Privacy-preserving Multi-biometric Indexing based on Frequent Binary
Patterns
- URL: http://arxiv.org/abs/2310.03091v1
- Date: Wed, 4 Oct 2023 18:18:24 GMT
- Title: Privacy-preserving Multi-biometric Indexing based on Frequent Binary
Patterns
- Authors: Daile Osorio-Roig, Lazaro J. Gonzalez-Soler, Christian Rathgeb,
Christoph Busch
- Abstract summary: We propose an efficient privacy-preserving multi-biometric identification system that retrieves protected deep cancelable templates.
A multi-biometric binning scheme is designed to exploit the low intra-class variation properties contained in the frequent binary patterns extracted from different types of biometric characteristics.
- Score: 7.092869001331781
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The development of large-scale identification systems that ensure the privacy
protection of enrolled subjects represents a major challenge. Biometric
deployments that provide interoperability and usability by including efficient
multi-biometric solutions are a recent requirement. In the context of privacy
protection, several template protection schemes have been proposed in the past.
However, these schemes seem inadequate for indexing (workload reduction) in
biometric identification systems. More specifically, they have been used in
identification systems that perform exhaustive searches, leading to a
degradation of computational efficiency. To overcome these limitations, we
propose an efficient privacy-preserving multi-biometric identification system
that retrieves protected deep cancelable templates and is agnostic with respect
to biometric characteristics and biometric template protection schemes. To this
end, a multi-biometric binning scheme is designed to exploit the low
intra-class variation properties contained in the frequent binary patterns
extracted from different types of biometric characteristics. Experimental
results reported on publicly available databases using state-of-the-art Deep
Neural Network (DNN)-based embedding extractors show that the protected
multi-biometric identification system can reduce the computational workload to
approximately 57\% (indexing up to three types of biometric characteristics)
and 53% (indexing up to two types of biometric characteristics), while
simultaneously improving the biometric performance of the baseline biometric
system at the high-security thresholds. The source code of the proposed
multi-biometric indexing approach together with the composed multi-biometric
dataset, will be made available to the research community once the article is
accepted.
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