Noise Influence on the Fuzzy-Linguistic Partitioning of Iris Code Space
Iulia M. Motoc, Cristina M. Noaica, Robert Badea, Claudiu G. Ghica

TL;DR
This study investigates how noise affects the stability of fuzzy-linguistic partitioning of iris code space in iris recognition systems, revealing that noise causes instability in the biometric menagerie categorization.
Contribution
It demonstrates that the fuzzy-linguistic partitioning of iris code space is sensitive to noise, challenging assumptions of stability in biometric categorization under noisy conditions.
Findings
Partitioning is unstable under noise
Noise types include localvar, motion blur, salt and pepper
180 recognition tests conducted
Abstract
This paper analyses the set of iris codes stored or used in an iris recognition system as an f-granular space. The f-granulation is given by identifying in the iris code space the extensions of the fuzzy concepts wolves, goats, lambs and sheep (previously introduced by Doddington as 'animals' of the biometric menagerie) - which together form a partitioning of the iris code space. The main question here is how objective (stable / stationary) this partitioning is when the iris segments are subject to noisy acquisition. In order to prove that the f-granulation of iris code space with respect to the fuzzy concepts that define the biometric menagerie is unstable in noisy conditions (is sensitive to noise), three types of noise (localvar, motion blur, salt and pepper) have been alternatively added to the iris segments extracted from University of Bath Iris Image Database. The results of 180…
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Taxonomy
TopicsBiometric Identification and Security · Cognitive Computing and Networks
