Li Yafeng, Li Changchun, Cheng Qian, Chen Li, Li Zongpeng, Zhai Weiguang, Mao Bohan, Chen Zhen
School of Surveying and Land Information Engineering, Henan Polytechnic University, Jiaozuo, China.
Institute of Farmland Irrigation, Chinese Academy of Agricultural Sciences, Xinxiang, China.
Front Plant Sci. 2024 Sep 18;15:1437350. doi: 10.3389/fpls.2024.1437350. eCollection 2024.
Crop height and above-ground biomass (AGB) serve as crucial indicators for monitoring crop growth and estimating grain yield. Timely and accurate acquisition of wheat crop height and AGB data is paramount for guiding agricultural production. However, traditional data acquisition methods suffer from drawbacks such as time-consuming, laborious and destructive sampling.
The current approach to estimating AGB using unmanned aerial vehicles (UAVs) remote sensing relies solely on spectral data, resulting in low accuracy in estimation. This method fails to address the ill-posed inverse problem of mapping from two-dimensional to three-dimensional and issues related to spectral saturation. To overcome these challenges, RGB and multispectral sensors mounted on UAVs were employed to acquire spectral image data. The five-directional oblique photography technique was utilized to construct the three-dimensional point cloud for extracting crop height.
This study comparatively analyzed the potential of the mean method and the Accumulated Incremental Height (AIH) method in crop height extraction. Utilizing Vegetation Indices (VIs), AIH and their feature combinations, models including Random Forest Regression (RFR), eXtreme Gradient Boosting (XGBoost), Gradient Boosting Regression Trees (GBRT), Support Vector Regression (SVR) and Ridge Regression (RR) were constructed to estimate winter wheat AGB. The research results indicated that the AIH method performed well in crop height extraction, with minimal differences between 95% AIH and measured crop height values were observed across various growth stages of wheat, yielding R ranging from 0.768 to 0.784. Compared to individual features, the combination of multiple features significantly improved the model's estimate accuracy. The incorporation of AIH features helps alleviate the effects of spectral saturation. Coupling VIs with AIH features, the model's R increases from 0.694-0.885 with only VIs features to 0.728-0.925. In comparing the performance of five machine learning algorithms, it was discovered that models constructed based on decision trees were superior to other machine learning algorithms. Among them, the RFR algorithm performed optimally, with R ranging from 0.9 to 0.93.
In conclusion, leveraging multi-source remote sensing data from UAVs with machine learning algorithms overcomes the limitations of traditional crop monitoring methods, offering a technological reference for precision agriculture management and decision-making.
作物株高和地上生物量是监测作物生长和估算粮食产量的关键指标。及时、准确地获取小麦株高和地上生物量数据对于指导农业生产至关重要。然而,传统的数据采集方法存在耗时、费力和破坏性采样等缺点。
目前利用无人机遥感估算地上生物量的方法仅依赖光谱数据,导致估算精度较低。该方法未能解决从二维到三维映射的不适定逆问题以及与光谱饱和相关的问题。为了克服这些挑战,采用安装在无人机上的RGB和多光谱传感器获取光谱图像数据。利用五向倾斜摄影技术构建三维点云以提取作物株高。
本研究比较分析了均值法和累积增量高度(AIH)法在作物株高提取中的潜力。利用植被指数(VIs)、AIH及其特征组合,构建了包括随机森林回归(RFR)、极端梯度提升(XGBoost)、梯度提升回归树(GBRT)、支持向量回归(SVR)和岭回归(RR)在内的模型来估算冬小麦地上生物量。研究结果表明,AIH法在作物株高提取中表现良好,在小麦的各个生长阶段,95% AIH与实测作物株高值之间的差异最小,相关系数R在0.768至0.784之间。与单个特征相比,多个特征的组合显著提高了模型的估算精度。AIH特征的纳入有助于减轻光谱饱和的影响。将VIs与AIH特征相结合,模型的R从仅使用VIs特征时的0.694 - 0.885提高到0.728 - 0.925。在比较五种机器学习算法的性能时,发现基于决策树构建的模型优于其他机器学习算法。其中,RFR算法表现最佳,R在0.9至0.93之间。
总之,利用无人机的多源遥感数据结合机器学习算法克服了传统作物监测方法的局限性,为精准农业管理和决策提供了技术参考。