Using A Priori Information to Improve Soil Misture Retrieval From ENVISAT ASAR AP Data in Semiarid Regions
Articolo
Data di Pubblicazione:
2006
Abstract:
This paper presents a retrieval algorithm that estimates
spatial and temporal distribution of volumetric soil
moisture content, at an approximate depth of 5 cm, using multitemporal
ENVISAT Advanced Synthetic Aperture Radar (ASAR)
alternating polarization images, acquired at low incidence angles
(i.e., from 15 to 31 ). The algorithm appropriately assimilates a
priori information on soil moisture content and surface roughness
in order to constrain the inversion of theoretical direct models,
such as the integral equation method model and the geometric
optics model. The a priori information on soil moisture content is
obtained through simple lumped water balance models, whereas
that on soil roughness is derived by means of an empirical approach.
To update prior estimates of surface parameters, when no
reliable a priori information is available, a technique based solely
on the use of multitemporal SAR information is proposed. The
developed retrieval algorithm is assessed on the Matera site (Italy)
where multitemporal ground and ASAR data were simultaneously
acquired in 2003. Simulated and experimental results indicate
the possibility of attaining an accuracy of approximately 5%
in the retrieved volumetric soil moisture content, provided that
sufficiently accurate a priori information on surface parameters
(i.e., within 20% of their whole variability range) is available. As
an example, multitemporal soil moisture maps at watershed scale,
characterized by a spatial resolution of approximately 150 m, are
derived and illustrated in the paper.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
SAR; soil moisture; retrieval; surface scattering; modelling
Elenco autori:
Dente, Laura; Mattia, Francesco; Satalino, Giuseppe; Pasquariello, Guido
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