Jimenez-Berni Jose A, Deery David M, Rozas-Larraondo Pablo, Condon Anthony Tony G, Rebetzke Greg J, James Richard A, Bovill William D, Furbank Robert T, Sirault Xavier R R
High Resolution Plant Phenomics Centre, Commonwealth Scientific and Industrial Research Organisation Agriculture and Food Agriculture and Food, Canberra, ACT, Australia.
Commonwealth Scientific and Industrial Research Organisation Agriculture and Food, Canberra, ACT, Australia.
Front Plant Sci. 2018 Feb 27;9:237. doi: 10.3389/fpls.2018.00237. eCollection 2018.
Crop improvement efforts are targeting increased above-ground biomass and radiation-use efficiency as drivers for greater yield. Early ground cover and canopy height contribute to biomass production, but manual measurements of these traits, and in particular above-ground biomass, are slow and labor-intensive, more so when made at multiple developmental stages. These constraints limit the ability to capture these data in a temporal fashion, hampering insights that could be gained from multi-dimensional data. Here we demonstrate the capacity of Light Detection and Ranging (LiDAR), mounted on a lightweight, mobile, ground-based platform, for rapid multi-temporal and non-destructive estimation of canopy height, ground cover and above-ground biomass. Field validation of LiDAR measurements is presented. For canopy height, strong relationships with LiDAR ( of 0.99 and root mean square error of 0.017 m) were obtained. Ground cover was estimated from LiDAR using two methodologies: red reflectance image and canopy height. In contrast to NDVI, LiDAR was not affected by saturation at high ground cover, and the comparison of both LiDAR methodologies showed strong association ( = 0.92 and slope = 1.02) at ground cover above 0.8. For above-ground biomass, a dedicated field experiment was performed with destructive biomass sampled eight times across different developmental stages. Two methodologies are presented for the estimation of biomass from LiDAR: 3D voxel index (3DVI) and 3D profile index (3DPI). The parameters involved in the calculation of 3DVI and 3DPI were optimized for each sample event from tillering to maturity, as well as generalized for any developmental stage. Individual sample point predictions were strong while predictions across all eight sample events, provided the strongest association with biomass ( = 0.93 and = 0.92) for 3DPI and 3DVI, respectively. Given these results, we believe that application of this system will provide new opportunities to deliver improved genotypes and agronomic interventions via more efficient and reliable phenotyping of these important traits in large experiments.
作物改良工作的目标是提高地上生物量和辐射利用效率,以此作为提高产量的驱动力。早期的地面覆盖和冠层高度有助于生物量的生产,但对这些性状进行人工测量,尤其是地上生物量的测量,速度缓慢且劳动强度大,在多个发育阶段进行测量时更是如此。这些限制因素阻碍了我们及时获取这些数据的能力,妨碍了从多维数据中获得的见解。在此,我们展示了安装在轻型移动地面平台上的激光雷达(LiDAR)对冠层高度、地面覆盖和地上生物量进行快速多时间和非破坏性估算的能力。文中给出了激光雷达测量的田间验证。对于冠层高度,与激光雷达的相关性很强(R²为0.99,均方根误差为0.017米)。利用两种方法从激光雷达数据中估算地面覆盖:红色反射图像和冠层高度。与归一化植被指数(NDVI)不同,激光雷达在高地面覆盖度时不受饱和度影响,两种激光雷达方法在地面覆盖度高于0.8时显示出很强的相关性(R² = 0.92,斜率 = 1.02)。对于地上生物量,进行了一项专门的田间试验,在不同发育阶段对生物量进行了8次破坏性采样。文中介绍了两种从激光雷达数据估算生物量的方法:三维体素指数(3DVI)和三维剖面指数(3DPI)。参与计算3DVI和3DPI的参数针对从分蘖到成熟的每个采样事件进行了优化,并针对任何发育阶段进行了通用化。单个采样点的预测效果很好,而对所有八个采样事件的预测,3DPI和3DVI分别与生物量呈现出最强的相关性(R² = 0.93和R² = 0.92)。鉴于这些结果,我们相信该系统的应用将通过在大型实验中对这些重要性状进行更高效、可靠的表型分析,为培育改良基因型和实施农艺干预提供新的机会。