ePrints.FRI - University of Ljubljana, Faculty of Computer and Information Science

Strategies for exploiting independent cloud implementations of biometric experts in multibiometric scenarios

Peter Peer and Žiga Emeršič and Jernej Bule and Jerneja Žganec Gros and Vitomir Štruc Strategies for exploiting independent cloud implementations of biometric experts in multibiometric scenarios. Mathematical problems in engineering .

[img] PDF - Published Version
Download (245Kb)
    [img]
    Preview
    PDF
    Download (2603Kb)

      Abstract

      Cloud computing represents one of the fastest growing areas of technology and offers a new computing model for various applications and services. This model is particularly interesting for the area of biometric recognition, where scalability, processing power and storage requirements are becoming a bigger and bigger issue with each new generation of recognition technology. Next to the availability of computing resources, another important aspect of cloud computing with respect to biometrics is accessability. Since biometric cloud-services are easily accessible, it is possible to combine different existing implementations and design new multi-biometric services that next to almost unlimited resources also offer superior recognition performance and, consequently, ensure improved security to its client applications. Unfortunately, the literature on the best strategies of how to combine existing implementations of cloud-based biometric experts into a multi-biometric service is virtually non-existent. In this paper we try to close this gap and evaluate different strategies for combining existing biometric experts into a multi-biometric cloud-service. We analyze the (fusion) strategies from different perspectives such as performance gains, training complexity or resource consumption and present results and findings important to software developers and other researchers working in the areas of biometrics and cloud computing. The analysis is conducted based on two biometric cloud-services, which are also presented in the paper.

      Item Type: Article
      Keywords: Multi-modal biometrics, biometric-cloud services, fusion strategies, cloud computing
      Related URLs:
      URLURL Type
      http://www.hindawi.com/journals/mpe/2014/585139/UNSPECIFIED
      Institution: University of Ljubljana
      Department: Faculty of Computer and Information Science
      Divisions: Faculty of Computer and Information Science > Computer Vision Laboratory
      Item ID: 2504
      Date Deposited: 04 Apr 2014 15:35
      Last Modified: 04 Apr 2014 15:35
      URI: http://eprints.fri.uni-lj.si/id/eprint/2504

      Actions (login required)

      View Item