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Deep learning para la clasificación de usos de suelo agrícola con Sentinel-2

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Deep learning para la clasificación de usos de suelo agrícola con Sentinel-2

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Campos-Taberner, M.; García-Haro, F.; Martínez, B.; Gilabert, M. (2020). Deep learning para la clasificación de usos de suelo agrícola con Sentinel-2. Revista de Teledetección. 0(56):35-48. https://doi.org/10.4995/raet.2020.13337

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Título: Deep learning para la clasificación de usos de suelo agrícola con Sentinel-2
Otro titulo: Deep learning for agricultural land use classification from Sentinel-2
Autor: Campos-Taberner, M. García-Haro, F.J. Martínez, B. Gilabert, M.A.
Fecha difusión:
Resumen:
[ES] En el campo de la teledetección se ha producido recientemente un incremento del uso de técnicas de aprendizaje profundo (deep learning). Estos algoritmos se utilizan con éxito principalmente en la estimación de ...[+]


[EN] The use of deep learning techniques for remote sensing applications has recently increased. These algorithms have proven to be successful in estimation of parameters and classification of images. However, little effort ...[+]
Palabras clave: Deep learning , BiLSTM , Classification , Time series , Sentinel-2 , Clasificación , Series temporales
Derechos de uso: Reconocimiento - No comercial - Compartir igual (by-nc-sa)
Fuente:
Revista de Teledetección. (issn: 1133-0953 ) (eissn: 1988-8740 )
DOI: 10.4995/raet.2020.13337
Editorial:
Universitat Politècnica de València
Versión del editor: https://doi.org/10.4995/raet.2020.13337
Agradecimientos:
Este trabajo ha sido subvencionado gracias al Convenio 2019 y 2020 de colaboración entre la Generalitat Valenciana, a través de la Conselleria d’Agricultura, Medi Ambient, Canvi Climàtic i Desenvolupament Rural, y la ...[+]
Tipo: Artículo

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