CBRW: A Novel Approach for Cancelable Biometric Template Generation based on
Nitin Kumar, Manisha

TL;DR
This paper introduces two new cancelable biometric template generation methods using Random Walk, demonstrating superior security and performance across multiple datasets and biometric modalities compared to existing approaches.
Contribution
The paper proposes two novel, simple methods for generating cancelable biometric templates based on Random Walk, improving security and effectiveness over prior techniques.
Findings
Proposed methods outperform state-of-the-art in qualitative analysis.
Methods perform well on both gray and color biometric images.
Experimental results show high accuracy and security improvements.
Abstract
Cancelable Biometric is a challenging research field in which security of an original biometric image is ensured by transforming the original biometric into another irreversible domain. Several approaches have been suggested in literature for generating cancelable biometric templates. In this paper, two novel and simple cancelable biometric template generation methods based on Random Walk (CBRW) have been proposed. By employing random walk and other steps given in the proposed two algorithms viz. CBRW-BitXOR and CBRW-BitCMP, the original biometric is transformed into a cancellable template. The performance of the proposed methods is compared with other state-of-the-art methods. Experiments have been performed on eight publicly available gray and color datasets i.e. CP (ear) (gray and color), UTIRIS (iris) (gray and color), ORL (face) (gray), IIT Delhi (iris) (gray and color), and AR…
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Taxonomy
TopicsBiometric Identification and Security
