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Weighted quasi‐arithmetic mean based score level fusion for multi‐biometric systems
Author(s) -
Abderrahmane Herbadji,
Noubeil Guermat,
Lahcene Ziet,
Akhtar Zahid,
Dasgupta Dipankar
Publication year - 2020
Publication title -
iet biometrics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.434
H-Index - 28
ISSN - 2047-4946
DOI - 10.1049/iet-bmt.2018.5265
Subject(s) - biometrics , nist , computer science , fingerprint (computing) , pattern recognition (psychology) , sensor fusion , cryptography , artificial intelligence , data mining , transformation (genetics) , algorithm , speech recognition , biochemistry , chemistry , gene
Biometrics is now being principally employed in many daily applications ranging from the border crossing to mobile user authentication. In the high‐security scenarios, biometrics require stringent accuracy and performance criteria. Towards this aim, multi‐biometric systems that fuse the evidences from multiple sources of biometric have exhibited to diminish the error rates and alleviate inherent frailties of the individual biometric systems. In this article, a novel scheme for score‐level fusion based on weighted quasi‐arithmetic mean (WQAM) has been proposed. Specifically, WQAMs are estimated via different trigonometric functions. The proposed fusion scheme encompasses properties of both weighted mean and quasi‐arithmetic mean. Moreover, it does not require any leaning process. Experimental results on three publicly available data sets (i.e. NIST‐BSSR1 Multimodal, NIST‐BSSR1 Fingerprint and NIST‐BSSR1 Face) for multi‐modal, multi‐unit and multi‐algorithm systems show that presented WQAM fusion algorithm outperforms the previously proposed score fusion rules based on transformation (e.g. t ‐norms), classification (e.g. support vector machines) and density estimation (e.g. likelihood ratio) methods.

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