Yang Yandong, Li Qing, Mu Yue, Li Haitao, Wang Hengtong, Ninomiya Seishi, Jiang Dong
Academy for Advanced Interdisciplinary Studies, Collaborative Innovation Center for Modern Crop Production co-sponsored by Province and Ministry, State Key Laboratory of Crop Genetics and Germplasm Enhancement and Utilization, Nanjing 210095, China.
College of Agriculture, National Technique Innovation Center for Regional Wheat Production, Key Laboratory of Crop Ecophysiology, Ministry of Agriculture, Nanjing Agricultural University, Nanjing 210095, China.
Plant Phenomics. 2024 Jun 18;6:0191. doi: 10.34133/plantphenomics.0191. eCollection 2024.
Crop uniformity is a comprehensive indicator used to describe crop growth and is important for assessing crop yield and biomass potential. However, there is still a lack of continuous monitoring of uniformity throughout the growing season to explain their effects on yield and biomass. Therefore, this paper proposed a wheat uniformity quantification method based on unmanned aerial vehicle imaging technology to monitor and analyze the dynamic changes in wheat uniformity. The leaf area index (LAI), soil plant analysis development (SPAD), and fractional vegetation cover were estimated from hyperspectral images, while plant height was estimated by a point cloud model from RGB images. Based on these 4 agronomic parameters, a total of 20 uniformity indices covering multiple growing stages were calculated. The changing trends in the uniformity indices were consistent with the results of visual interpretation. The uniformity indices strongly correlated with yield and biomass were selected to construct multiple linear regression models for estimating yield and biomass. The results showed that Pielou's index of LAI had the strongest correlation with yield and biomass, with correlation coefficients of -0.760 and -0.801, respectively. The accuracies of the yield (coefficient of determination [ ] = 0.616, root mean square error [RMSE] = 1.189 Mg/ha) and biomass estimation model ( = 0.798, RMSE = 1.952 Mg/ha) using uniformity indices were better than those of the models using the mean values of the 4 agronomic parameters. Therefore, the proposed uniformity monitoring method can be used to effectively evaluate the temporal and spatial variations in wheat uniformity and can provide new insights into the prediction of yield and biomass.
作物均匀度是用于描述作物生长的综合指标,对于评估作物产量和生物量潜力至关重要。然而,在整个生长季节仍缺乏对均匀度的连续监测,以解释其对产量和生物量的影响。因此,本文提出了一种基于无人机成像技术的小麦均匀度量化方法,以监测和分析小麦均匀度的动态变化。从高光谱图像中估算叶面积指数(LAI)、土壤植物分析发展(SPAD)和植被覆盖度,而通过RGB图像的点云模型估算株高。基于这4个农艺参数,计算了涵盖多个生长阶段的总共20个均匀度指数。均匀度指数的变化趋势与目视判读结果一致。选择与产量和生物量强相关的均匀度指数来构建用于估算产量和生物量的多元线性回归模型。结果表明,LAI的皮尔逊指数与产量和生物量的相关性最强,相关系数分别为-0.760和-0.801。使用均匀度指数的产量估算模型(决定系数[] = 0.616,均方根误差[RMSE] = 1.189 Mg/ha)和生物量估算模型( = 0.798,RMSE = 1.952 Mg/ha)的精度优于使用4个农艺参数平均值的模型。因此,所提出的均匀度监测方法可用于有效评估小麦均匀度的时空变化,并可为产量和生物量预测提供新的见解。