Spectral, temporal and spatial dimensions are difficult to model together when predicting in situ plant traits from remote sensing data. Therefore, machine learning algorithms solely based on spectral dimensions are often used as predictors, even when there is a strong effect of spatial or temporal autocorrelation in the data. A significant reduction in prediction accuracy is expected when algorithms are trained using a sequence in space or time that is unlikely to be observed again. The ensuing inability to generalise creates a necessity for ground-truth data for every new area or period, provoking the propagation of “single-use” models. This study assesses the impact of spatial autocorrelation on the generalisation of plant tr...
Environmental scientists often face the challenge of predicting a complex phenomenon from a heteroge...
Proximal sensors, such as hyperspectral and fluorescence devices, provide important information abou...
Machine learning algorithms, in particular, kernel-based machine learning methods such as Gaussian p...
Spectral, temporal and spatial dimensions are difficult to model together when predicting in situ pl...
Data from remote sensing with finer spectral and spatial resolution are increasingly available. Whil...
Data used for assessing model prediction of plant traits under spatial dependency using hyperspectra...
Remote sensing opens opportunities to assess spatial patterns on ecological data for a wide range of...
The machine learning method, random forest (RF), is applied in order to derive biophysical and struc...
This paper introduces a modular processing chain to derive global high-resolution maps of plant trai...
Question: Do spatial gradients of plant strategies correspond to patterns of plant traits obtained f...
Field spectroscopy is a powerful tool for monitoring leaf functional traits in situ, but it remains ...
The machine learning method, random forest (RF), is applied in order to derive biophysical and struc...
The correction of spatial scaling bias on the estimate of leaf area index (LAI) retrieved from remot...
Field spectroscopy is a powerful tool for monitoring leaf functional traits in situ, but it remains ...
Temporally rich hyperspectral time-series can provide unique time critical information on within-fie...
Environmental scientists often face the challenge of predicting a complex phenomenon from a heteroge...
Proximal sensors, such as hyperspectral and fluorescence devices, provide important information abou...
Machine learning algorithms, in particular, kernel-based machine learning methods such as Gaussian p...
Spectral, temporal and spatial dimensions are difficult to model together when predicting in situ pl...
Data from remote sensing with finer spectral and spatial resolution are increasingly available. Whil...
Data used for assessing model prediction of plant traits under spatial dependency using hyperspectra...
Remote sensing opens opportunities to assess spatial patterns on ecological data for a wide range of...
The machine learning method, random forest (RF), is applied in order to derive biophysical and struc...
This paper introduces a modular processing chain to derive global high-resolution maps of plant trai...
Question: Do spatial gradients of plant strategies correspond to patterns of plant traits obtained f...
Field spectroscopy is a powerful tool for monitoring leaf functional traits in situ, but it remains ...
The machine learning method, random forest (RF), is applied in order to derive biophysical and struc...
The correction of spatial scaling bias on the estimate of leaf area index (LAI) retrieved from remot...
Field spectroscopy is a powerful tool for monitoring leaf functional traits in situ, but it remains ...
Temporally rich hyperspectral time-series can provide unique time critical information on within-fie...
Environmental scientists often face the challenge of predicting a complex phenomenon from a heteroge...
Proximal sensors, such as hyperspectral and fluorescence devices, provide important information abou...
Machine learning algorithms, in particular, kernel-based machine learning methods such as Gaussian p...