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Secured Cryptographic Key Generation from Multimodal Biometrics:Feature Level Fusion of Fingerprint and Iris


Affiliations
1 Bannari Amman Institute of Technology, Sathyamangalam-638401, Tamil Nadu, India
2 K.S.R. College of Technology, Tiruchengode-637209, Tamil Nadu, India
     

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Human users have a tough time remembering long cryptographic keys. Hence, researchers, for so long, have been examining ways to utilize biometric features of the user instead of a memorable password or passphrase, in an effort to generate strong and repeatable cryptographic keys. Our objective is to incorporate the volatility of the user's biometric features into the generated key, so as to make the key ungues sable to an attacker lacking significant knowledge of the user's biometrics. We go one step further trying to incorporate multiple biometric modalities into cryptographic key generation so as to provide better security. In this article, we propose an efficient approach based on multimodal biometrics (Iris and fingerprint) for generation of secure cryptographic key. The proposed approach is composed of three modules namely, 1) Feature extraction, 2) Multimodal biometric template generation and 3) Cryptographic key generation. Initially, the features, minutiae points and texture properties are extracted from the fingerprint and iris images respectively. Subsequently, the extracted features are fused together at the feature level to construct the multi-biometric template. Finally, a 256-bit secure cryptographic key is generated from the multi-biometric template. For experimentation, we have employed the fingerprint images obtained from publicly available sources and the iris images from CASIA Iris Database. The experimental results demonstrate the effectiveness of the proposed approach.

Keywords

Biometrics, Multimodal, Fingerprint, Minutiae Points, Iris, Rubber Sheet Model, Fusion, Segmentation, Cryptographic Key, Chinese Academy of Sciences Institute of Automation (CASIA) Iris Database.
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  • Secured Cryptographic Key Generation from Multimodal Biometrics:Feature Level Fusion of Fingerprint and Iris

Abstract Views: 155  |  PDF Views: 2

Authors

A. Jagadeesan
Bannari Amman Institute of Technology, Sathyamangalam-638401, Tamil Nadu, India
T. Thillaikkarasi
Bannari Amman Institute of Technology, Sathyamangalam-638401, Tamil Nadu, India
K. Duraiswamy
K.S.R. College of Technology, Tiruchengode-637209, Tamil Nadu, India

Abstract


Human users have a tough time remembering long cryptographic keys. Hence, researchers, for so long, have been examining ways to utilize biometric features of the user instead of a memorable password or passphrase, in an effort to generate strong and repeatable cryptographic keys. Our objective is to incorporate the volatility of the user's biometric features into the generated key, so as to make the key ungues sable to an attacker lacking significant knowledge of the user's biometrics. We go one step further trying to incorporate multiple biometric modalities into cryptographic key generation so as to provide better security. In this article, we propose an efficient approach based on multimodal biometrics (Iris and fingerprint) for generation of secure cryptographic key. The proposed approach is composed of three modules namely, 1) Feature extraction, 2) Multimodal biometric template generation and 3) Cryptographic key generation. Initially, the features, minutiae points and texture properties are extracted from the fingerprint and iris images respectively. Subsequently, the extracted features are fused together at the feature level to construct the multi-biometric template. Finally, a 256-bit secure cryptographic key is generated from the multi-biometric template. For experimentation, we have employed the fingerprint images obtained from publicly available sources and the iris images from CASIA Iris Database. The experimental results demonstrate the effectiveness of the proposed approach.

Keywords


Biometrics, Multimodal, Fingerprint, Minutiae Points, Iris, Rubber Sheet Model, Fusion, Segmentation, Cryptographic Key, Chinese Academy of Sciences Institute of Automation (CASIA) Iris Database.