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Review of iris segmentation and recognition using deep learning to improve biometric application

  • Hind Hameed Rasheed EMAIL logo , Sara Swathy Shamini , Moamin A. Mahmoud and Mohammad Ahmed Alomari
Published/Copyright: December 31, 2023
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Abstract

Biometric recognition is essential for identifying people in security, surveillance, and mobile device authentication. Iris recognition (IR) biometrics is exact because it uses unique iris patterns to identify individuals. Iris segmentation, which isolates the iris from the rest of the ocular image, determines iris identification accuracy. The main problem is concerned with selecting the best deep learning (DL) algorithm to classify and estimate biometric iris biometric iris. This study proposed a comprehensive review of DL-based methods to improve biometric iris segmentation and recognition. It also evaluates reliability, specificity, memory, and F-score. It was reviewed with iris image analysis, edge detection, and classification literature. DL improves iris segmentation and identification in biometric authentication, especially when combined with additional biometric modalities like fingerprint fusion. Besides, that DL in iris detection requires large training datasets and is challenging to use with noisy or low-quality photos. In addition, it examines DL for iris segmentation and identification efforts to improve biometric application understanding. It also suggests ways to improve precision and reliability. DL may be used in biometric identification; however, further study is needed to overcome current limits and improve IR processes.

1 Introduction

The technology of biometric recognition is becoming increasingly crucial for individual identification, with a wide range of applications that include authentication of mobile devices, as well as security and surveillance. Iris recognition (IR) is considered to be a highly dependable biometric technology that utilizes distinct iris patterns to accurately authenticate individuals [1]. The precision of IR is contingent upon the precision of iris segmentation, which involves the isolation of the iris area from the remaining portion of the ocular image. The discipline of biometrics pertains to the process of verifying and validating the identity of individuals by means of their distinct biological and behavioral traits [2]. Numerous studies concentrate on contemporary developments in identifying the most essential biometric features, with particular attention to techniques for iris segmentation and recognition processing. Biometric systems are assessed based on their design, operational procedures, and performance metrics, as stated in the study of Nachar and Inaty [3]. Biometric identification systems utilize measurable and observable physical and behavioral traits to authenticate an individual’s identity. The aforementioned characteristics encompass inherent physiological features, namely IR, fingerprints, facial features, retinas, veins, vocal patterns, and hand geometries [4].

The utilization of IR is widely acknowledged as a highly secure and precise biometric technique, primarily attributed to the iris’s capacity to retain diverse phase information, encompassing an estimated 249 degrees of freedom [5]. The iris is an annular, chromatic structure located within the ocular globe that modulates the quantity of light that penetrates the retina, and its demarcation encompasses the central aperture known as the pupil and the outermost layer called the sclera. According to research, even in the scenario of monozygotic twins, every pair of eyes will exhibit a marginally distinct iris pattern that persists over the course of their lifespan [6]. The distinct visual characteristics of the iris are attributed to its distinguishing features, including cellars, radial grooves, threads, pigment frills, spots, stripes, and longitudinal ligaments [7].

Despite the increasing popularity of biometric systems, their present state precludes their universal applicability. Consequently, it is imperative to improve the security and adaptability of biometric systems to ensure their widespread accessibility [8]. The property of high distinguishability is considered to be a fundamental aspect of dependable biometric systems, as noted in the study of Kagawade and Angadi [9]. The attainment of a high level of biometric differentiation certainty is of utmost significance, especially in the context of biometrics employed for monitoring human health or in security applications with high stakes. In the absence of it, there is a potential for the removal of the items from the shelves and consequent harm to individuals or property damage [10].

The attribute of persistence is a vital component of biometrics, as demonstrated by the precise and dependable observation and acquisition of fundamental physical characteristics of users through iris segmentation and recognition [11]. The iris is considered to be a highly reliable biometric characteristic due to its distinct and complex patterns. According to research, irises exhibit distinct characteristics even in cases of fraternal twins or the left and right eyes of an individual [12]. The utilization of IR as a biometric method is deemed highly secure and precise, thus presenting a promising avenue for future research and development.

Several pre-trained models in machine vision, including VGGNet, ResNet, DenseNet, and NTU, have exhibited robust performance in classification and identification tasks, as evidenced by prior research [13]. The utilization of transfer learning could potentially prove advantageous in the training of models based on IR. Figure 1 depicts conventional techniques utilized for the detection of a viable iris. In the realm of iris-liveness detection, deep learning (DL) models are the prevailing approach for constructing models and performing classification tasks. Although DL has emerged as a prominent trend in this field, it is improbable that it will entirely supplant current methodologies in the immediate future [14].

