Xian Guolan, Liu Jiangang, Lin Yongxin, Li Shuang, Bian Chunsong
State Key Laboratory of Vegetable Biobreeding, Institute of Vegetables and Flowers, Chinese Academy of Agricultural Sciences, Beijing 100081, China.
College of Agronomy and Biotechnology, Southwest University, Chongqing 400715, China.
Plants (Basel). 2024 Nov 29;13(23):3356. doi: 10.3390/plants13233356.
Timely and accurate monitoring of above-ground biomass (AGB) is of great significance for indicating crop growth status, predicting yield, and assessing carbon dynamics. Compared with the traditional time-consuming and laborious method through destructive sampling, UAV remote sensing provides a timely and efficient strategy for estimating biomass. However, the universality of remote sensing retrieval models with multi-feature fusion under different management practices and cultivars are unknown. The spectral, textural, and structural features extracted by UAV multispectral and RGB imaging, coupled with agricultural meteorological parameters, were integrated to estimate the AGB in potato during the whole growth period. Six advanced modeling algorithms, including random forest (RF), partial least squares regression (PLSR), multiple linear regression (MLR), simple linear regression (SLR), ridge regression (RR), and lasso regression (LR) models, were adopted to evaluate the ability of estimating AGB by single feature and multi-feature information fusion. The results indicate the following: (1) The newly proposed variety-dependent indicator growth process ratio (GPR) can improve the model accuracy by over 20%. (2) The fusion of vegetation indices, canopy cover, growing degree days, and GPR achieved higher accuracy to estimate AGB at all growth stages compared with single feature model. (3) RF model performed best for the estimation of AGB during the whole growth period with R 0.79 and rRMSE 0.24 ton/ha. The study demonstrated that the fusion of multi-feature coupled with the machine learning algorithm achieved the best performance for estimating potato AGB under different management practices and cultivars, which can be a potential and useful phenotyping strategy for estimating AGB at refined plot scale during the whole growth period.
及时准确地监测地上生物量(AGB)对于指示作物生长状况、预测产量和评估碳动态具有重要意义。与传统的通过破坏性采样耗时费力的方法相比,无人机遥感为估算生物量提供了一种及时有效的策略。然而,不同管理措施和品种下多特征融合的遥感反演模型的通用性尚不清楚。将无人机多光谱和RGB成像提取的光谱、纹理和结构特征与农业气象参数相结合,用于估算马铃薯全生育期的地上生物量。采用随机森林(RF)、偏最小二乘回归(PLSR)、多元线性回归(MLR)、简单线性回归(SLR)、岭回归(RR)和套索回归(LR)模型等六种先进建模算法,评估单特征和多特征信息融合估算地上生物量的能力。结果表明:(1)新提出的品种依赖指标生长过程比(GPR)可使模型精度提高20%以上。(2)与单特征模型相比,植被指数、冠层覆盖度、生长度日和GPR的融合在所有生长阶段估算地上生物量时具有更高的精度。(3)RF模型在全生育期估算地上生物量方面表现最佳,R为0.79,rRMSE为0.24吨/公顷。该研究表明,多特征融合结合机器学习算法在不同管理措施和品种下估算马铃薯地上生物量时性能最佳,这可能是一种在全生育期精细地块尺度上估算地上生物量的潜在且有用的表型策略。