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Neuro-Fuzzy Fusion: A New Approach to Multiple Classifier System
Bhubaneswar, India December 18-December 21
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/ICIT.2006.679th International Conference on Infor ...
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Saroj K., MIU, Indian Statistical Institute, Kolkata
Ashish Ghosh, MIU, Indian Statistical Institute, Kolkata
B. Uma Shankar, MIU, Indian Statistical Institute, Kolkata
Lorenzo Bruzzone, University of Trento, ITALY
Selection of a suitable classifier fusion scheme in the design of multiple classifier systems (MCSs) is a tedious task. To meet this we propose a neuro-fuzzy fusion (NFF) method for fusing the responses of a set of fuzzy classifiers. In the proposed method the output of the considered classifiers are fed to a neural network which performs the fusion task. Five labeled data sets, of which two are from remote sensing images, have been used for the performance comparison of various MCSs. Experimental study revealed the improved classification capability of the proposed NFF based MCS yielding consistently better results for all data sets.
Citation:
Saroj K. , Ashish Ghosh, B. Uma Shankar, Lorenzo Bruzzone, "Neuro-Fuzzy Fusion: A New Approach to Multiple Classifier System," icit, pp.209-212, 9th International Conference on Information Technology (ICIT'06), 2006
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