利用基于 RGB 的无人飞行器图像和机器学习模型得出的植被指数评估甘蔗作物生长监测效果

Agronomy Pub Date : 2024-09-09 DOI:10.3390/agronomy14092059
P. P. Ruwanpathirana, Kazuhito Sakai, G. Y. Jayasinghe, Tamotsu Nakandakari, Kozue Yuge, W. M. C. J. Wijekoon, A. C. P. Priyankara, M. D. S. Samaraweera, P. L. A. Madushanka
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摘要

利用无人飞行器(UAV)进行作物监测有可能降低田间监测成本,同时提高监测频率和效率。然而,利用基于 RGB 的无人飞行器图像进行特定作物监测,尤其是甘蔗监测,仍然十分有限。本研究提出了一种配备 RGB 摄像机的无人机平台,作为监测甘蔗田的低成本解决方案,对常用的多光谱方法进行补充。这种新方法优化了 RGB 植被指数,以准确预测甘蔗生长情况,为可扩展的作物管理方法提供了许多改进。图像由大疆 Mavic Pro 无人机拍摄。从图像中得出了四个 RGB 植被指数(VI)(GLI、VARI、GRVI 和 MGRVI)和作物表面模型植株高度(CSM_PH)。通过图像分类比较了植被覆盖率(FVC)值。甘蔗株高的预测采用了两种机器学习(ML)算法--多重线性回归(MLR)和随机森林(RF)--并对五种预测组合(CSM_PH 和四种植被指数)进行了比较。在早期阶段,所有 VIs 的值都明显低于后期阶段(p < 0.05),表明作物生长初期进展缓慢。MGRVI 在所有生长阶段的分类准确率均超过 94%,优于传统指数。根据特征排序,VARI 是最不敏感的参数,显示出最低的相关性(r < 0.5)和互信息(MI < 0.4)。结果表明,RF 和 MLR 模型能更好地预测株高。利用 RF 模型对 CSM_PH 和 GLI 的组合得出的估计结果最好(R2 = 0.90,RMSE = 0.37 m,MAE = 0.27 m,AIC = 21.93)。这项研究表明,从无人机拍摄的 RGB 图像中提取的 VIs 和 CSM_PH 可以用于监测甘蔗生长情况,从而提高作物产量。
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Evaluation of Sugarcane Crop Growth Monitoring Using Vegetation Indices Derived from RGB-Based UAV Images and Machine Learning Models
Crop monitoring with unmanned aerial vehicles (UAVs) has the potential to reduce field monitoring costs while increasing monitoring frequency and improving efficiency. However, the utilization of RGB-based UAV imagery for crop-specific monitoring, especially for sugarcane, remains limited. This work proposes a UAV platform with an RGB camera as a low-cost solution to monitor sugarcane fields, complementing the commonly used multi-spectral methods. This new approach optimizes the RGB vegetation indices for accurate prediction of sugarcane growth, providing many improvements in scalable crop-management methods. The images were captured by a DJI Mavic Pro drone. Four RGB vegetation indices (VIs) (GLI, VARI, GRVI, and MGRVI) and the crop surface model plant height (CSM_PH) were derived from the images. The fractional vegetation cover (FVC) values were compared by image classification. Sugarcane plant height predictions were generated using two machine learning (ML) algorithms—multiple linear regression (MLR) and random forest (RF)—which were compared across five predictor combinations (CSM_PH and four VIs). At the early stage, all VIs showed significantly lower values than later stages (p < 0.05), indicating an initial slow progression of crop growth. MGRVI achieved a classification accuracy of over 94% across all growth phases, outperforming traditional indices. Based on the feature rankings, VARI was the least sensitive parameter, showing the lowest correlation (r < 0.5) and mutual information (MI < 0.4). The results showed that the RF and MLR models provided better predictions for plant height. The best estimation results were observed withthe combination of CSM_PH and GLI utilizing RF model (R2 = 0.90, RMSE = 0.37 m, MAE = 0.27 m, and AIC = 21.93). This study revealed that VIs and the CSM_PH derived from RGB images captured by UAVs could be useful in monitoring sugarcane growth to boost crop productivity.
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