Figure 1 
               Iris real-time intrusion detecting methods [14].
Figure 1

Iris real-time intrusion detecting methods [14].

In order to attain an optimal biometric, certain fundamental aspects of physical appearance must remain constant and immutable, as stated in the study of Boyd et al. [15]. Nonetheless, the capacity to be gathered is also a pivotal aspect of an optimal biometric. This statement suggests that the biometric system must effectively and efficiently authenticate user characteristics and data. Furthermore, the formidable obstacle of addressing the exorbitant production cost associated with conventional biometric technology must be tackled.

The main contributions of this study are sorted as follows:

  1. Examination and evaluation of biometric applications that utilize DL techniques for iris segmentation and recognition.

  2. Improving accuracy in the areas of authentication and detection with different research directions.

  3. The discourse surrounding the fundamental characteristics that a proficient biometric ought to exhibit encompassing attributes such as security, confidentiality, adaptability, and superior discernment.

  4. The main motivation for iris segmentation and recognition using DL in the context of biometric applications is significantly less unauthorized access is possible, and real-time analysis of enormous amounts of biometric data is possible.

  5. It offers significant perspectives and tools for scholars and professionals operating within the realm of biometrics. Table 1 shows the used methodology to solve the existing issues.

Table 1

Issues in the context of the existing work and the used methodology

Ref. No/Year Issues The used methodology
[2]/2022 Determining the classification threshold for large datasets of iris images The light-weight MobileNet architecture with customized ArcFace and Triplet loss functions
[3]/2022 High recognition rate with very low computational time Fuzzy logic using visible feature points
[6]/2022 Pattern recognition and digital image processing Iris segmentation method for non-cooperative recognition system
[7]/2022 High-precision intrusion detection Multi-scale convolutional neural network (CNN)
[10]/2022 Fast and accurate Iris localization to detect the pupil region Laplacian of Gaussian (LoG) filter, region growing, and zero-crossings

In Section 2, a comprehensive overview of IR and segmentation techniques is provided, encompassing both conventional and DL-based approaches. In Section 3, extant literature pertaining to DL-based iris identification technologies and resources is examined. Additionally, evaluation methods, including but not limited to reliability, specificity, recollection, and F-score, are discussed. Section 4 delves into contemporary advancements in the analysis of iris images, edge detection techniques, and categorization methods. Section 5 provides a comprehensive assessment of IR techniques that are based on DL, along with an analysis of the difficulties that are inherent to these methods. Section 6 provides a conclusive analysis of the potential of DL in the context of biometric identification. The section also offers recommendations for future research aimed at addressing the current limitations of IR systems and enhancing their performance.

2 Enhancing biometric applications through DL-based iris segmentation and recognition accuracy

IR and retinal scanning are considered to be highly dependable and precise biometric modalities utilized for the purposes of authentication and verification. Iris segmentation is a biometric modality that shares similarities with fingerprint recognition and facial identification. Law enforcement authorities have the capability to conduct a comparative analysis of iris images of individuals suspected of criminal activity against a pre-existing database of images for the purpose of ascertaining or confirming their identity. The high accuracy of IR can be attributed to the distinctiveness of iris patterns, which results in a negligible occurrence of false positives. Consequently, the process of iris segmentation is deemed crucial in enhancing the precision of IR. Compared to other biometric applications, the DL method exhibits superior performance in image analysis and matching, with more favorable tradeoff curves between errors of refusal and acceptance, as shown in Table 2.

