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Performance Enhancement of Hopfield Neural Network as Associative Memory for Finger Print Images with Pseudoinverse


Affiliations
1 Department of Computer Applications, Manav Rachna College of Engineering, Faridabad, Haryana, India
2 Department of Computer Science, ICIS, Dr. B. R. Ambedkar University, Khandari Campus, Agra, India
     

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This paper is designed to analyse the performance of a Hopfield neural network for storage and recall of fingerprint images. The study implements a form of unsupervised learning. The paper first discusses the storage and recall via hebbian learning and the problem areas or the efficiency issues involved and then the performance enhancement via the pseudoinverse learning. Performance is measured with respect to storage capacity, recall of distorted or noisy patterns i.e association of a noisy version of a stored pattern to the original stored pattern for testing the accretive behaviour of the network and association of new or unstored patterns to some stored pattern.

Keywords

Hopfield Networks, Associative Memory, Hebbian Learning, Pseudoinverse Learning, Stable States, Energy Analysis, Image Preprocessing.
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  • Performance Enhancement of Hopfield Neural Network as Associative Memory for Finger Print Images with Pseudoinverse

Abstract Views: 180  |  PDF Views: 4

Authors

Rinku Sharma Dixit
Department of Computer Applications, Manav Rachna College of Engineering, Faridabad, Haryana, India
Manu Pratap Singh
Department of Computer Science, ICIS, Dr. B. R. Ambedkar University, Khandari Campus, Agra, India

Abstract


This paper is designed to analyse the performance of a Hopfield neural network for storage and recall of fingerprint images. The study implements a form of unsupervised learning. The paper first discusses the storage and recall via hebbian learning and the problem areas or the efficiency issues involved and then the performance enhancement via the pseudoinverse learning. Performance is measured with respect to storage capacity, recall of distorted or noisy patterns i.e association of a noisy version of a stored pattern to the original stored pattern for testing the accretive behaviour of the network and association of new or unstored patterns to some stored pattern.

Keywords


Hopfield Networks, Associative Memory, Hebbian Learning, Pseudoinverse Learning, Stable States, Energy Analysis, Image Preprocessing.