A case study on multi-modal biometrics in the cloud

Žiga Emeršič, Jernej Bule, Jerneja Žganec-Gros, Vitomir Štruc, Peter Peer (2014): A case study on multi-modal biometrics in the cloud. In: Electrotechnical Review, 81 (3), pp. 74, 2014.

Abstract

Cloud computing is particularly interesting for the area of biometric recognition, where scalability, availability and accessibility are important aspects. In this paper we try to evaluate different strategies for combining existing uni-modal (cloud-based) biometric experts into a multi-biometric cloud-service. We analyze several fusion strategies from the perspective of performance gains, training complexity and resource consumption and discuss the results of our analysis. The experimental evaluation is conducted based on two biometric cloud-services developed in the scope of the Competence Centere CLASS, a face recognition service and a fingerprint recognition service, which are also briefly described in the paper. The presented results are important to researchers and developers working in the area of biometric services for the cloud looking for easy solutions for improving the quality of their services.

BibTeX (Download)

@article{emersic2014case,
title = {A case study on multi-modal biometrics in the cloud},
author = { \v{Z}iga Emer\v{s}i\v{c} and Jernej Bule and Jerneja \v{Z}ganec-Gros and Vitomir \v{S}truc and Peter Peer},
url = {http://luks.fe.uni-lj.si/nluks/wp-content/uploads/2016/09/Emersic.pdf},
year  = {2014},
date = {2014-01-01},
journal = {Electrotechnical Review},
volume = {81},
number = {3},
pages = {74},
publisher = {Elektrotehniski Vestnik},
abstract = {Cloud computing is particularly interesting for the area of biometric recognition, where scalability, availability and accessibility are important aspects. In this paper we try to evaluate different strategies for combining existing uni-modal (cloud-based) biometric experts into a multi-biometric cloud-service. We analyze several fusion strategies from the perspective of performance gains, training complexity and resource consumption and discuss the results of our analysis. The experimental evaluation is conducted based on two biometric cloud-services developed in the scope of the Competence Centere CLASS, a face recognition service and a fingerprint recognition service, which are also briefly described in the paper. The presented results are important to researchers and developers working in the area of biometric services for the cloud looking for easy solutions for improving the quality of their services.
},
keywords = {cloud, cloud computing, face recognition, face verification, fingerprint verification, fingerprints, fusion},
pubstate = {published},
tppubtype = {article}
}