当前位置: 网站首页 >> 成果一览 >> 重要论文 >> 正文

Enabling Breeding Selection for Biomass in Slash Pine Using UAV-Based Imaging

[发表时间]:2022-04-25 [拟稿人]: [审核人]: [责任编辑]:亚热带林业研究所 [浏览次数]:

论文作者:Zhaoying Song, Federico Tomasetto, Xiaoyun Niu, Wei Qi Yan, Jingmin Jiang and Yanjie Li*

期刊来源:Plant Phenomics

论文摘要:

Background: Traditional methods used to monitor the aboveground biomass (AGB) and belowground biomass (BGB) of slash pine (Pinus elliottii) rely on on-ground measurements, which are time- and cost-consuming and suited only for small spatial scales. In this paper, we successfully applied unmanned aerial vehicle (UAV) integrated with structure from motion (UAV-SfM) data to estimate the tree height, crown area (CA), AGB, and BGB of slash pine for in slash pine breeding plantations sites. The CA of each tree was segmented by using marker-controlled watershed segmentation with a treetop and a set of minimum three meters heights. Moreover, the genetic variation of these traits has been analyzed and employed to estimate heritability (h2 ). The results showed a promising correlation between UAV and ground truth data with a range of R2 from 0.58 to 0.85 at 70 m flying heights and a moderate estimate of h2 for all traits ranges from 0.13 to 0.47, where site influenced the h2 value of slash pine trees, where h2 in site 1 ranged from 0.13~0.25 lower than that in site 2 (range: 0.38~0.47). Similar genetic gains were obtained with both UAV and ground truth data; thus, breeding selection is still possible. The method described in this paper provides faster, more high-throughput, and more cost-effective UAV-SfM surveys to monitor a larger area of breeding plantations than traditional ground surveys while maintaining data accuracy.

doi: https://doi.org/10.34133/2022/9783785

论文链接:https://spj.sciencemag.org/journals/plantphenomics/2022/9783785/