Ver ítem
- xmlui.general.dspace_homeCentros Regionales y EEAsCentro Regional Salta - JujuyEEA SaltaArtículos científicosxmlui.ArtifactBrowser.ItemViewer.trail
- Inicio
- Centros Regionales y EEAs
- Centro Regional Salta - Jujuy
- EEA Salta
- Artículos científicos
- Ver ítem
Temporally-Consistent Annual Land Cover from Landsat Time Series in the Southern Cone of South America
Resumen
The impact of land cover change across the planet continues to necessitate accurate methods to detect and monitor evolving processes from satellite imagery. In this context, regional and global land cover mapping over time has largely treated time as independent and addressed temporal map consistency as a post-classification endeavor. However, we argue that time can be better modeled as codependent during the model classification stage to produce more
[ver mas...]
The impact of land cover change across the planet continues to necessitate accurate methods to detect and monitor evolving processes from satellite imagery. In this context, regional and global land cover mapping over time has largely treated time as independent and addressed temporal map consistency as a post-classification endeavor. However, we argue that time can be better modeled as codependent during the model classification stage to produce more consistent land cover estimates over long time periods and gradual change events. To produce temporally-dependent land cover estimates—meaning land cover is predicted over time in connected sequences as opposed to predictions made for a given time period without consideration of past land cover—we use structured learning with conditional random fields (CRFs), coupled with a land cover augmentation method to produce time series training data and bi-weekly Landsat imagery over 20 years (1999–2018) across the Southern Cone region of South America. A CRF accounts for the natural dependencies of land change processes. As a result, it is able to produce land cover estimates over time that better reflect real change and stability by reducing pixel-level annual noise. Using CRF, we produced a twenty-year dataset of land cover over the region, depicting key change processes such as cropland expansion and tree cover loss at the Landsat scale. The augmentation and CRF approach introduced here provides a more temporally consistent land cover product over traditional mapping methods.
[Cerrar]
Autor
Graesser, Jordan;
Stanimirova, Radost;
Tarrio, Katelyn;
Copati, Esteban J.;
Volante, Jose Norberto;
Veron, Santiago Ramón;
Banchero, Santiago;
Elena, Hernan Javier;
De Abelleyra, Diego;
Friedl, Mark A.;
Fuente
Remote Sensing 14 (16) : 4005. (August 2022)
Fecha
2022-08
Editorial
MDPI
ISSN
2072-4292
Formato
pdf
Tipo de documento
artículo
Palabras Claves
Derechos de acceso
Abierto
Excepto donde se diga explicitamente, este item se publica bajo la siguiente descripción: Creative Commons Attribution-NonCommercial-ShareAlike 2.5 Unported (CC BY-NC-SA 2.5)