Table 2

DL-based iris segmentation and recognition for biometric applications

Refe.No/Year Aim/objective Methodology Stage of iris to address Results
[16]/2019 Attain precise IR. Multi-scale Convolutional Neural Networks (MCNN) with Fully Convolutional Networks (FCNs) Beats feature extraction and classification-based IR approaches CNN excels at feature extraction and categorization
[17]/2020 Reducing off-angle distortion quality loss Off-Angle Configuration method Iris segmentations and proposed an improvement technique Segmentation and recognition accuracy is increased
[18]/2023 Safer iris segment and identification Must Adherence Density Net and a Density Spatially Awareness Net Iris segment and identification Even with low-quality iris images obtains the greatest segmentation and identification performance
[19]/2020 Building a basic NN from many off-axis iris portions NN It segregates the iris area from difficult off-axis eye patches It is a good fit for hardware implementations like augmenting and hybrid reality headsets
[20]/2019 Improves IR and identification. CNN Iris identification process Accuracy of 90.91%
[21]/2019 Iris semantic segmentation Dense networks and U-Nets Single- and multi-device iris segmentation Identifies iris disease
[22]/2022 Accurate IR Leverages VGG 19 and VGG 16 networks for iris classification Locating the iris region and segmenting it It enhanced reliability, specificity, retention, and effectiveness
[23]/2022 Enhanced uncontrolled accuracy Deep CNN Optical and pupil identification Best results with 99.99% accuracy
[24]/2022 Correct iris region proposals Dual Region Proposal Networks (DC-RPN) and Double-Circle Classification and Regression Networks Iris segmentation and localization Iris R-CNN achieves superior accuracy
[25]/2022 Advanced graphics segmentation processors CNNs Iris segmentation Outperforms alternatives in terms of anticipated demand and storage capacity
[26]/2022 Identifying 2-FA users CNN, SVM, K-nearest, and random forest algorithms Integration of both eyes’ IRISs for protection CNN accuracy averaging in the 99.75%–99.997% range for both used dataset
[27]/2022 Human iris detection, providing secure, automatic worldwide identification and verification 2D convolutional neural network (2D-CNN) model Normalization and Contrast-Limited Adaptive Histogram Equalization (CLAHE) to improve the dataset through feature extraction and histogram normalization Accuracy of 95.33%
[28]/2022 Machine learning-based iris data compression Deep Semantic Segmentation-based Layered Image Compression (DSSLIC) Compressed Full-Reference and No-Reference pictures were tested Increasing quality of compressed images
[29]/2022 Enabling biometric cancellation Bio-Convolutional Neural Network (B-CNN) model Safe biometric identification Database identification rates of 99.15%
[30]/2022 Identity confirmation IR technology Find the crucial data Recognition accuracy of 98.92%

Table 2 outlines the various DL models employed in the training process, along with the corresponding dataset utilized. An iris identification methodology entails analyzing a representation of the data that is devoid of dimensionality and constructing a feature vector that is positioned at the apex of a framework. The study presented in Table 3 investigated the hypothesis that iris-specific feature extractors would exhibit superior performance compared to generic models. This was accomplished by examining six weight configurations for the commonly utilized ResNet50 architecture. The authors observed that the utilization of CASIA-IrisV3 yielded comprehensive characteristics for iris authentication, which were found to be effective in biometric identification. The attainment of high memory space, training samples, training time, features, performance, and dependability poses several challenges in current methodologies.

Table 3

DL performance and dataset accuracy comparison

Methods Dataset Processing Accuracy Limitations
FCN and MCNN [16] FMnet Accurately identify the iris. A recent study shows that DL can improve biometric security 95.75% Limitations in graphics processing units memory
Off-Angle Parameterization approach [17] Open EDS Heuristic filtering postprocessing MobileNetV2 94.55% Space limitation in iris segmentation/recognition
Dense U-Net-based CNN Iris segmentation technique [21] Dense U-Net Dense networks and U-Nets, a smaller, less dense network, segment iris semantically 98.36% A limited number of features used
Deep CNN [23] CASIA-Iris-thousand Reduce ambient noise and improve iris region discrimination 97.82% Ocular segmentation structures’ limited efficacy and reliability
2D-CNN [27] Data augmentation, HE, and CLAHE This work describes a complete human IR system for secure, automated identification verification 95.33% Network training time is high
B-CNN [29] LFW, FERET, IITD, and CASIA-IrisV3 Cancel biometrics if hacked. Face and iris databases predict performance 99.15% Less number of samples used

3 Biometric authentication using iris segmentation

The process of IR, also referred to as iris scanning, involves the capture of high-contrast images of an individual’s irises using visible and near-infrared light for subsequent analysis. Similar to fingerprints and facial recognition, biometrics encompasses it. Despite the higher accuracy rate of iris scanning in comparison to fingerprint scanning, it is imperative to establish a direct visual connection between the scanner and the eye. While IR is considered more secure than fingerprint identification, the latter is deemed more practical due to its ability to function without requiring a direct visual line of sight. The biometric technology community has shown significant interest in DL-based IR and segmentation due to its high level of dependability. IR is a biometric verification technique that leverages the distinct patterns of dark and light present in an individual’s irises to establish their identity. A computerized biometric identification process called IR analyses distinctive patterns in the ring-shaped area around each eye’s pupil. With very low false match rates, it is an exceptionally accurate and trustworthy identification approach. However, it has significant drawbacks, such as the need for specialized equipment [31].

