Downscaling Microwave Brightness Temperatures Using Self Regularized Regressive Models
Abstract
A novel algorithm is proposed to downscale microwave brightness temperatures (), at scales of 10-40 km such as those from the Soil Moisture Active Passive mission to a resolution meaningful for hydrological and agricultural applications. This algorithm, called Self-Regularized Regressive Models (SRRM), uses auxiliary variables correlated to along-with a limited set of \textit{in-situ} SM observations, which are converted to high resolution observations using biophysical models. It includes an information-theoretic clustering step based on all auxiliary variables to identify areas of similarity, followed by a kernel regression step that produces downscaled . This was implemented on a multi-scale synthetic data-set over NC-Florida for one year. An RMSE of 5.76~K with standard deviation of 2.8~k was achieved during the vegetated season and an RMSE of 1.2~K with a standard deviation of 0.9~K during periods of no vegetation.
Keywords
Cite
@article{arxiv.1501.07683,
title = {Downscaling Microwave Brightness Temperatures Using Self Regularized Regressive Models},
author = {Subit Chakrabarti and Jasmeet Judge and Anand Rangarajan and Sanjay Ranka},
journal= {arXiv preprint arXiv:1501.07683},
year = {2015}
}
Comments
7 pages, 4 figures, submitted to be presented at the International Geoscience and Remote Sensing Conference 2015