DocumentCode :
1311457
Title :
A Novel Method to Estimate Subpixel Temperature by Fusing Solar-Reflective and Thermal-Infrared Remote-Sensing Data With an Artificial Neural Network
Author :
Yang, Guijun ; Pu, Ruiliang ; Huang, Wenjiang ; Wang, Jihua ; Zhao, Chunjiang
Author_Institution :
Nat. Eng. Res. Center for Inf. Technol. in Agric., Beijing, China
Volume :
48
Issue :
4
fYear :
2010
fDate :
4/1/2010 12:00:00 AM
Firstpage :
2170
Lastpage :
2178
Abstract :
Among the multisource data fusing methods, the potential advantages of remote sensing of solar-reflective visible and near-Infrared [(VNIR); 400-900 nm] data and thermal-infrared (TIR) data have not been fully mined. Usually, a linear unmixed method is used for the purpose, which results in low estimation accuracy of subpixel land-surface temperature (LST). In this paper, we propose a novel method to estimate subpixel LST. This approach uses the characteristics of high spatial-resolution advanced spaceborne thermal emission and reflection radiometer (ASTER) VNIR data and the low spatial-resolution TIR data simulated from ASTER temperature product to generate the high spatial-resolution temperature data at a subpixel scale. First, the land-surface parameters (e.g., leaf area index, normalized difference vegetation index (NDVI), soil water content index, and reflectance) were extracted from VNIR data and field measurements. Then, the extracted high resolution of land-surface parameters and the LST were simulated into coarse resolutions. Second, the genetic algorithm and self-organizing feature map artificial neural network (ANN) was utilized to create relationships between land-surface parameters and the corresponding LSTs separately for different land-cover types at coarse spatial-resolution scales. Finally, the ANN-trained relationships were applied in the estimation of subpixel temperatures (at high spatial resolution) from high spatial-resolution land-surface parameters. The two sets of data with different spatial resolutions were simulated using an aggregate resampling algorithm. Experimental results indicate that the accuracy with our method to estimate land-surface subpixel temperature is significantly higher than that with a traditional method that uses the NDVI as an input parameter, and the average error of subpixel temperature is decreased by 2-3 K with our method. This method is a simple and convenient approach to estimate subpixel LST from high spatial-te- - mporal resolution data quickly and effectively.
Keywords :
atmospheric techniques; genetic algorithms; geophysical signal processing; land surface temperature; neural nets; remote sensing; sensor fusion; vegetation mapping; ASTER VNIR data; ASTER temperature product; advanced spaceborne thermal emission; artificial neural network; fusing solar-reflective data; genetic algorithm; high spatial-resolution temperature data; land-cover types; land-surface parameters; land-surface temperature; leaf area index; linear unmixed method; normalized difference vegetation index; reflection radiometer; self-organizing feature map; soil water content index; subpixel temperature; thermal-infrared remote-sensing data; Genetic algorithm and self-organizing feature map (GA-SOFM) artificial neural network (ANN); land-surface parameter; subpixel temperature; thermal infrared (TIR); visible and near infrared (NIR) (VNIR);
fLanguage :
English
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
Publisher :
ieee
ISSN :
0196-2892
Type :
jour
DOI :
10.1109/TGRS.2009.2033180
Filename :
5325792
Link To Document :
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