Earth observation from satellite sensory data pose challenging problems, where machine learning is currently a key player. In recent years, Gaussian Process (GP) regression and other kernel methods have excelled in biophysical parameter estimation tasks from space. GP regression is based on solid Bayesian statistics, and generally yield efficient and accurate parameter estimates. However, GPs are typically used for inverse modeling based on concurrent observations and in situ measurements only. Very often a forward model encoding the well-understood physical relations is available though. In this work, we review three GP models that respect and learn the physics of the underlying processes in the context of inverse modeling. First, we will ...
In this thesis, several challenges in both ground-motion modelling and the surrogate modelling, are ...
In this paper, we propose a novel semisupervised Gaussian regression approach for the estimation of ...
Transmission spectroscopy, which consists of measuring the wavelength-dependent absorption of starli...
Earth observation from satellite sensory data pose challenging problems, where machine learning is c...
Gaussian processes (GPs) have experienced tremendous success in biogeophysical parameter retrieval i...
We introduce latent force models for Earth observation time series analysis. The model uses Gaussian...
There is an increasing need to consistently combine observations from different sensors to monitor t...
Parameter retrieval and model inversion are key problems in remote sensing and Earth observation. Cu...
Purely data-driven approaches for machine learning present difficulties when data are scarce relativ...
In this PhD thesis we have developed different machine learning models based on Gaussian Processes. ...
Purely data-driven approaches for machine learning present difficulties when data are scarce relativ...
International audienceGrid-based modelling is widely used for estimating stellar parameters. However...
Gaussian Processes are a class of non-parametric models that are often used to model stochastic beha...
Transmission spectroscopy, which consists of measuring the wavelength-dependent absorption of starli...
Transmission spectroscopy, which consists of measuring the wavelength-dependent absorption of starli...
In this thesis, several challenges in both ground-motion modelling and the surrogate modelling, are ...
In this paper, we propose a novel semisupervised Gaussian regression approach for the estimation of ...
Transmission spectroscopy, which consists of measuring the wavelength-dependent absorption of starli...
Earth observation from satellite sensory data pose challenging problems, where machine learning is c...
Gaussian processes (GPs) have experienced tremendous success in biogeophysical parameter retrieval i...
We introduce latent force models for Earth observation time series analysis. The model uses Gaussian...
There is an increasing need to consistently combine observations from different sensors to monitor t...
Parameter retrieval and model inversion are key problems in remote sensing and Earth observation. Cu...
Purely data-driven approaches for machine learning present difficulties when data are scarce relativ...
In this PhD thesis we have developed different machine learning models based on Gaussian Processes. ...
Purely data-driven approaches for machine learning present difficulties when data are scarce relativ...
International audienceGrid-based modelling is widely used for estimating stellar parameters. However...
Gaussian Processes are a class of non-parametric models that are often used to model stochastic beha...
Transmission spectroscopy, which consists of measuring the wavelength-dependent absorption of starli...
Transmission spectroscopy, which consists of measuring the wavelength-dependent absorption of starli...
In this thesis, several challenges in both ground-motion modelling and the surrogate modelling, are ...
In this paper, we propose a novel semisupervised Gaussian regression approach for the estimation of ...
Transmission spectroscopy, which consists of measuring the wavelength-dependent absorption of starli...