Title
Controlled spectral unmixing using extended Support Vector Machines
Abstract
This paper presents an improved spectral unmixing framework for remote sensing data interpretation. Instead of unmixing every pixel in an image into a fixed set of endmembers, approaches of adaptive subsets of endmember selection for individual pixels are presented which can improve the performance of spectral unmixing. An integrated hard and soft classification map is then generated by applying the mixture analysis based on extended Support Vector Machines. The proposed treatment is effective and easy to implement. Unmixing is more reliable with the controlled mixture model. It can cope with the endmembers' spectral variation as a result of system noise encountered during data collection from the space. Experiments were conducted with Landsat ETM data and satisfactory results were achieved.
Year
DOI
Venue
2010
10.1109/WHISPERS.2010.5594843
WHISPERS
Keywords
Field
DocType
geophysical image processing,remote sensing,support vector machines,landsat etm data,extended support vector machines,image pixels,improved spectral unmixing framework,integrated hard-soft classification map,remote sensing data interpretation,spectral unmixing,pixel,support vector machine,mixture model,data collection,indexes
Endmember,Data collection,Pattern recognition,Data interpretation,Computer science,Support vector machine,Pixel,Artificial intelligence,Mixture model,Spectral variation
Conference
ISBN
Citations 
PageRank 
978-1-4244-8907-7
10
0.75
References 
Authors
3
5
Name
Order
Citations
PageRank
Xiuping Jia11424126.54
chandrama dey2100.75
Donald Fraser3788.29
Leo Lymburner49114.23
Adam Lewis5676.19