Su Yanjun, Wu Fangfang, Ao Zurui, Jin Shichao, Qin Feng, Liu Boxin, Pang Shuxin, Liu Lingli, Guo Qinghua
1State Key Laboratory of Vegetation and Environmental Change, Institute of Botany, Chinese Academy of Sciences, Beijing, 100093 China.
2University of Chinese Academy of Sciences, Beijing, 100049 China.
Plant Methods. 2019 Feb 4;15:11. doi: 10.1186/s13007-019-0396-x. eCollection 2019.
Maize ( L.) is the third most consumed grain in the world and improving maize yield is of great importance of the world food security, especially under global climate change and more frequent severe droughts. Due to the limitation of phenotyping methods, most current studies only focused on the responses of phenotypes on certain key growth stages. Although light detection and ranging (lidar) technology showed great potential in acquiring three-dimensional (3D) vegetation information, it has been rarely used in monitoring maize phenotype dynamics at an individual plant level.
In this study, we used a terrestrial laser scanner to collect lidar data at six growth stages for 20 maize varieties under drought stress. Three drought-related phenotypes, i.e., plant height, plant area index (PAI) and projected leaf area (PLA), were calculated from the lidar point clouds at the individual plant level. The results showed that terrestrial lidar data can be used to estimate plant height, PAI and PLA at an accuracy of 96%, 70% and 92%, respectively. All three phenotypes showed a pattern of first increasing and then decreasing during the growth period. The high drought tolerance group tended to keep lower plant height and PAI without losing PLA during the tasseling stage. Moreover, the high drought tolerance group inclined to have lower plant area density in the upper canopy than the low drought tolerance group.
The results demonstrate the feasibility of using terrestrial lidar to monitor 3D maize phenotypes under drought stress in the field and may provide new insights on identifying the key phenotypes and growth stages influenced by drought stress.
玉米(L.)是世界上第三大消费谷物,提高玉米产量对世界粮食安全至关重要,特别是在全球气候变化和更频繁的严重干旱情况下。由于表型分析方法的限制,目前大多数研究仅关注某些关键生长阶段的表型反应。尽管光探测与测距(激光雷达)技术在获取三维(3D)植被信息方面显示出巨大潜力,但很少用于在单株水平上监测玉米表型动态。
在本研究中,我们使用地面激光扫描仪在干旱胁迫下的六个生长阶段收集了20个玉米品种的激光雷达数据。从单株水平的激光雷达点云计算出三个与干旱相关的表型,即株高、植株面积指数(PAI)和投影叶面积(PLA)。结果表明,地面激光雷达数据可用于估计株高、PAI和PLA,准确率分别为96%、70%和92%。所有这三个表型在生长期间均呈现先增加后减少的模式。高耐旱组在抽雄期倾向于保持较低的株高和PAI,而不损失PLA。此外,高耐旱组在上层冠层的植株面积密度往往低于低耐旱组。
结果证明了使用地面激光雷达在田间干旱胁迫下监测3D玉米表型的可行性,并可能为识别受干旱胁迫影响的关键表型和生长阶段提供新的见解。