Abstract

Iris biometric detection provides contactless authentication, preventing the spread of COVID-19-like contagious diseases. However, these systems are prone to spoofing attacks attempted with the help of contact lenses, replayed video, and print attacks, making them vulnerable and unsafe. This paper proposes the iris liveness detection (ILD) method to mitigate spoofing attacks, taking global-level features of Thepade’s sorted block truncation coding (TSBTC) and local-level features of the gray-level co-occurrence matrix (GLCM) of the iris image. Thepade’s SBTC extracts global color texture content as features, and GLCM extracts local fine-texture details. The fusion of global and local content presentation may help distinguish between live and non-live iris samples. The fusion of Thepade’s SBTC with GLCM features is considered in experimental validations of the proposed method. The features are used to train nine assorted machine learning classifiers, including naïve Bayes (NB), decision tree (J48), support vector machine (SVM), random forest (RF), multilayer perceptron (MLP), and ensembles (SVM + RF + NB, SVM + RF + RT, RF + SVM + MLP, J48 + RF + MLP) for ILD. Accuracy, precision, recall, and F-measure are used to evaluate the performance of the projected ILD variants. The experimentation was carried out on four standard benchmark datasets, and our proposed model showed improved results with the feature fusion approach. The proposed fusion approach gave 99.68% accuracy using the RF + J48 + MLP ensemble of classifiers, immediately followed by the RF algorithm, which gave 95.57%. The better capability of iris liveness detection will improve human–computer interaction and security in the cyber-physical space by improving person validation.

Highlights

  • Automatic access to a system by a genuine person has become very simple in the information era

  • It can be observed that random forest and ensembles of RF + support vector machine (SVM) + multilayer perceptron (MLP) give the best performance across all datasets

  • N-ary and gray-level co-occurrence matrix (GLCM) local features considered for specific ML classifiers in the proposed approach of iris liveness detection (ILD) tested on all datasets

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Summary

Introduction

Automatic access to a system by a genuine person has become very simple in the information era. Biometric authentication systems are computer-based systems that use biometric traits to verify a user’s identity. The conventional security system cannot differentiate between real persons and impostors, those who can unethically access a program [2]. As the iris has a complex texture and unique features, it is widely used to identify and authenticate a person in most applications [2], e.g., in the Aadhaar card project to identify India’s citizens. Compared to fingerprints and facial recognition, iris-based authentication enables a more reliable contactless detection of a user. The impostor offers a printed image of validated iris to the biometric sensor [4]. The impostor uses the eye of a dead person in front of a biometric system [7]. Validating the performance of the proposed ILD method across various existing benchmark datasets and techniques.

Related Work
Resizing
Feature Formation and Fusion
Fusion of TSBTC and GLCM
Classification
Experimental Set-Up
Description of the Dataset
Performance Measures
5.5.Results
Performance
GLCM Results
16. Performance
17. Performance
Discussions
Conclusions
Full Text
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