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Murakami et al., 2012 - Google Patents

Towards optimal countermeasures against wolves and lambs in biometrics

Murakami et al., 2012

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Document ID
17411262346290429656
Author
Murakami T
Takahashi K
Matsuura K
Publication year
Publication venue
2012 IEEE fifth international conference on biometrics: theory, applications and systems (BTAS)

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Claimants and enrollees who have high similarity scores against many others are referred to as wolves and lambs, respectively. These animals can cause false accepts against many others and compromise the security of the system. The aim of this paper is to develop a …
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