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Call for Paper - May 2015 Edition
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Speech Recognition: Increasing Efficiency of Support Vector Machines

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International Journal of Computer Applications
© 2011 by IJCA Journal
Volume 35 - Number 7
Year of Publication: 2011
Authors:
Aamir Khan
Muhammad Farhan
Asar Ali
10.5120/4413-6131

Aamir Khan, Muhammad Farhan and Asar Ali. Article: Speech Recognition: Increasing Efficiency of Support Vector Machines. International Journal of Computer Applications 35(7):17-21, December 2011. Full text available. BibTeX

@article{key:article,
	author = {Aamir Khan and Muhammad Farhan and Asar Ali},
	title = {Article: Speech Recognition: Increasing Efficiency of Support Vector Machines},
	journal = {International Journal of Computer Applications},
	year = {2011},
	volume = {35},
	number = {7},
	pages = {17-21},
	month = {December},
	note = {Full text available}
}

Abstract

With the advancement of communication and security technologies, it has become crucial to have robustness of embedded biometric systems. This paper presents the realization of such technologies which demands reliable and error-free biometric identity verification systems. High dimensional patterns are not permitted due to eigen-decomposition in high dimensional feature space and degeneration of scattering matrices in small size sample. Generalization, dimensionality reduction and maximizing the margins are controlled by minimizing weight vectors. Results show good pattern by multimodal biometric system proposed in this paper. This paper is aimed at investigating a biometric identity system using Support Vector Machines(SVMs) and Lindear Discriminant Analysis(LDA) with MFCCs and implementing such system in real-time using SignalWAVE.

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