Title :
Surface Emissivity Retrieval From Airborne Hyperspectral Scanner Data: Insights on Atmospheric Correction and Noise Removal
Author :
Jiménez-Muñoz, Juan C. ; Sobrino, José A. ; Gillespie, Alan R.
Author_Institution :
Image Process. Lab., Univ. of Valencia, Valencia, Spain
fDate :
3/1/2012 12:00:00 AM
Abstract :
Airborne multispectral imagers have been used in validation campaigns in order to acquire very high spatial resolution data as a benchmark for current or future satellite data. Imagery acquired with such sensors implies specific data processing in relation to view-angle-dependent atmospheric correction and removal or minimization of stripping-based noise. It is necessary to appropriately perform this processing in order to benefit from reference imageries of surface temperature (T) and emissivity (ε) maps retrieved from thermal infrared data. In particular, ε images generated from T/ε separation algorithms show undesirable noise that jeopardizes their photointerpretation. This letter addresses the following: 1) the removal of view-angle-dependent atmospheric effects by using ratio techniques for deriving atmospheric water vapor content in a pixel-by-pixel basis and atmospheric radiative transfer simulations to construct lookup tables (LUTs) and 2) the removal of image stripping using maximum/minimum noise fraction (MNF) transforms. For this purpose, imagery acquired with the Airborne Hyperspectral Scanner (AHS) sensor has been used. Results show that angular effects in the atmospheric correction can be addressed from AHS-derived water vapor content and LUTs, whereas due to the AHS noise specific characteristics, the MNF transform only removed part of the noise.
Keywords :
atmospheric humidity; data acquisition; geophysical image processing; image denoising; infrared imaging; radiative transfer; remote sensing; temperature measurement; Airborne Hyperspectral Scanner sensor; airborne multispectral imager; atmospheric radiative transfer simulation; atmospheric water vapor content; data processing; emissivity map; image acquisition; lookup table; maximum-minimum noise fraction; photointerpretation; pixel-by-pixel basis; ratio technique; satellite data; stripping-based noise minimization; stripping-based noise removal; surface emissivity retrieval; surface temperature map; thermal infrared data; very high spatial resolution data acquisition; view-angle-dependent atmospheric correction; Atmospheric measurements; Atmospheric modeling; Hyperspectral sensors; Noise; Sensors; Transforms; Airborne Hyperspectral Scanner (AHS); emissivity; minimum noise fraction (MNF); temperature and emissivity separation (TES); thermal infrared (TIR);
Journal_Title :
Geoscience and Remote Sensing Letters, IEEE
DOI :
10.1109/LGRS.2011.2163699