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  4. A Study of the Effects of Score Normalisation Prior to Fusion in Biometric Authentication Tasks
 
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A Study of the Effects of Score Normalisation Prior to Fusion in Biometric Authentication Tasks

Poh, Norman
•
Bengio, Samy  
2004

Although the subject of fusion is well studied, the effects of normalisation prior to fusion are somewhat less well investigated. In this study, four normalisation techniques and six commonly used fusion classifiers were examined. Based on 24 (fusion classifiers) as a result of pairing the normalisation techniques and classifiers applied on 32 fusion data sets, 4x6x32 means 768 fusion experiments were carried out on the XM2VTS score-level fusion benchmark database, it can be concluded that trainable fusion classifiers are potentially useful. It is found that some classifiers are very sensitive (in terms of Half Total Error Rate) to normalisation techniques such as Weighted sum with weights optimised using Fisher-ratio and Decision Template. The mean fusion operator and user-specific linear weight combination are relative less sensitive. It is also found that Support Vector Machines and Gaussian Mixture Model are the least sensitive to different normalisation techniques, while achieving the best generalisation performance. For these two techniques, score normalisation is unnecessary prior to fusion.

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Type
report
Author(s)
Poh, Norman
Bengio, Samy  
Date Issued

2004

Publisher

IDIAP

Subjects

learning

URL

URL

http://publications.idiap.ch/downloads/reports/2004/rr04-69.pdf
Written at

EPFL

EPFL units
LIDIAP  
Available on Infoscience
March 10, 2006
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/228575
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