The main advantages of combining IR with other biometric modalities are as follows:

  1. High accuracy.

  2. Speed and ease-of-use.

  3. Unique and stable.

Besides, the disadvantages are as follows:

  1. Costly infrastructure.

  2. Privacy concerns.

  3. Environmental constraints.

  4. Limited user acceptance.

Furthermore, the system is capable of accessing the biometric dataset, as shown in Table 4.

Table 4

Iris detection and segmentation for biometric authentication summaries

Ref. No/Year Aim/objective Methodology Stage of the iris to address Results
[31]/2022 Enhancing feature recognition and retrieval Chip card, PKI, and iris verification technology-based personal identification system Advanced image processing The system’s left (NTU) iris database accuracy is 97%
[32]/2021 Monitoring, financial security, and credit card verification ANNs IR gender categorization ANN’s training and testing phases, at 96.4% and 97%, respectively
[33]/2021 Locate and extract the iris’s target area A DL-based iris biometric authentication method Enhance cropped eye picture iris qualities It achieves an accuracy of 98%
[34]/2021 Real-time, automatic video iris detection and segmentation FCN Iris–pupil identification These results are comparable to cutting-edge approaches
[35]/2021 Precise iris segmentation and identification integrated DL model Black Hat filtering and Gamma Correction improve iris system input picture quality. Maximum recognition accuracy of 99.14%
[36]/2021 Segmenting fingertip features DL methods Divide a fingertip image Maximum Intersection over Union (IoU) segmentation performance of 68.03% on the fingers (overall: 86.13%)
[37]/2021 Change weights and learning ratios for real-time iris method CNN Creating a right-left iris DL model 99% accuracy on the left and right IITD iris datasets and 94% and 93% on the CASIA-iris-V3 interval datasets
[38]/2021 High-accuracy iris identification CNNs Segments utilizing Circular Hough transform and smart edge detector Iris identification accuracies of 98%
[39]/2021 Create a compressed 2-ch CNN for iris detection and verification. Multi-branch Convolutional Neural Network (CNN) Benchmark iris classifier It is handy in real-time and resists photo pollution without losing quality
[40]/2022 Increase security CNN architecture Same-image face and iris biometrics It works with little or large training data

Table 5 presents a comparative analysis of diverse DL methodologies employed in the context of IR and segmentation, utilizing a range of iris datasets. The present study offers a comprehensive analysis of the efficacy of various DL models in the context of iris biometric applications. The literature review of the article also examines diverse state-of-the-art implementations of CNNs in the field of biometrics. The researchers conducted a comparative analysis of various methodologies utilizing several datasets, namely CASIA interval v3, CASIA interval v1, NTU, UniNet.V2, IITD, Alex Net, Res Net, and Dense Net. A salient characteristic of IR utilizing CNNs is the identification of users through the analysis of distinct patterns. The system has the capability to recognize an individual by utilizing the distinct characteristics of their iris, which are obtained during the phase of image acquisition [41].

Table 5

Comparing DL techniques with iris datasets

Database/method CASIA interval v3 CASIA interval v1 NTU UniNet.V2 IITD Alex Net Res Net Dense Net
Chip card, PKI, and CNN iris verification technology [31]
Iris biometric authentication using DL [33]
YOLO network for direct iris–pupil area identification [34]
A DL-based integrated model for accurate IR, localization, and recognition [35]
DL methods provided for segmenting fingertip features [36]
A multi-modal biometric real-time approach [37]
A multi-branch CNN [39]

The utilization of gravitational motion analysis is a potential method for attaining iris verification. The methodology entails the examination of alterations in the iris’s position over a period of time, thereby furnishing supplementary data for biometric authentication. The advanced filtering capabilities of CNN are emphasized as a notable advantage in the context of IR and segmentation. These techniques facilitate the retrieval of significant latent features from intricate data sets with high dimensions, which would otherwise be challenging to extract using traditional biometric and measurement methodologies. It is imperative to acknowledge that unanticipated and insoluble challenges may arise during the process of data collection. In the context of IR, potential challenges may encompass variables such as variations in illumination, obstructions arising from eyelids or eyelashes, or reflections originating from eyewear. Notwithstanding these obstacles, CNNs are demonstrating remarkable efficacy in the realm of biometric authentication [42].

