Joint Gaussian Processes for Biophysical Parameter Retrieval
Daniel Heestermans Svendsen, Luca Martino, Manuel Campos-Taberner,, Francisco Javier Garc\'ia-Haro, Gustau Camps-Valls

TL;DR
This paper introduces a novel nonlinear regression model called Joint Gaussian Process (JGP) that effectively combines real and simulated data for biophysical parameter retrieval in remote sensing, improving accuracy and robustness.
Contribution
The work presents the JGP model that integrates physical knowledge from RTMs with real observations, automatically balancing their influence for improved inversion results.
Findings
JGP outperforms benchmark methods in biophysical parameter retrieval.
The model adapts to different data quality scenarios.
Application to LAI retrieval from Landsat data demonstrates effectiveness.
Abstract
Solving inverse problems is central to geosciences and remote sensing. Radiative transfer models (RTMs) represent mathematically the physical laws which govern the phenomena in remote sensing applications (forward models). The numerical inversion of the RTM equations is a challenging and computationally demanding problem, and for this reason, often the application of a nonlinear statistical regression is preferred. In general, regression models predict the biophysical parameter of interest from the corresponding received radiance. However, this approach does not employ the physical information encoded in the RTMs. An alternative strategy, which attempts to include the physical knowledge, consists in learning a regression model trained using data simulated by an RTM code. In this work, we introduce a nonlinear nonparametric regression model which combines the benefits of the two…
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Taxonomy
MethodsGaussian Process
