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一种基于三维点云的中国兰花幼苗自动表型分析方法。

An automated phenotyping method for Chinese Cymbidium seedlings based on 3D point cloud.

作者信息

Zhou Yang, Zhou Honghao, Chen Yue

机构信息

College of Electronic and Information Engineering, Zhejiang university of science and technology, HangZhou, 310023, ZheJiang, China.

School of Innovation and Entrepreneurship, Zhejiang university of science and technology, HangZhou, 310023, ZheJiang, China.

出版信息

Plant Methods. 2024 Sep 30;20(1):151. doi: 10.1186/s13007-024-01277-1.

Abstract

Aiming at the problems of low efficiency and high cost in determining the phenotypic parameters of Cymbidium seedlings by artificial approaches, this study proposed a fully automated measurement scheme for some phenotypic parameters based on point cloud. The key point or difficulty is to design a segmentation method for individual tillers according to the morphology-specific structure. After determining the branch points, two rounds of segmentation schemes were designed. The non-overlapping part of each tiller and the overlapping parts of each ramet are separated in the first round based on the edge point cloud-based segmentation, while in the second round, the overlapping part was sliced along the horizontal direction according to the weight ratio of the tillers above, to obtain the complete point cloud of all tillers. The core superiority of the algorithm is that the segmentation fits the tiller growth direction well, and the extracted skeleton points of tillers are close to the actual growth direction, significantly improving the prediction accuracy of the subsequent phenotypic parameters. Five phenotypic parameters, plant height, leaf number, leaf length, leaf width and leaf area, were automatically calculated. Through experiments, the accuracy of the five parameters reached 98.6%, 100%, 92.2%, 89.1%, and 82.3%, respectively, which reach the needs of various phenotypic applications.

摘要

针对人工测定大花蕙兰幼苗表型参数效率低、成本高的问题,本研究提出了一种基于点云的部分表型参数全自动测量方案。关键点或难点在于根据形态特定结构设计单个分蘖的分割方法。确定分支点后,设计了两轮分割方案。第一轮基于边缘点云分割将每个分蘖的非重叠部分和每个分株的重叠部分分离,而在第二轮中,根据上方分蘖的权重比沿水平方向对重叠部分进行切片,以获得所有分蘖的完整点云。该算法的核心优势在于分割与分蘖生长方向拟合良好,提取的分蘖骨架点接近实际生长方向,显著提高了后续表型参数的预测精度。自动计算了株高、叶片数、叶长、叶宽和叶面积五个表型参数。通过实验,这五个参数的准确率分别达到了98.6%、100%、92.2%、89.1%和82.3%,满足了各种表型应用的需求。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/891e/11441005/3d37cb77cbd6/13007_2024_1277_Fig1_HTML.jpg

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