Abstract
A synthetic aperture radar (SAR) system requires external absolute calibration so that radiometric measurements can be exploited in numerous scientific and commercial applications. Besides estimating a calibration factor, metrological standards also demand the derivation of a respective calibration uncertainty. This uncertainty is currently not systematically determined. Here for the first time it is proposed to use hierarchical modeling and Bayesian statistics as a consistent method for handling and analyzing the hierarchical data typically acquired during external calibration campaigns. Through the use of Markov chain Monte Carlo simulations, a joint posterior probability can be conveniently derived from measurement data despite the necessary grouping of data samples. The applicability of the method is demonstrated through a case study: The radar reflectivity of DLR's new C-band Kalibri transponder is derived through a series of RADARSAT-2 acquisitions and a comparison with reference point targets (corner reflectors). The systematic derivation of calibration uncertainties is seen as an important step toward traceable radiometric calibration of synthetic aperture radars. © 2013 by the authors.
Author supplied keywords
Cite
CITATION STYLE
Döring, B. J., Schmidt, K., Jirousek, M., Rudolf, D., Reimann, J., Raab, S., … Schwerdt, M. (2013). Hierarchical bayesian data analysis in radiometric SAR system calibration: A case study on transponder calibration with RADARSAT-2 data. Remote Sensing, 5(12), 6667–6690. https://doi.org/10.3390/rs5126667
Register to see more suggestions
Mendeley helps you to discover research relevant for your work.