Abstract
Accurate retrieval of grassland traits is important to support management of pasture production and phenotyping studies. In general, conventional methods used to measure forage yield and quality rely on costly destructive sampling and laboratory analysis, which is often not viable in practical applications. Optical imaging systems carried as payload in Unmanned Aerial Vehicles (UAVs) platforms have increasingly been proposed as alternative non-destructive solutions for crop characterization and monitoring. The vegetation spectral response in the visible and near-infrared wavelengths provides information on many aspects of its composition and structure. Combining spectral measurements and multivariate modelling approaches it is possible to represent the often complex relationship between canopy reflectance and specific plant traits. However, empirical models are limited and strictly represent characteristics of the observations used during model training, therefore having low generalization potential. A method to mitigate this issue consists of adding informative samples from the target domain (i.e., new observations) to the training dataset. This approach searches for a compromise between representing the variability in new data and selecting only a minimal number of additional samples for calibration transfer. In this study, a method to actively choose new training samples based on their spectral diversity and prediction uncertainty was implemented and tested using a multi-annual dataset. Accurate predictions were obtained using hyperspectral imagery and linear multivariate models (Partial Least Squares Regression—PLSR) for grassland dry matter (DM; R2 = 0.92, RMSE = 3.25 dt ha−1), nitrogen (N) content in % of DM (R2 = 0.58, RMSE = 0.27%) and N-uptake (R2 = 0.91, RMSE = 6.50 kg ha−1). In addition, the number of samples from the target dates added to the training dataset could be reduced by up to 77% and 74% for DM and N-related traits, respectively, after model transfer. Despite this reduction, RMSE values for optimal transfer sets (identified after validation and used as benchmark) were only 20–30% lower than those values obtained after model transfer based on prediction uncertainty reduction, indicating that loss of accuracy was relatively small. These results demonstrate that considerably simple approaches based on UAV hyperspectral data can be applied in preliminary grassland monitoring frameworks, even with limited datasets.
Highlights
Adequate grassland management is required to ensure sustainable and rentable cattle production, especially taking into account the potentially high environmental impacts of this activity
In this study the retrieval of grassland traits based on multi-temporal Unmanned Aerial Vehicles (UAVs) hyperspectral imagery was investigated
It was verified that accurate predictions of dry matter and N-related traits (N content in % of dry matter and N-uptake in kg ha−1 ) was possible using models derived from data acquired on the same year of the target date or after adding informative samples from the target date to a training dataset acquired in another year
Summary
Adequate grassland management is required to ensure sustainable and rentable cattle production, especially taking into account the potentially high environmental impacts of this activity. Determining the quantity and quality of forage available in-situ is essential since it is the least expensive source of feed and optimizing the utilization of this resource is crucial to reduce production costs [1]. In this sense, choosing the right time for harvesting or grazing a given field is important and involves a trade-off between yield and biomass nutritional value, since dry matter accumulation over time is generally followed by reduction in nutritional quality, in particular regarding digestibility [2]. Remote sensing techniques have been proposed in the literature as viable tools to assess quantity and quality of grassland production
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