- Accueil de RIUBU
- E-Prints
- Untitled
- Voir le document
Por favor, use este identificador para citar o enlazar este ítem: https://hdl.handle.net/10259/10551
Título
S4A-CyL: A Sentinel-2 Time Series Dataset for Deep Learning in Agriculture (2020-2024)
Autor
Editorial
Universidad de Burgos
Fecha de publicación
2025-06-12
DOI
10.71486/q4yz-p373
Résumé
This dataset, "S4A-CyL," provides a comprehensive, multi-annual (2020-2024) collection of analysis-ready data patches for the Castilla y León region in Spain. It is specifically designed to support the development and validation of deep learning models for agricultural applications, with a primary focus on crop type classification.
The dataset integrates dense Sentinel-2 L2A time series with meticulously processed agricultural parcel geometries and harmonized crop type labels derived from the Spanish Land Parcel Identification System (SIGPAC). A key feature is the implementation of a persistent parcel identification system, ensuring the temporal traceability of agricultural plots across the five-year period.
The data is structured in a format inspired by the Sen4AgriNet project, with individual NetCDF files for each spatial patch. Each patch is a self-contained unit that includes the multi-spectral Sentinel-2 time series alongside the corresponding parcel ID and crop type reference layers.
Palabras clave
Deep learning
Sentinel-2
Time series
Agriculture
Crop type classification
Castilla y León, Spain
Land parcel
SIGPAC
Earth Observation
Remote sensing
Materia
Inteligencia artificial
Artificial intelligence
Agricultura
Agriculture
Aparece en las colecciones
ACCESO AL DATASET en SCAYLE









