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An Enhanced Palm Vein Recognition System Using Multi-level Fusion of Multimodal Features and Adaptive Resonance Theory

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International Journal of Computer Applications
© 2010 by IJCA Journal
Number 20 - Article 19
Year of Publication: 2010
Authors:
M.Deepamalar
M.Madheswaran
10.5120/414-612

M.Deepamalar and M.Madheswaran. Article: An Enhanced Palm Vein Recognition System Using Multi-level Fusion of Multimodal Features and Adaptive Resonance Theory. International Journal of Computer Applications 1(20):95–101, February 2010. Published By Foundation of Computer Science. BibTeX

@article{key:article,
	author = {M.Deepamalar and M.Madheswaran},
	title = {Article: An Enhanced Palm Vein Recognition System Using Multi-level Fusion of Multimodal Features and Adaptive Resonance Theory},
	journal = {International Journal of Computer Applications},
	year = {2010},
	volume = {1},
	number = {20},
	pages = {95--101},
	month = {February},
	note = {Published By Foundation of Computer Science}
}

Abstract

An improved palm vein recognition system using multimodal features and neural network classifier has been developed and presented in this paper. The effects of fusion of multiple features at various levels have been demonstrated. The shape and texture features have been considered for recognition of authenticated users and it is validated using neural network classifier. The recognition accuracy of the proposed system has been compared with the existing techniques. It is found that the recognition accuracy is 99.61% when the multimodal features fused at matching score level. This proposed multimodal palm vein recognition system is expected to provide reliable security.

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