Gaussian processes (GPs) have experienced tremendous success in biogeophysical parameter retrieval in the last few years. GPs constitute a solid Bayesian framework to consistently formulate many function approximation problems. This article reviews the main theoretical GP developments in the field, considering new algorithms that respect signal and noise characteristics, extract knowledge via automatic relevance kernels to yield feature rankings automatically, and allow applicability of associated uncertainty intervals to transport GP models in space and time that can be used to uncover causal relations between variables and can encode physically meaningful prior knowledge via radiative transfer model (RTM) emulation. The important issue of...
In this article, we propose an approach based on Gaussian Processes (GP) for large scale land cover ...
We introduce latent force models for Earth observation time series analysis. The model uses Gaussian...
In this PhD thesis we have developed different machine learning models based on Gaussian Processes. ...
Parameter retrieval and model inversion are key problems in remote sensing and Earth observation. Cu...
Earth observation from satellite sensory data pose challenging problems, where machine learning is c...
There is an increasing need to consistently combine observations from different sensors to monitor t...
The Earth is a complex dynamic network system. Modelling and understanding the system is at the cor...
The ability to efficiently model complex datasets using probabilistic models is a key component of m...
International audienceThis review discusses recent advances in geophysical data assimilation beyond ...
This work introduces the use of Gaussian processes (GPs) for the estimation and understanding of cro...
This paper proposes a processing chain for the derivation of global Leaf Area Index (LAI), Fraction ...
Earth’s atmosphere and surface is undergoing rapid changes due to urbanization, industrialization an...
Gaussian process regression (GPR) has experienced tremendous success in biophysical parameter retrie...
We would like to thank the ReCAS Computing Center of the University of Bari, and, particularly, Stef...
This review discusses recent advances in geophysical data assimilation beyond Gaussian statistical m...
In this article, we propose an approach based on Gaussian Processes (GP) for large scale land cover ...
We introduce latent force models for Earth observation time series analysis. The model uses Gaussian...
In this PhD thesis we have developed different machine learning models based on Gaussian Processes. ...
Parameter retrieval and model inversion are key problems in remote sensing and Earth observation. Cu...
Earth observation from satellite sensory data pose challenging problems, where machine learning is c...
There is an increasing need to consistently combine observations from different sensors to monitor t...
The Earth is a complex dynamic network system. Modelling and understanding the system is at the cor...
The ability to efficiently model complex datasets using probabilistic models is a key component of m...
International audienceThis review discusses recent advances in geophysical data assimilation beyond ...
This work introduces the use of Gaussian processes (GPs) for the estimation and understanding of cro...
This paper proposes a processing chain for the derivation of global Leaf Area Index (LAI), Fraction ...
Earth’s atmosphere and surface is undergoing rapid changes due to urbanization, industrialization an...
Gaussian process regression (GPR) has experienced tremendous success in biophysical parameter retrie...
We would like to thank the ReCAS Computing Center of the University of Bari, and, particularly, Stef...
This review discusses recent advances in geophysical data assimilation beyond Gaussian statistical m...
In this article, we propose an approach based on Gaussian Processes (GP) for large scale land cover ...
We introduce latent force models for Earth observation time series analysis. The model uses Gaussian...
In this PhD thesis we have developed different machine learning models based on Gaussian Processes. ...