4 Biometric adaptability using a DL technique

DL is a highly effective machine learning methodology that utilizes neural networks consisting of multiple layers. It has found extensive application in diverse biometric domains. The popularity of utilizing biometric applications stems from their exceptional results, ability to withstand noise and variability, and versatility in accommodating diverse tasks and their unique characteristics. The system under consideration exhibits the capacity to adjust to diverse samples of frontal faces in the context of fingerprint, iris, and face recognition and segmentation. Furthermore, in biometric applications, DL models demonstrate enhanced adaptability through the utilization of inter-session and inter-task data, as shown in Table 6.

Table 6

Summary of biometric adaptability using a DL technique

Ref. No/Year Aim/objective Methodology Stage of iris to address Results
[43]/2021 Iris and periocular modalities improve classification accuracy for degraded images Multi-modal Selector Picking a good classifier for identification when the iris or retinal image is poor Effective classifier dynamically
[44]/2022 Iris photos from little samples CNN Employing the CLAHE technique Accuracy is 95.5% and Equal Error Rate (EER) of 0.6809
[45]/2019 Enhances the system’s adaptability in experiments. Deep CNN, SVM, K-nearest, and random forest methods Uses both left and right IRISs, adding security and uniqueness Average accuracy of 98.5% to 99.7% across various datasets and CNN models

Table 7 presents a comprehensive summary of the performance metrics, encompassing accuracy, precision, and F1 score, of the DL methodologies examined in this review. The findings indicate that the incorporation of sophisticated technologies for biometric adaptation results in enhanced precision in diverse biometric identification assignments.

Table 7

DL biometric adaption metrics

Methods Database Processing Accuracy Precision F1 score
Unimodal Biometrics and Multiple Iris-Periocular Recognition Methods [41] IITD, Dense Net End-to-end deep feature fusion networks for combined iris-periocular identification can improve detection accuracy and adaptability. 96.34% 0.9212 0.9240
CNNs and Hybrid DL Models [42] Alex Net It overcomes the database accessibility issue that impacts classifier accuracy. IR research employs main CNN and hybrid DL models. 97.42% 0.9325 0.9296
CNNs in Binary and Multi-Class Iris Segmentation Frameworks [46] CASIA interval v3 CNNs classify iris segments. Deep networks differentiate the pupil, iris texture, sclera, and other eye components using multi-class segmentation masks. 98.39% 0.9569 0.9742
Fuzzy-Theory-Informed Grey Wolf Optimizer for MGNN [47] Benchmark database The fuzzy dynamic parameter adaptation adjusts gray wolf optimizer settings based on population behavior, improving performance. 98.42% 0.9751 0.9535
Multi-modal Biometric Reorganization System utilizing DLCNN [48] Res Net Multi-modal features are extracted using GLCMs. Principal component analysis was used to reduce features, selecting the best from the available set. 95.5% 0.9437 0.9647

5 Iris and fingerprint fusion for multi-modal biometrics

Multi-modal biometric systems have become increasingly popular in recent years owing to their superior accuracy and reliability in comparison to single-modal systems. The present investigation employed several score normalization techniques, namely hyperbolic tangent, Z-score, and min–max. These techniques are implemented to guarantee that the scores fall within a designated range and are capable of being compared. It employs various score fusion techniques, namely user weighting, minimum scores, maximum scores, and simple sum. The aforementioned techniques are utilized to amalgamate the standardized scores derived from the iris and fingerprint information, resulting in a solitary integrated score. Subsequently, the amalgamated scores are employed to categorize an unidentifiable user as either an imposter or an authentic. The initial phase of fingerprint processing encompasses three distinct stages, namely image enhancement, identification of regions of interest (ROIs), and extraction of relevant features [49]. This procedure guarantees the high quality of the fingerprint data and exclusively employs pertinent characteristics in the amalgamation procedure, as shown in Table 8.

Table 8

IR and fingerprint fusion for multi-modal biometrics

Ref. No/Year Aim/objective Methodology Stage of iris to address Results
[49]/2019 Validate an anonymous sender before joining. KNN and RBF New feature-level biometric modalities system An EER of 0.5% is needed to get 100% required reserve ratio.
[50]/2022 Overcoming feature selection algorithm implementation challenges Mayfly method for feature selection Attractiveness progression as a predictable procedure Running time, false admission ratio, false negative rate, and recognition accuracy are enhanced
[51]/2022 IR network improvement Meta-transfer learning (Attention MTL) technique Recognizing a person’s irises may be a handy biometric tool Attention MTL obtains up to 6% more accuracy than the standard MTL technique
[52]/2022 Discover iris traits Multi-scale Convolutional Feature Fusion Networks Tests on the CASIA-Iris-Lamp and CASIA-Iris-Syn databases The used method efficiently executes IR even when the iris does not register precisely.
[53]/2022 Trustworthy biometric authentication CNN The Hough circle removed the iris inner circle. Error ratios of 1.08%, 1.01%, 1.71%, and 1.11%

