The Fourth Stokes Parameter for Geolocation in Passive Microwave Remote Sensing from Space
IEEE Transactions on Geoscience and Remote Sensing(2022)
NASA
Abstract
Polarimetric microwave radiometers such as SMAP are capable of measuring the fourth Stokes parameter in brightness temperature over the Earth surface. The value of this parameter is normally small but exhibits sharp spikes when the scene includes large differences in emission from the surface, such as occur at land/water boundaries. In this manuscript, it is shown that these spikes can be used to accurately locate coastlines with potential application to geolocation in passive microwave remote sensing from space. Examples are presented using the L-band radiometer on SMAP, first with theory using calculations with the SMAP antenna pattern and orbit and then with SMAP measurements of the fourth Stokes parameter over Madagascar. Using the SMAP data, the coastline is located with a standard deviation less than 2 km. The results are consistent with the conventional approach used for geolocation of the SMAP radiometer footprint.
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Key words
Radiometers,Space vehicles,Stokes parameters,Geology,Extraterrestrial measurements,Antennas,Orbits,Geolocation polarimetri cradiometer,passive microwave remote sensing
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