Abstract

To circumvent problems associated with dependence on traditional security systems on passwords, Personal Identification Numbers (PINs) and tokens, modern security systems adopt biometric traits that are inimitable to each individual for identification and verification. This study presents two different frameworks for secure person identification using cancellable face recognition (CFR) schemes. Exploiting its ability to guarantee irrevocability and rich diversity, both frameworks utilise Random Projection (RP) to encrypt the biometric traits. In the first framework, a hybrid structure combining Intuitionistic Fuzzy Logic (IFL) with RP is used to accomplish full distortion and encryption of the original biometric traits to be saved in the database, which helps to prevent unauthorised access of the biometric data. The framework involves transformation of spatial-domain greyscale pixel information to a fuzzy domain where the original biometric images are disfigured and further distorted via random projections that generate the final cancellable traits. In the second framework, cancellable biometric traits are similarly generated via homomorphic transforms that use random projections to encrypt the reflectance components of the biometric traits. Here, the use of reflectance properties is motivated by its ability to retain most image details, while the guarantee of the non-invertibility of the cancellable biometric traits supports the rationale behind our utilisation of another RP stage in both frameworks, since independent outcomes of both the IFL stage and the reflectance component of the homomorphic transform are not enough to recover the original biometric trait. Our CFR schemes are validated on different datasets that exhibit properties expected in actual application settings such as varying backgrounds, lightings, and motion. Outcomes in terms standard metrics, including structural similarity index metric (SSIM) and area under the receiver operating characteristic curve (AROC), suggest the efficacy of our proposed schemes across many applications that require person identification and verification.

Highlights

  • Biometric signals and images from persons are used across different domains and applications such as identification, verification, and authentication

  • If the original data can be represented as multiplying it by some random of Cancellable Biometric Systems (CBS), the random projection (RP) has been applied on the original biometric templates directly [9,18,20,21,22]

  • Building on the studies highlighted in the previous sections, the rudiments of our use of Buildingbiometric on the studies highlighted in the previous sections, the rudiments of our use of cancellable systems (CBS) in face recognition, i.e., cancellable face recognition (CFR)

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Summary

Introduction

Biometric signals and images from persons are used across different domains and applications such as identification, verification, and authentication. In [5], Kaur and Khanna introduced a multi-level transformation-based CBS that depends on Log-Gabor filters and the RP technique to produce cancellable feature vectors to be used in person authentication and verification. In their contribution in [6], Maiorana et al presented a convolution-based technique to generate new versions of original biometric templates based on template segmentation. Our proposed cancellable face recognition (CFR) frameworks utilise pre-processing stages to generate sophisticated patterns from the original biometrics.

Intuitionistic Fuzzy Sets
Homomorphic Transform
Gaussian
Gaussian RP
Cancellable Face Recognition Frameworks
CFR Framework Based on Intuitionistic Fuzzy Logic and Random Projection
Discussion
Performance for Encryption and Cancellable
12. Probability
Method
13. Sample
15. Encrypted
17. Histograms
18. Correlation
22. Encrypted
24. Histograms
Execution Time and Complexity Analysis
Conclusions
Full Text
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