IIIA   26586
INSTITUTO DE INVESTIGACION E INGENIERIA AMBIENTAL
Unidad Ejecutora - UE
artículos
Título:
Freshwater marsh classification in the Lower Paraná River floodplain: An object-based approach on multitemporal X-band COSMO-SkyMed data
Autor/es:
GAYOL, MAIRA PATRICIA; GRIMSON, RAFAEL; KANDUS, PATRICIA; MORANDEIRA, NATALIA SOLEDAD
Revista:
JOURNAL OF APPLIED REMOTE SENSING
Editorial:
SPIE-SOC PHOTOPTICAL INSTRUMENTATION ENGINEERS
Referencias:
Año: 2019 vol. 13 p. 1 - 14
ISSN:
1931-3195
Resumen:
A multitemporal approach to discriminate freshwater macrophyte vegetation types in the Lower Paraná River floodplain is addressed. During a low-intensity flood pulse, seven X-band HH COSMO-SkyMed HImage images are acquired, covering a nine-month period. Scenes are segmented with a mean-shift segmentation algorithm. Objects are classified with an expectation maximization algorithm into clusters with different temporal signatures and are assigned to six information classes: water, bulrush marshes, short broad-leaf marshes, tall broad-leaf marshes, short grasslands and grass marshes, and tall grasslands and grass marshes. Class interpretation is based on backscatter dynamics, with focus on their correlation with hydrometric water level measured in the Paraná River and/or with the floodplain area covered by water as estimated with a normalized difference vegetation index threshold criterion. The obtained product has a global accuracy of 75.4% and a kappa index of 67.2%. We point out the usefulness of X-band for flood monitoring and macrophyte vegetation type discrimination. However, we find limitations for the discrimination between high-biomass vegetation targets, such as tall broad-leaf marshes and tall grasslands. In a mosaic of herbaceous wetlands, the knowledge on the relation between vegetation and floods is essential for interpreting and predicting how backscattering coefficients and other synthetic aperture radar-derivated parameters vary with flooding.