Abstract

Some portions of dorsal hand may be occluded due to injuries, pigmentation, or tattoos, which significantly affects the performance of dorsal hand vein recognition systems. Biometric graph matching is a common shape-based feature extraction algorithm for vein recognition. However, this method does not consider edge attributes, which can provide additional discrimination ability. We present an improved biometric graph matching method that includes edge attributes for graph registration and a matching module to extract discriminating features. Moreover, we propose a recognition system for partially occluded dorsal hand vein. A database of normal hand vein images, three databases of images with artificially occluded dorsal hand vein with occlusions in different positions and ratios, and a database of images with tattooed hands are established to verify the validity of the proposed method. The experimental results demonstrated that the equal error rates and the accuracies were 0.0202 and 98.09% ± 0.28%, respectively for the normal hand vein images, 0.0453 and 96.58% ± 0.34%, respectively for images of artificially occluded dorsal hand vein with occlusion at all positions and area ratios (0 - 20%, mean occluded area ratio = 9.3%), and 0.0343 and 97.14% ± 0.29%, respectively for the images of tattooed hands.

Highlights

  • Vein patterns in the dorsal hand are commonly used for biometric recognition and are detected using infrared light from the live body

  • We evaluated the performance of improved BGM (IBGM) using the normal hand vein (NHV), AOV_1 to AOV_3, and the tattooed hand vein (THV)

  • WORK In this paper, we proposed the IBGM method by adding edge attributes to the graph registration and matching to improve the method’s discriminative power in the presence of occlusion of dorsal hand veins

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Summary

INTRODUCTION

Vein patterns in the dorsal hand are commonly used for biometric recognition and are detected using infrared light from the live body. Wei extracted discriminative local features using hyperspectral images of dorsal hand vein [8]. F. Liu et al.: Recognition System for Partially Occluded Dorsal Hand Vein Using IBGM variations, but do not consider the holistic geometric shape of vein pattern, leaving room for improving the recognition accuracy [11]. Unlike texture-based feature extraction algorithms, shape-based feature extraction algorithms are robust to different lighting conditions and consider holistic geometric shape of vein pattern, which is unique in each person [11] These algorithms segment the vein area and subsequently abstract the skeletons and extract the shape features. We present an improved BGM (IBGM) method for dorsal hand vein recognition systems.

OVERVIEW OF BGM
GRAPH REGISTRATION
GRAPH MATCHING
MODIFIED GRAPH MATCHING
MODIFIED MEASUREMENT OF DISTANCE FEATURES
DORSAL HAND VEIN RECOGNITION SYSTEM
EXPERIMENTAL RESULTS AND DISCUSSION
PERFORMANCE EVALUATION FOR THE NHV
CONCLUSION AND FUTURE WORK
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