Chen Qiaomin, Zheng Bangyou, Chenu Karine, Hu Pengcheng, Chapman Scott C
School of Agriculture and Food Sciences, The University of Queensland, St Lucia, QLD, Australia.
Agriculture and Food, CSIRO, Queensland Bioscience Precinct, St Lucia, QLD, Australia.
Plant Phenomics. 2022 Jul 2;2022:9768253. doi: 10.34133/2022/9768253. eCollection 2022.
High-throughput phenotyping has become the frontier to accelerate breeding through linking genetics to crop growth estimation, which requires accurate estimation of leaf area index (LAI). This study developed a hybrid method to train the random forest regression (RFR) models with synthetic datasets generated by a radiative transfer model to estimate LAI from UAV-based multispectral images. The RFR models were evaluated on both (i) subsets from the synthetic datasets and (ii) observed data from two field experiments (i.e., Exp16, Exp19). Given the parameter ranges and soil reflectance are well calibrated in synthetic training data, RFR models can accurately predict LAI from canopy reflectance captured in field conditions, with systematic overestimation for LAI<2 due to background effect, which can be addressed by applying background correction on original reflectance map based on vegetation-background classification. Overall, RFR models achieved accurate LAI prediction from background-corrected reflectance for Exp16 (correlation coefficient () of 0.95, determination coefficient ( ) of 0.900.91, root mean squared error (RMSE) of 0.360.40 m m, relative root mean squared error (RRMSE) of 2528%) and less accurate for Exp19 ( =0.800.83, = 0.630.69, RMSE of 0.840.86 m m, RRMSE of 30~31%). Additionally, RFR models correctly captured spatiotemporal variation of observed LAI as well as identified variations for different growing stages and treatments in terms of genotypes and management practices (i.e., planting density, irrigation, and fertilization) for two experiments. The developed hybrid method allows rapid, accurate, nondestructive phenotyping of the dynamics of LAI during vegetative growth to facilitate assessments of growth rate including in breeding program assessments.
高通量表型分析已成为通过将遗传学与作物生长估计联系起来加速育种的前沿领域,这需要准确估计叶面积指数(LAI)。本研究开发了一种混合方法,用辐射传输模型生成的合成数据集训练随机森林回归(RFR)模型,以从无人机搭载的多光谱图像中估计LAI。RFR模型在(i)合成数据集的子集和(ii)两个田间试验(即Exp16、Exp19)的观测数据上进行了评估。鉴于合成训练数据中的参数范围和土壤反射率已得到良好校准,RFR模型可以根据田间条件下获取的冠层反射率准确预测LAI,但由于背景效应,对于LAI<2会出现系统性高估,这可以通过基于植被-背景分类对原始反射率图进行背景校正来解决。总体而言,RFR模型对Exp16经背景校正后的反射率实现了准确的LAI预测(相关系数()为0.95,决定系数()为0.900.91,均方根误差(RMSE)为0.360.40 m m,相对均方根误差(RRMSE)为2528%),而对Exp19的预测准确性较低(=0.800.83,=0.630.69,RMSE为0.840.86 m m,RRMSE为30~31%)。此外,RFR模型正确捕捉了观测LAI的时空变化,并识别了两个试验在不同生长阶段以及不同基因型和管理措施(即种植密度、灌溉和施肥)处理方面的变化。所开发的混合方法能够在营养生长期间对LAI动态进行快速、准确、无损的表型分析,以促进包括育种计划评估在内的生长速率评估。