6533b824fe1ef96bd128130e

RESEARCH PRODUCT

Kernel-based retrieval of atmospheric profiles from IASI data

Jordi Munoz-mariLuis Gómez-chovaGustau Camps-vallsXavier CalbetValero Laparra

subject

Support vector machineKernel methodInfraredComputer scienceKernel (statistics)Hyperspectral imagingAtmospheric modelInfrared atmospheric sounding interferometerAtmospheric temperatureSpectral lineRemote sensing

description

This paper proposes the use of kernel ridge regression (KRR) to derive surface and atmospheric properties from hyperspectral infrared sounding spectra. We focus on the retrieval of temperature and humidity atmospheric profiles from Infrared Atmospheric Sounding Interferometer (MetOp-IASI) data, and provide confidence maps on the predictions. In addition, we propose a scheme for the identification of anomalies by supervised classification of discrepancies with the ECMWF estimates. For the retrieval, we observed that KRR clearly outperformed linear regression. Looking at the confidence maps, we observed that big discrepancies are mainly due to the presence of clouds and low emissivities in desert areas. For the identification of anomalies, we observed that the confidence intervals provided by the KRR may help in discarding big errors. High detection accuracy (around 90%) is achieved by a support vector machine, which largely outperforms standard linear and nonlinear classifiers.

https://doi.org/10.1109/igarss.2011.6049799