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Call for Paper - May 2015 Edition
IJCA solicits original research papers for the May 2015 Edition. Last date of manuscript submission is April 20, 2015. Read More

A Multiple Classifier System for Automatic Speech Recognition

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International Journal of Computer Applications
© 2014 by IJCA Journal
Volume 101 - Number 9
Year of Publication: 2014
Authors:
Sarika Hegde
K. K. Achary
Surendra Shetty
10.5120/17717-8759

Sarika Hegde, K k Achary and Surendra Shetty. Article: A Multiple Classifier System for Automatic Speech Recognition. International Journal of Computer Applications 101(9):38-43, September 2014. Full text available. BibTeX

@article{key:article,
	author = {Sarika Hegde and K.k. Achary and Surendra Shetty},
	title = {Article: A Multiple Classifier System for Automatic Speech Recognition},
	journal = {International Journal of Computer Applications},
	year = {2014},
	volume = {101},
	number = {9},
	pages = {38-43},
	month = {September},
	note = {Full text available}
}

Abstract

Multiple Classifier System (MCS) is designed by combining two or more classifiers. MCS helps in increasing the accuracy of classification compared to the performance of the individual classifier. In this paper, Multiple Classifier System is implemented for automatic speech recognition. The combined classifier takes the final decision on predicted class label using a class label fuser (also called as classifier fuser). The class label fuser uses the predicted class labels of the two classifiers i. e Hidden Markov Model (HMM) and Support Vector Machines (SVM) and also involves the Dynamic Time Warping (DTW) technique for the final decision on the predicted label. There is an improvement in the accuracy of such classifier compared to the output of any individual classifier.

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