49 research outputs found

    A Survey of Iris Recognition System

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    The uniqueness of iris texture makes it one of the reliable physiological biometric traits compare to the other biometric traits. In this paper, we investigate a different level of fusion approach in iris image. Although, a number of iris recognition methods has been proposed in recent years, however most of them focus on the feature extraction and classification method. Less number of method focuses on the information fusion of iris images. Fusion is believed to produce a better discrimination power in the feature space, thus we conduct an analysis to investigate which fusion level is able to produce the best result for iris recognition system. Experimental analysis using CASIA dataset shows feature level fusion produce 99% recognition accuracy. The verification analysis shows the best result is GAR = 95% at the FRR = 0.1

    On Generative Adversarial Network Based Synthetic Iris Presentation Attack And Its Detection

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    Human iris is considered a reliable and accurate modality for biometric recognition due to its unique texture information. Reliability and accuracy of iris biometric modality have prompted its large-scale deployment for critical applications such as border control and national identification projects. The extensive growth of iris recognition systems has raised apprehensions about the susceptibility of these systems to various presentation attacks. In this thesis, a novel iris presentation attack using deep learning based synthetically generated iris images is presented. Utilizing the generative capability of deep convolutional generative adversarial networks and iris quality metrics, a new framework, named as iDCGAN is proposed for creating realistic appearing synthetic iris images. In-depth analysis is performed using quality score distributions of real and synthetically generated iris images to understand the effectiveness of the proposed approach. We also demonstrate that synthetically generated iris images can be used to attack existing iris recognition systems. As synthetically generated iris images can be effectively deployed in iris presentation attacks, it is important to develop accurate iris presentation attack detection algorithms which can distinguish such synthetic iris images from real iris images. For this purpose, a novel structural and textural feature-based iris presentation attack detection framework (DESIST) is proposed. The key emphasis of DESIST is on developing a unified framework for detecting a medley of iris presentation attacks, including synthetic iris. Experimental evaluations showcase the efficacy of the proposed DESIST framework in detecting synthetic iris presentation attacks

    Multi scale ICA based iris recognition using BSIF and Hog

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    Iris is a physiological biometric trait, which is unique among all biometric traits to recognize person effectively. In this paper we propose Multi-scale Independent Component Analysis (ICA) based Iris Recognition using Binarized Statistical Image Features (BSIF) and Histogram of Gradient orientation (HOG). The Left and Right portion is extracted from eye images of CASIA V 1.0 database leaving top and bottom portion of iris. The multi-scale ICA filter sizes of 5X5, 7X7 and 17X17 are used to correlate with iris template to obtain BSIF. The HOGs are applied on BSIFs to extract initial features. The final feature is obtained by fusing three HOGs. The Euclidian Distance is used to compare the final feature of database image with test image final features to compute performance parameters. It is observed that the performance of the proposed method is better compared to existing methods

    Iris Recognition System based on ZM, GF, VR and Matching Level Fusion

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    Isis is the physiological biometric trait used to recognized a person efficiently. In this paper, we propose Iris Recognition System based on ZM, GF, VR and Matching Level Fusion. The Region of Interest (ROI) of iris is extracted using segmentation. Zernike Moments (ZM) is applied on segmented iris images to extract ZM features. The novel concept of many feature vectors of a single person are converted into single vector per person ie., Vectors Reduction (VR). The Euclidian Distance (ED) is used to compare feature vectors in the database with feature vectors in test section to compute the performance parameters. The Gabor Filter (GF) is also used to extract features of iris. Many GF feature vectors of single person are connected into single feature vector per person. The ED is used to compare database and test feature vectors to compute performance parameters. The performance parameters obtained from ZM and GF are fused using normalization technique to improve the performance parameters. It is observed that, the performance parameters are better compared to existing techniques
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