Raul Zurita Milla

GIMA
M-GEO
M-SE
STAMP

The accurate prediction of crop yields is a critical element in ensuring global food security, managing agricultural markets and supporting the decision-making processes of farmers and

GIMA
M-GEO
M-SE
STAMP

Objective

To develop a deep learning model to estimate the timing of phenological events over large area

GIMA
M-GEO
M-SE
STAMP

To develop a model to estimate the timing of phenological events over large areas from time series of earth observation data using vision transformers, a fierce alternative to tra

GIMA
M-GEO
M-SE
STAMP

Global production, transportation, and consumption of oil can cause inevitable spills into the environment (typically from pipelines, oil wells, and storage facilities) cont

GIMA
M-GEO
M-SE
STAMP

Deep Neural Networks (DNN) is considered as a panacea for different problems in several application areas. But what about spatial modeling?

GIMA
M-GEO
M-SE
STAMP

Geo-referenced time series are data describing the time-changing behavior of one or more attributes at fixed locations and consistent time intervals [1].

GIMA
M-GEO
M-SE
STAMP

Crop mapping plays an important role in agronomic planning and management both for farmers and policymakers. Satellite remote sensing sensors have become efficient tools for mapping croplands.

GIMA
M-GEO
M-SE
STAMP

Impervious surfaces are the Earth’s surfaces covered with mainly anthropogenic and artificial structures, such as built-up areas, roads and streets, and parking lots.