Huang Yirui, Li Dongming, Liu Xuan, Ren Zhenhui
Intelligent Sensor Network Engineering Research Center of Hebei Province, College of Information Engineering, Hebei GEO University, Shijiazhuang, China.
College of Mechanical and Electrical Engineering, Hebei Agricultural University, Baoding, China.
Front Plant Sci. 2024 Aug 1;15:1435613. doi: 10.3389/fpls.2024.1435613. eCollection 2024.
Chlorophyll monitoring is an important topic in phenotypic research. For fruit trees, chlorophyll content can reflect the real-time photosynthetic capacity, which is a great reference for nutrient status assessment. Traditional estimation methods are labor- and time-consuming. Remote sensing spectral imagery has been widely applied in agricultural research. This study aims to explore a transferable model to estimate canopy SPAD across growth stages and tree species. Unmanned aerial vehicle (UAV) system was applied for multispectral images acquisition. The results showed that the univariate model yielded with Green Normalized Difference Vegetation Index (GNDVI) gave valuable prediction results, providing a simple and effective method for chlorophyll monitoring for single species. Reflection features (RF) and texture features (TF) were extracted for multivariate modeling. Gaussian Process Regression (GPR) models yielded better performance for mixed species research than other algorithm models, and the of the RF+TF+GPR model was approximately 0.7 in both single and mixed species. In addition, this method can also be used to predict canopy SPAD over various growth stages, especially in the third and fourth stages with higher than 0.6. This paper highlights the importance of using RF+TF for canopy feature expression and deep connection exploration between canopy features with GPR algorithm. This research provides a universal model for canopy SPAD inversion which can promote the growth status monitoring and management of fruit trees.
叶绿素监测是表型研究中的一个重要课题。对于果树而言,叶绿素含量能够反映实时光合能力,这对营养状况评估具有重要参考价值。传统的估算方法既耗费人力又耗时。遥感光谱图像已在农业研究中得到广泛应用。本研究旨在探索一种可转移的模型,用于估算不同生长阶段和树种的冠层叶绿素含量(SPAD值)。采用无人机(UAV)系统获取多光谱图像。结果表明,基于绿色归一化差值植被指数(GNDVI)的单变量模型给出了有价值的预测结果,为单一树种的叶绿素监测提供了一种简单有效的方法。提取反射特征(RF)和纹理特征(TF)用于多变量建模。高斯过程回归(GPR)模型在混合树种研究中比其他算法模型表现更好,并且RF + TF + GPR模型在单一树种和混合树种中的决定系数均约为0.7。此外,该方法还可用于预测不同生长阶段的冠层SPAD值,尤其是在第三和第四阶段,决定系数高于0.6。本文强调了利用RF + TF进行冠层特征表达以及通过GPR算法探索冠层特征之间深度联系的重要性。本研究为冠层SPAD反演提供了一个通用模型,可促进果树生长状况监测与管理。