Leaf area index-based phenotypic assessment of sweet potato varieties using UAV multispectral imagery and a hybrid retrieval approach

IF 6.3 Q1 AGRICULTURAL ENGINEERING
Philemon Tsele , Abel Ramoelo , Lucy Moleleki , Sunette Laurie , Whelma Mphela , Natasha Tshuma
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引用次数: 0

Abstract

Phenotyping based on the estimation of plant traits such as the leaf area index (LAI) could aid the identification and monitoring of the sweet potato health, growth status and gross primary productivity. Integrating radiative transfer models (RTMs), active learning algorithms and non-parametric regression methods using unmanned aerial vehicle (UAV) multispectral imagery have the potential for accurately estimating LAI across multiple crop varieties at varying growth stages. This study tested the boosted regression trees (BRT) and kernel ridge regression (KRR) for inversion of the PROSAIL RTM to retrieve LAI across 20 sweet potato varieties during peak growth stage. Furthermore, the study attempted to constrain the inversion process by using active learning (AL) techniques which ensured the selection of informative samples from a pool of RTM simulations. Results show that the most accurate LAI retrieval over the heterogeneous sweet potato canopy was achieved by integrating smaller PROSAIL simulations with the random sampling AL and KRR methods. The LAI retrieval accuracy had a coefficient of determination (R2) of 0.52, root mean squared error (RMSE) of 0.88 m2.m-2 and relative RMSE of 12.23 %. However, the BRT performance in-comparison to KRR, captured more spatial variability of observed LAI with a better prediction accuracy across the 20 sweet potato varieties. The hybrid approach developed in this study, show potential for accurate phenotyping of LAI dynamics across multiple sweet potato varieties during a matured growth stage. These findings have significant implications for sweet potato breeding programmes that are critical for developing new cultivars in South Africa.
基于叶面积指数的无人机多光谱影像和杂交检索方法的甘薯品种表型评价
基于叶面积指数(LAI)等植物性状的表型分析有助于红薯健康状况、生长状况和总初级生产力的鉴定和监测。利用无人机(UAV)多光谱图像整合辐射传输模型(rtm)、主动学习算法和非参数回归方法,有可能准确估算不同作物品种不同生长阶段的LAI。本研究利用增强回归树(BRT)和核脊回归(KRR)对PROSAIL RTM进行反演,反演20个甘薯品种生长高峰期的叶面积指数。此外,该研究试图通过使用主动学习(AL)技术来约束反演过程,以确保从RTM模拟池中选择信息样本。结果表明,将较小的PROSAIL模拟与随机抽样AL和KRR方法相结合,可以获得最准确的非均质甘薯冠层LAI反演结果。LAI反演精度的决定系数(R2)为0.52,均方根误差(RMSE)为0.88 m2。m-2,相对RMSE为12.23%。然而,与KRR相比,BRT在20个甘薯品种中捕获了更多的LAI空间变异性,预测精度更高。本研究中开发的杂交方法显示了多个甘薯品种在成熟生长阶段LAI动态准确表型的潜力。这些发现对在南非培育新品种至关重要的甘薯育种计划具有重要意义。
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CiteScore
4.20
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