Privacy preserving unique identity generation from multimodal biometric data for privacy and security applications

Author:

Dash Priyabrata1ORCID,Sarma Monalisa2,Samanta Debasis3

Affiliation:

1. Advanced Technology Development Centre Indian Institute of Technology Kharagpur Kharagpur India

2. Subir Chowdhury School of Quality and Reliability Indian Institute of Technology Kharagpur Kharagpur India

3. Department of Computer Science and Engineering Indian Institute of Technology Kharagpur Kharagpur India

Abstract

AbstractThis study presents a novel approach for generating unique identities from multi‐modal biometric data using ensemble feature descriptors extracted from the consistent regions of fingerprint and iris images. The method employs prominent feature selection and discriminant vector generation to enhance intra‐class similarity and inter‐class separability. Finally, a novel quantization mechanism is used to generate a unique identity. This identity might be vulnerable to many attacks. A shielding mechanism is proposed to address this issue. Experimental results substantiate the method's efficacy, satisfying criteria for distinctiveness, randomness, revocability, and irreversibility. Security analyses showcase resilience against diverse attacks, establishing its applicability in forensic investigations, digital wallets, remote authentication, and other privacy‐focused applications. The confidential UID generation scheme ensures privacy and security without involving biometric data or UID enrollment, enhancing its suitability across various applications.

Publisher

Wiley

Reference42 articles.

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4. Efficient private key generation from iris data for privacy and security applications;Dash P;J Inf Secur Appl,2023

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