Can Multi-Temporal Vegetation Indices and Machine Learning Algorithms Be Used for Estimation of Groundnut Canopy State Variables?

Shaikh Yassir Yousouf Jewan, Ajit Singh, L. Billa, Debbie Sparkes, Erik Murchie, Deepak Gautam, A. Cogato, Vinay Pagay
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Abstract

The objective of this research was to assess the feasibility of remote sensing (RS) technology, specifically an unmanned aerial system (UAS), to estimate Bambara groundnut canopy state variables including leaf area index (LAI), canopy chlorophyll content (CCC), aboveground biomass (AGB), and fractional vegetation cover (FVC). RS and ground data were acquired during Malaysia’s 2018/2019 Bambara groundnut growing season at six phenological stages; vegetative, flowering, podding, podfilling, maturity, and senescence. Five vegetation indices (VIs) were determined from the RS data, resulting in single-stage VIs and cumulative VIs (∑VIs). Pearson’s correlation was used to investigate the relationship between canopy state variables and single stage VIs and ∑VIs over several stages. Linear parametric and non-linear non-parametric machine learning (ML) regressions including CatBoost Regressor (CBR), Random Forest Regressor (RFR), AdaBoost Regressor (ABR), Huber Regressor (HR), Multiple Linear Regressor (MLR), Theil-Sen Regressor (TSR), Partial Least Squares Regressor (PLSR), and Ridge Regressor (RR) were used to estimate canopy state variables using VIs/∑VIs as input. The best single-stage correlations between canopy state variables and VIs were observed at flowering (r > 0.50). Moreover, ∑VIs acquired from vegetative to senescence stage had the strongest correlation with all measured canopy state variables (r > 0.70). In estimating AGB, MLR achieved the best testing performance (R2 = 0.77, RMSE = 0.30). For CCC, RFR excelled with R2 of 0.85 and RMSE of 2.88. Most models performed well in FVC estimation with testing R2 of 0.98–0.99 and low RMSE. For LAI, MLR stood out in testing with R2 of 0.74, and RMSE of 0.63. Results demonstrate the UAS-based RS technology potential for estimating Bambara groundnut canopy variables.
多时植被指数和机器学习算法可用于估计落花生冠层状态变量吗?
本研究的目的是评估遥感(RS)技术,特别是无人机系统(UAS)估算班巴拉花生冠层状态变量的可行性,包括叶面积指数(LAI)、冠层叶绿素含量(CCC)、地上生物量(AGB)和部分植被覆盖度(FVC)。RS和地面数据是在马来西亚2018/2019年班巴拉落花生生长季节的六个物候期采集的:植株期、开花期、结荚期、结荚期、成熟期和衰老期。根据 RS 数据确定了五个植被指数(VIs),得出了单阶段植被指数和累积植被指数(∑VIs)。利用皮尔逊相关性研究了冠层状态变量与多个阶段的单阶段植被指数和∑植被指数之间的关系。线性参数和非线性非参数机器学习(ML)回归,包括 CatBoost 回归器(CBR)、随机森林回归器(RFR)、AdaBoost 回归器(ABR)和 Huber 回归器(HR)、使用多重线性回归器(MLR)、Theil-Sen 回归器(TSR)、部分最小二乘法回归器(PLSR)和岭回归器(RR),以 VIs/∑VIs 作为输入估计树冠状态变量。冠层状态变量与 VIs 之间的单阶段相关性在开花期最佳(r > 0.50)。此外,从植被期到衰老期获得的∑VIs 与所有测量的冠层状态变量的相关性最强(r > 0.70)。在估计 AGB 时,MLR 的测试性能最好(R2 = 0.77,RMSE = 0.30)。在 CCC 方面,RFR 表现出色,R2 为 0.85,RMSE 为 2.88。大多数模型在 FVC 估计方面表现良好,测试 R2 为 0.98-0.99 且均方误差小。对于 LAI,MLR 在测试中表现突出,R2 为 0.74,RMSE 为 0.63。结果表明,基于 UAS 的 RS 技术具有估算班巴拉花生冠层变量的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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