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利用无人机高分辨率图像对桃树树冠进行特征描述。

Characterization of peach tree crown by using high-resolution images from an unmanned aerial vehicle.

作者信息

Mu Yue, Fujii Yuichiro, Takata Daisuke, Zheng Bangyou, Noshita Koji, Honda Kiyoshi, Ninomiya Seishi, Guo Wei

机构信息

1International Field Phenomics Research Laboratory, Institute for Sustainable Agro-ecosystem Services, The University of Tokyo, 1-1-1 Midori-cho, Nishi-Tokyo, Tokyo, 188-0002 Japan.

Research Institute for Agriculture, Okayama Prefectural Technology Center for Agriculture, Forestry and Fisheries, 1174-1 Kodaoki, Akaiwa, Okayama 709-0801 Japan.

出版信息

Hortic Res. 2018 Dec 10;5:74. doi: 10.1038/s41438-018-0097-z. eCollection 2018.

Abstract

In orchards, measuring crown characteristics is essential for monitoring the dynamics of tree growth and optimizing farm management. However, it lacks a rapid and reliable method of extracting the features of trees with an irregular crown shape such as trained peach trees. Here, we propose an efficient method of segmenting the individual trees and measuring the crown width and crown projection area (CPA) of peach trees with time-series information, based on gathered images. The images of peach trees were collected by unmanned aerial vehicles in an orchard in Okayama, Japan, and then the digital surface model was generated by using a Structure from Motion (SfM) and Multi-View Stereo (MVS) based software. After individual trees were identified through the use of an adaptive threshold and marker-controlled watershed segmentation in the digital surface model, the crown widths and CPA were calculated, and the accuracy was evaluated against manual delineation and field measurement, respectively. Taking manual delineation of 12 trees as reference, the root-mean-square errors of the proposed method were 0.08 m (  = 0.99) and 0.15 m (  = 0.93) for the two orthogonal crown widths, and 3.87 m for CPA (  = 0.89), while those taking field measurement of 44 trees as reference were 0.47 m (  = 0.91), 0.51 m (  = 0.74), and 4.96 m (  = 0.88). The change of growth rate of CPA showed that the peach trees grew faster from May to July than from July to September, with a wide variation in relative growth rates among trees. Not only can this method save labour by replacing field measurement, but also it can allow farmers to monitor the growth of orchard trees dynamically.

摘要

在果园中,测量树冠特征对于监测树木生长动态和优化农场管理至关重要。然而,对于诸如整形桃树等树冠形状不规则的树木,缺乏一种快速可靠的特征提取方法。在此,我们基于采集的图像,提出了一种利用时间序列信息分割单株树木并测量桃树树冠宽度和树冠投影面积(CPA)的有效方法。桃树图像由无人机在日本冈山县的一个果园中采集,然后使用基于运动结构(SfM)和多视图立体(MVS)的软件生成数字表面模型。在数字表面模型中通过自适应阈值和标记控制的分水岭分割识别出单株树木后,计算树冠宽度和CPA,并分别与人工勾勒和实地测量进行精度评估。以人工勾勒的12棵树为参考,该方法对于两个正交树冠宽度的均方根误差分别为0.08米(R² = 0.99)和0.15米(R² = 0.93),对于CPA为3.87米(R² = 0.89),而以44棵树的实地测量为参考时,均方根误差分别为0.47米(R² = 0.91)、0.51米(R² = 0.74)和4.96米(R² = 0.88)。CPA生长速率的变化表明,桃树从5月到7月比从7月到9月生长得更快,不同树木的相对生长速率差异很大。该方法不仅可以通过替代实地测量节省劳动力,还能让果农动态监测果园树木的生长情况。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0ef8/6286954/dd97d794576e/41438_2018_97_Fig1_HTML.jpg

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