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Identificación de áreas quemadas mediante el análisis de series de tiempo en el ámbito de computación en la nube

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Identificación de áreas quemadas mediante el análisis de series de tiempo en el ámbito de computación en la nube

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Anaya, J.; Sione, W.; Rodríguez-Montellano, A. (2018). Identificación de áreas quemadas mediante el análisis de series de tiempo en el ámbito de computación en la nube. Revista de Teledetección. (51):61-73. doi:10.4995/raet.2018.8618

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Title: Identificación de áreas quemadas mediante el análisis de series de tiempo en el ámbito de computación en la nube
Secondary Title: Burned area detection based on time-series analysis in a cloud computing environment
Author:
Issued date:
Abstract:
[EN] There are large omission errors in the estimation of burned area in map products that are generated at a global scale. This error is then inherited by other models, for instance, those used to report Greenhouse Gas ...[+]


[ES] Los productos globales de área quemada tienden a omitir una importante extensión de área afectada por el fuego, este error luego se traslada a otros modelos, por ejemplo, en las estimaciones nacionales de gases efecto ...[+]
Subjects: Área quemada , Incendios , NBR , GEE , Computación en la nube , Burned area , Fires , Cloud computing
Copyrigths: Reconocimiento - No comercial - Sin obra derivada (by-nc-nd)
Source:
Revista de Teledetección. (issn: 1133-0953 ) (eissn: 1988-8740 )
DOI: 10.4995/raet.2018.8618
Publisher:
Universitat Politècnica de València
Publisher version: https://doi.org/10.4995/raet.2018.8618
Thanks:
Los autores quieren agradecer el apoyo institucional de la Universidad de Medellín (UDEM) y de la Universidad Autónoma de Entre Ríos (UADER). El proyecto fue realizado en el contexto de REDLATIF y liderado por la línea de ...[+]
Type: Artículo

Location


 

References

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