Abstract

Palm vein hidden under the skin and its distribution feature is hard to be stolen, which makes the palm vein recognition to be a high security biometric authentication method. Contact-less palm vein imaging can avoid the spread of disease, thus expanding the application range of palm vein biometric authentication devices. However, due to the different un-derstanding of the right imaging position and the change of fingers open degree, contact-less palm vein image acquisi-tion led to a certain degree of translation, rotation, scaling and shear, that is, the image deformation. Image deformation causes the imaging feature unstable. In this paper, the effect of image deformation to the stability of palm vein features is studied by some similarity parameters. First, feature points in the palm were marked, contact-less imaging and con-tact imaging of palm vein were acquired. Then, this paper calculated the similarity parameters of the contact-less imag-ing to contact imaging and gave corresponding analysis. Experimental results show that contact-less palm vein imagingwas stable, and derived the linear regression equation of relationship between sample space and the recognition rate: y =?0.000903x + 1.0332, coefficient of determination R2 = 0.9824. This research provided effective and detailed data to the study of contact-less palm vein recognition and gave powerful support to contact-less multi-feature fusion recogni-tion based on hand.

Highlights

  • Palm vein is a permanence and uniqueness physiological feature of human [1,2]

  • Due to the different understanding of the right imaging position and the change of fingers open degree, contact-less palm vein image acquisition led to a certain degree of translation, rotation, scaling and shear, that is, the image deformation

  • The effect of image deformation to the stability of palm vein features is studied by some similarity parameters

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Summary

Introduction

Palm vein is a permanence and uniqueness physiological feature of human [1,2]. Palm vein recognition as a new family of biometric technology has gained more and more attentions these years and it is expected to have a wide range of security application. The captured image taken the stage of preprocessing, feature extraction matches the feature of the palm vein image in the database. Reference [9] realized contact-less palm vein recognition with a robust processing method, it didn’t involve the feature stability of imaging. To investigate the feature stability of palm vein image, this paper designs two experiments to evaluate the similarity parameter and recognition rate. If extracted all feature points in palm vein image by programming, the result would be affected a lot by the algorithm of preprocessing, feature extraction and feature matching. To eliminate this effect, our research designed an experiment to measure the similarity of contact-less image to contact image. In order to remove these impacts, this paper presents a simulation of the palm vein feature point method, and designed two experiments

Evaluation Methods Based on Similarity
Evaluation Methods Based on Recognition Rate
Similarity Experiment
Result Analysis of Similarity Experiment
Result Analysis of Recognition Rate Experiment
Conclusions
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