Cascaded multimodal biometric recognition framework

Journal article


Albesher, Badr, Kurugollu, Fatih, Bouridane, Ahmed and Baig, Asim 2013. Cascaded multimodal biometric recognition framework. IET Biometrics. https://doi.org/10.1049/iet-bmt.2012.0043
AuthorsAlbesher, Badr, Kurugollu, Fatih, Bouridane, Ahmed and Baig, Asim
Abstract

A practically viable multi-biometric recognition system should not only be stable, robust and accurate but should also adhere to real-time processing speed and memory constraints. This study proposes a cascaded classifier-based framework for use in biometric recognition systems. The proposed framework utilises a set of weak classifiers to reduce the enrolled users’ dataset to a small list of candidate users. This list is then used by a strong classifier set as the final stage of the cascade to formulate the decision. At each stage, the candidate list is generated by a Mahalanobis distance-based match score quality measure. One of the key features of the authors framework is that each classifier in the ensemble can be designed to use a different modality thus providing the advantages of a truly multimodal biometric recognition system. In addition, it is one of the first truly multimodal cascaded classifier-based approaches for biometric recognition. The performance of the proposed system is evaluated both for single and multimodalities to demonstrate the effectiveness of the approach.

Keywordsmultimodal biometric recognition; fingerprint; iris; Feature extraction; matching
Year2013
JournalIET Biometrics
PublisherIET
ISSN2047-4938
2047-4946
Digital Object Identifier (DOI)https://doi.org/10.1049/iet-bmt.2012.0043
Web address (URL)http://hdl.handle.net/10545/623629
hdl:10545/623629
Publication dates15 Aug 2013
Publication process dates
Deposited20 Mar 2019, 14:17
Accepted03 May 2013
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Archived with thanks to IET Biometrics

This paper is a preprint of a paper accepted by IET Biometrics and is subject to Institution of Engineering and Technology Copyright. The copy of record is available at the IET Digital Library.

ContributorsQueen's University, Belfast
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