DocumentCode :
3721305
Title :
Temperature emissivity separation: Estimation with a parameter affecting both the mean and variance of the observation
Author :
Todd K. Moon;David Neal;Jacob H. Gunther;Gustavious Williams
Author_Institution :
Information Dynamics Laboratory, Electrical and Computer Engineering Dept., Utah State University, Logan, United States of America
fYear :
2015
Firstpage :
380
Lastpage :
384
Abstract :
We consider a model for temperature-emissivity separation (TES) in hyperspectral image processing. The emissivity is modulated by both the black body function and the atmospheric downwelling. The interaction has made it difficult to extract both temperature and emissivity, since offsets in one can be compensated by the other. Working with only a single wavelength component, we propose here a model in which the downwelling is considered as a random variable (or vector). The emissivity thus contributes to both the variance and mean of the observations. This leads to a maximum likelihood estimator for the emissivity. We compute an expression for the bias of this estimator, and show how it can be used to produce an unbiased estimator. An estimator for the temperature is also given. These two estimators can be used iteratively, providing separation of the temperature and emissivity components.
Keywords :
"Temperature measurement","Atmospheric measurements","Signal processing","Eigenvalues and eigenfunctions","Atmospheric modeling","Conferences","Hyperspectral imaging"
Publisher :
ieee
Conference_Titel :
Signal Processing and Signal Processing Education Workshop (SP/SPE), 2015 IEEE
Type :
conf
DOI :
10.1109/DSP-SPE.2015.7369584
Filename :
7369584
Link To Document :
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