0.80、1.00、0.95、0.99 和 0.95。该方法可显著提高小麦植株三维形态分析的准确性和效率,为农业生产优化和遗传育种等领域的研究提供有力的技术支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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