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REMOTE SENSING FOR LAND & RESOURCES    2007, Vol. 19 Issue (3) : 18-22     DOI: 10.6046/gtzyyg.2007.03.04
Technology and Methodology |
AN OPTIMIZAED MULTIPLE-BAND ALGORITHM BY USING
NEURAL NETWORK FOR SEPARATING LAND SURFACE
EMISSIVITY AND TEMPERATURE FROM ASTER IMAGERY
MAO Ke-biao 1,3,  TANG Hua-jun 1,   CHEN Zhong-xin 1,  WANG Yong-qian 2
1.Key Laboratory of Resources Remote Sensing and Digital Agriculture, MOA, Institute of Agricultural Resources and Regional Planning, Chinese Academy of Agricultural Sciences, Beijing 100081, China; 2.State Key Laboratory of Remote Sensing Science Jointly Sponsored by the Institute of Remote Sensing Applications of Chinese Academy of Sciences and Beijing Normal University, Beijing 100101, China; 3.Graduate School of Chinese Academy of Sciences, Beijing 100049, China
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Abstract  

 A multiple-band algorithm is proposed in this paper to separate land surface temperature and emissivity from ASTER data. Three methods can be used to solve the equations. The first is the performance of classification for the images and the formulation of  different equations, followed by the solution of the equations. The second is least-squares. The third is the simulation of the database according to the characteristics of object emissivities and the utilization of the neural network to solve equations. An analysis indicates that the neural network can improve the practicability and accuracy of the algorithm. The accuracy of neural network proves to be very high for the test data simulated from MODTRAN 4. An application example is given in this paper, and the analysis suggests that the neural network also possesses the self-study capability. The simulation data show that the average error of land surface temperature is below 0.5℃, and the error of emissivity in band 11~14 is below 0.007(band 11,12)and 0.006 (band 13,14), respectively.

Keywords Training samples      Purification      Divergence      Goodness of fit     
: 

TP 75

 
Issue Date: 21 July 2009
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MAO Ke-Biao, TANG Hua-Jun, CHEN Zhong-Xin, WANG Yong-Qian. AN OPTIMIZAED MULTIPLE-BAND ALGORITHM BY USING
NEURAL NETWORK FOR SEPARATING LAND SURFACE
EMISSIVITY AND TEMPERATURE FROM ASTER IMAGERY[J]. REMOTE SENSING FOR LAND & RESOURCES,2007, 19(3): 18-22.
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https://www.gtzyyg.com/EN/10.6046/gtzyyg.2007.03.04     OR     https://www.gtzyyg.com/EN/Y2007/V19/I3/18
[1] Wanjun LIU, Tianhui LI, Haicheng QU. Hyperspectral similar sample classification algorithm based on Fisher criterion and TrAdaboost[J]. Remote Sensing for Land & Resources, 2018, 30(4): 41-48.
[2] ZHU Hongchun, HUANG Wei, LIU Haiying, ZHANG Zhongfang, WANG Bin. Research on object-oriented remote sensing change detection method based on KL divergence[J]. REMOTE SENSING FOR LAND & RESOURCES, 2017, 29(2): 46-52.
[3] TAO Qiu-Xiang, ZHANG Lian-Peng, LI Hong-Mei. THE METHODS FOR SELECTING TRAINING SAMPLES
IN VEGETATION CLASSIFICATION BASED ON
HYPERSPECTRAL REMOTE SENSING
[J]. REMOTE SENSING FOR LAND & RESOURCES, 2005, 17(2): 33-35.
[4] Wu Jianping, Yang Xingwei. PURIFICATION OF TRAINING SAMPLES IN SUPERVISED CLASSIFICATION OF REMOTE SENSING DATA[J]. REMOTE SENSING FOR LAND & RESOURCES, 1996, 8(1): 36-41.
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