Table 9 provides a comparative evaluation of conventional and DL methodologies for IR and fingerprint fusion in multi-modal biometric systems. The system’s performance evaluation is conducted through the evaluation of the classifiers’ precision, recall, and F1 score on IR, fingerprint recognition, and the fusion of iris and fingerprint for biometric authentication. The performance of a classifier in accurately categorizing an input image based on the provided label is evaluated using metrics such as accuracy, F1 score, precision, and specificity [54]. The findings indicate that the utilization of DL-based methodology exhibits superior accuracy compared to the conventional approach, thereby highlighting the potential of DL techniques for multi-modal biometric applications.

Table 9

Multi-modal biometrics IR and fingerprint fusion

Database Approach Accuracy (%) F1 score (%) Precision (%) Specificity (%)
IR
CASIA interval [54] SVM 75.34 74.44 0.665 79.56
VGG-16(CNN) 93.56 92.56 0.976 95.99
Fingerprint recognition
FVC 2006 fingerprint [55] SVM 74.65 73.30 0.695 80.28
Line-based approach 83.82 84.68 0.829 83.93
IR and fingerprint fusion for multi-modal biometric application
CASIA interval V3 SVM 87.51 83.91 0.893 88.43
CNN 98.45 97.93 0.986 99.91

The term “classification sensitivity” pertains to the ability of a classifier to accurately detect positive cases, whereas “specificity” pertains to the ability of the same classifier to accurately detect negative cases. Multiple supplementary texture-generating techniques are integrated to enhance the efficacy of the feature extraction methodology. The VGG16 classifier employs the kernel function to facilitate IR. Additionally, many classifiers are used for biometrics and face detection and other methods [54,55]. There are different limitations in iris segmentation and recognition using DL to improve biometric applications exhibits enhanced dependability and a higher degree of error elimination, the utilization of line feature-based fingerprint recognition presents various benefits in comparison to conventional minutiae-based features, reduced template sizes, decreased memory consumption, expedited matching time, and enhanced resilience to image misrepresentation.

6 Conclusion

The objective of biometrics is to accurately and distinctively authenticate an individual by utilizing one or multiple physiological and/or behavioral characteristics. This article presented a comprehensive literature review of biometric systems that possess significant potential for expansion and advancement of conventional and DL approaches for IR, and examination of novel developments in every phase of the processing pipeline. Besides, it presents an analysis of distinct obstacles encountered in iris capture, classification, evaluation, feature encoding, matching, and recognition. Additionally, it evaluates various approaches that show potential for overcoming these challenges. The contributions are determined by the commonly used tools for iris segmentation and recognition using many DL algorithms to improve biometric applications on different sides. It provides an advantage for multi-modal biometrics IR and fingerprint fusion evaluation metrics. Also, it underscores the capabilities of DL techniques in the realm of IR and offers valuable perspectives for forthcoming investigations aimed at enhancing the precision and dependability of biometric systems. The future research directions are identity management and biometric authentication to maximize cyber hygiene. The capacity of on-premise and cloud-based verification solutions to be linked with an organization’s current legacy systems will drive their growing adoption.

Acknowledgments

The authors would like to thank Universiti Tenaga Nasional for support our study.

  1. Funding information: The authors received no specific funding for this study.

  2. Author contributions: Hind Hameed Rasheed: Conceptualization, Methodology, Formal analysis, Investigation, Writing – review & editing. Sara Swathy Shamini: Conceptualization, Formal analysis, Data curation, Project administration, Supervision. Moamin A. Mahmoud: Conceptualization, Formal analysis, Data curation, Project administration, Supervision. Mohammad Ahmed Alomari: Formal analysis, Investigation, Writing – review & editing.

  3. Conflict of interest: The authors declare no conflict of interest.

  4. Data availability statement: There is no any data used in this study because its review paper.

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Received: 2023-08-22
Revised: 2023-12-13
Accepted: 2023-12-23
Published Online: 2023-12-31

© 2023 the author(s), published by De Gruyter

This work is licensed under the Creative Commons Attribution 4.0 International License.

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