5 research outputs found

    Generating and analyzing synthetic finger vein images

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    Abstract: The finger-vein biometric offers higher degree of security, personal privacy and strong anti-spoofing capabilities than most other biometric modalities employed today. Emerging privacy concerns with the database acquisition and lack of availability of large scale finger-vein database have posed challenges in exploring this technology for large scale applications. This paper details the first such attempt to synthesize finger-vein images and presents analysis of synthesized images for the biometrics authentication. We generate a database of 50,000 finger vein images, corresponding to 5000 different subjects, with 10 different synthesized finger-vein images from each of the subject. We use tractable probability models to compare synthesized finger-vein images with the real finger- vein images for their image variability. This paper also presents matching accuracy using the synthesized finger-vein database from 5000 different subjects, using 225000 genuine and 1249750000 impostor matching scores, which suggests significant promises from this finger-vein biometric modality for large scale biometrics applications

    Cross-Database Evaluation With an Open Finger Vein Sensor

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    Finger vein recognition is a recent biometric application, which relies on the use of human finger vein patterns beneath the skin's surface. While several methods have been proposed in the literature, its applicability to uncontrolled scenarios has not yet been shown. To this purpose this paper first introduces the VERA database, a new challenging publicly available database of finger vein images. This corpus consists of 440 index finger images from 110 subjects collected with an open device in an uncontrolled way. Second, an evaluation of state-of-the-art finger vein recognition systems is performed, both on the controlled UTFVP database and on the new VERA database. This is achieved using a new open source and extensible framework, which allows fair and reproducible benchmarks. Experimental results show that challenging recording conditions such as misalignments of the fingers lead to an absolute degradation in equal error rate of 2.75% up to 24.10% on VERA when compared to the best performances on UTFVP

    Improved methods for finger vein identification using composite median-wiener filter and hierarchical centroid features extraction

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    Finger vein identification is a potential new area in biometric systems. Finger vein patterns contain highly discriminative characteristics, which are difficult to be forged because they reside underneath the skin of the finger and require a specific device to capture them. Research have been carried out in this field but there is still an unresolved issue related to low-quality data due to data capturing and processing. Low-quality data have caused errors in the feature extraction process and reduced identification performance rate in finger vein identification. To address this issue, a new image enhancement and feature extraction methods were developed to improve finger vein identification. The image enhancement, Composite Median-Wiener (CMW) filter would improve image quality and preserve the edges of the finger vein image. Next, the feature extraction method, Hierarchical Centroid Feature Method (HCM) was fused with statistical pixel-based distribution feature method at the feature-level fusion to improve the performance of finger vein identification. These methods were evaluated on public SDUMLA-HMT and FV-USM finger vein databases. Each database was divided into training and testing sets. The average result of the experiments conducted was taken to ensure the accuracy of the measurements. The k-Nearest Neighbor classifier with city block distance to match the features was implemented. Both these methods produced accuracy as high as 97.64% for identification rate and 1.11% of equal error rate (EER) for measures verification rate. These showed that the accuracy of the proposed finger vein identification method is higher than the one reported in the literature. As a conclusion, the results have proven that the CMW filter and HCM have significantly improved the accuracy of finger vein identification

    Exploration of Low SWaP(Size,Weight and Power) Diffuse Optical Tomography and Imaging Technique for Biometrics

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    Title from PDF of title page, viewed September 19, 2023Thesis advisor: Rahman MostafizurVitaIncludes bibliographical references (pages 51-55)Thesis (M.S.)--Department of Computer Science and Electrical Engineering. University of Missouri--Kansas City, 2023There have been significant advancements in biometric systems, with a particular focus on Iris, facial, and fingerprint recognition. My research, however, is centered around wrist vein recognition and involves the development of two biometric modalities: wrist vein imaging and Diffuse Optical Tomography (DoT) data. The primary objective is to create a hardware system with low size, weight, and power consumption. The proposed setup utilizes IR Light as the light source. The IR light penetrates and scatters through the layers of tissue, and when it encounters the Blood volume, deoxygenated blood absorbs the IR light, causing the vein to appear darker. Meanwhile, the DoT data captures the biological characteristics using a photodiode on the wrist when exposed to IR light. These two methods serve as low-cost biometric alternatives. The ultimate goal is to develop a wearable hardware system capable of real-time data capturing with high accuracy. Additionally, it should be robust to environmental changes and operate on ultra-low power consumption.Hardware design -- Test methodology -- Results and discussion -- Conclusion and future wor

    The CFVD Reflection-Type Finger-Vein Image Database with Evaluation Baseline

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