BioDeepHash: Mapping Biometrics into a Stable Code
Baogang Song, Dongdong Zhao, Jiang Yan, Huanhuan Li, Hao, Jiang

TL;DR
BioDeepHash is a novel biometric template protection framework that uses deep hashing and cryptographic hashing to enhance security, revocability, and accuracy without leaking biometric data.
Contribution
It introduces a deep hashing-based approach for biometric protection that avoids error-correcting codes and enhances security and revocability.
Findings
Improves genuine acceptance rate by 10.12% for iris and 3.12% for facial data.
Achieves 0% false acceptance rate on iris data.
Ensures no biometric data leakage.
Abstract
With the wide application of biometrics, more and more attention has been paid to the security of biometric templates. However most of existing biometric template protection (BTP) methods have some security problems, e.g. the problem that protected templates leak part of the original biometric data (exists in Cancelable Biometrics (CB)), the use of error-correcting codes (ECC) leads to decodable attack, statistical attack (exists in Biometric Cryptosystems (BCS)), the inability to achieve revocability (exists in methods using Neural Network (NN) to learn pre-defined templates), the inability to use cryptographic hash to guarantee strong security (exists in CB and methods using NN to learn latent templates). In this paper, we propose a framework called BioDeepHash based on deep hashing and cryptographic hashing to address the above four problems, where different biometric data of the…
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Taxonomy
TopicsBiomedical Text Mining and Ontologies
