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Classification of remotely sensed images using neural-network ensemble and fuzzy integration

DSpace at IIT Bombay

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Title Classification of remotely sensed images using neural-network ensemble and fuzzy integration
 
Creator REDDY, GM
MOHAN, BK
 
Subject robust classification
 
Description An algorithm for fusing multiple remotely sensed image classifiers is addressed herein using fuzzy integral with error proportionate fuzzy measures. This method includes a procedure for calculating the lambda-fuzzy measures which are adjusted depending on error correlation among the individual classifiers. Based on these fuzzy measures, the fuzzy integral is then used as non-linear function to search for maximum degree of agreement between multiple conflicting sources of evidence. Results obtained are used for decision making in classification problem. Experimental results on classification of remotely sensed images show that the performance of proposed multi-classifier method performs better than conventional method where fixed fuzzy measures are used.
 
Publisher SPRINGER-VERLAG BERLIN
 
Date 2011-10-23T18:37:23Z
2011-12-15T09:11:17Z
2011-10-23T18:37:23Z
2011-12-15T09:11:17Z
2005
 
Type Article; Proceedings Paper
 
Identifier PATTERN RECOGNITION AND MACHINE INTELLIGENCE, PROCEEDINGS,3776,350-355
3-540-30506-8
0302-9743
http://dspace.library.iitb.ac.in/xmlui/handle/10054/15203
http://hdl.handle.net/100/1973
 
Source 1st International Conference on Pattern Recognition and Machine Intelligence,Kolkata, INDIA,DEC 20-22, 2005
 
Language English