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首页> 外文期刊>Australian Journal of Grape and Wine Research >Three-dimensional reconstruction of Vitis vinifera (L.) cvs Pinot Noir and Merlot grape bunch frameworks using a restricted reconstruction grammar based on the stochastic L-system
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Three-dimensional reconstruction of Vitis vinifera (L.) cvs Pinot Noir and Merlot grape bunch frameworks using a restricted reconstruction grammar based on the stochastic L-system

机译:基于随机L系统的限制性重建语法,葡萄伏托紫外(L.)CVS的三维重建CVS Pinot Noir和Merlot葡萄束框架

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Background and Aims Phenotypic traits of grape bunches are known to be related with grapevine yield, wine flavour and sensitivity to disease. Aiming to solve a phenotypic bottleneck in current breeding studies as well as to improve the performance of phenotypic tools, we put forward a combination of grammar-based reconstruction and vision-based reconstruction, and propose an empirical reconstruction grammar restricted by an outline hull, which can model parameters of the entire bunch framework. Methods and Results Statistical analysis of manual measurements of bunches was undertaken to empirically build a reconstruction grammar for a specific grape cultivar. During the reconstruction procedure, the grammar takes account of the estimation of the topological architecture and the geometrical parameters of bunch elements, while the outline hull formed from the input two-dimensional (2D) image is used to constrain the volume and the overall shape of the bunch model. The reconstruction results indicated that the average percentage error of quantity estimation for various internode types ranged from19.1to41.1%, and the average percentage error for individual lengths of respective internode types ranged from-0.4to10.4%. Conclusions The proposed three-dimensional grape bunch reconstruction method achieves the parameter modelling of bunch components by using 2D images as input, and the performance has been shown to be an improvement over existing work. Significance of the Study The proposed method enables a more accurate reconstruction of grape bunch framework, which facilitates the automatic extraction of phenotypic traits and the improvement of breeding programs along with vineyard management. Due to its simple sensor input requirements, it is able to be applied under field conditions.
机译:背景技术葡萄串的表型特征是已知与葡萄产量,葡萄酒味和对疾病的敏感性有关。旨在解决当前育种研究中的表型瓶颈,以及提高表型工具的性能,我们提出了基于语法的重建和基于视觉的重建的组合,并提出了由轮廓限制的经验重建语法,这可以模拟整个束框架的参数。对束缚手动测量的方法和结果进行统计分析,以凭经验为特定葡萄品种构建重建语法。在重建过程中,语法考虑了拓扑结构的估计和束元素的几何参数,而由输入二维(2D)图像形成的轮廓船体用于约束体积和整体形状束模型。重建结果表明,各个节间类型的数量估计的平均百分比误差为19.1to41.1%,各个节间类型的各个长度的平均百分比误差范围为0.4to10.4%。结论所提出的三维葡萄束重建方法通过使用2D图像作为输入实现束组件的参数建模,并且表现已经显示出对现有工作的改进。该研究的重要性提出的方法可以更准确地重建葡萄束框架,这有利于自动提取表型性状和养殖计划的改善以及葡萄园管理。由于其简单的传感器输入要求,它能够在现场条件下应用。

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