Abstract

As the second generation of biometric technology, finger vein recognition has become a research hotspot due to its advantages such as high security, and living body recognition. In recent years, the global pandemic has promoted the development of contactless identification. However, the unconstrained finger vein acquisition process will introduce more uneven illumination, finger image deformation, and some other factors that may affect the recognition, so it puts forward higher requirements for the acquisition speed, accuracy and other performance. Considering the universal, obvious, and stable characteristics of the original finger vein imaging, we proposed a new Region Of Interest (ROI) extraction method based on the characteristics of finger vein image, which contains three innovative elements: a horizontal Sobel operator with additional weights; an edge detection method based on finger contour imaging characteristics; a gradient detection operator based on large receptive field. The proposed methods were evaluated and compared with some representative methods by using four different public datasets of finger veins. The experimental results show that, compared with the existing representative methods, our proposed ROI extraction method is th of the processing time of the threshold-based methods, and it is similar to the time spent for coarse extraction in the mask-based methods. The ROI extraction results show that the proposed method has better robustness for different quality images. Moreover, the results of recognition matching experiments on different datasets indicate that our method achieves the best Equal Error Rate (EER) of without the refinement of feature extraction parameters, and all the EERs are significantly lower than those of the representative methods.

Highlights

  • In the field of Biometrics, security and efficiency are vital for recognition systems.the recognition accuracy and recognition rate need to be taken into account.In 2000, Kono et al [1] proposed a method to use finger vein patterns for authentication.Finger vein characteristics have very obvious advantages over other biophysiological characteristics such as: (1) vivo identification: finger vein information can only be obtained on living human beings; (2) uniqueness: T

  • We propose a novel Region Of Interest (ROI) extraction method based on the original finger vein image characteristics, which mainly includes: (1)

  • This proposed method including: (1) A new method which combines vein image with horizontal edge detection operator can detect finger edge efficiently and accurately; (2) A new large receptive field joint cavity inspection operator based on human visual characteristics; (3) Accurate search of joint cavity based on the proposed operator, and the accurate extraction of the vein image ROI

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Summary

Introduction

In the field of Biometrics, security and efficiency are vital for recognition systems. A robust, accurate, and fast ROI extraction method is crucial in preprocessing, which largely determines the efficiency and reliability of the finger vein recognition system. We propose a novel ROI extraction method based on the original finger vein image characteristics, which mainly includes:. The paper is organized as follows: Section 2 reviews the representative research results on ROI localization; Section 3 elaborates the proposed ROI extraction method for finger vein images and its innovative methods in each step; Section 4 designs and performs extensive experiments based on four different public datasets to test and validate the proposed method in terms of extraction time and recognition performance; Section 5 clarifies the research conclusions and gives an outlook for future research directions in this field

Related Works
The Proposed Method
Segmentation of Finger Region
Improved Edge Detection Operator
Finger Edge Search Rules Based on Finger Contour Imaging Properties
Finger Image Orientation Correction
Large Receptive Field Gradient Operators
ROI Extraction
Experiments
Experimental Data
Compare Different Finger Region Segmentation Methods
Comparison of Different Joint Cavity Localization Methods
The Process of the Proposed ROI Extraction Method
Comparison of Matching Performance
Findings
Conclusions
Full Text
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