Abstract

Palm vein recognition is a one of the most efficient biometric technologies, each individual can be identified through its veins unique characteristics, palm vein acquisition techniques is either contact based or contactless based, as the individual's hand contact or not the peg of the palm imaging device, the needs a contactless palm vein system in modern applications rise tow problems, the pose variations (rotation, scaling and translation transformations) since the imaging device cannot aligned correctly with the surface of the palm, and a delay of matching process especially for large systems, trying to solve these problems. This paper proposed a pose invariant identification system for contactless palm vein which include three main steps, at first data augmentation is done by making multiple copies of the input image then perform out-of-plane rotation on them around all the X,Y and Z axes. Then a new fast extract Region of Interest (ROI) algorithm is proposed for cropping palm region. Finally, features are extracted and classified by specific structure of Convolutional Neural Network (CNN). The system is tested on two public multispectral palm vein databases (PolyU and CASIA); furthermore, synthetic datasets are derived from these mentioned databases, to simulate the hand out-of-plane rotation in random angels within range from -20° to +20° degrees. To study several situations of pose invariant, twelve experiments are performed on all datasets, highest accuracy achieved is 99.73% ∓ 0.27 on PolyU datasets and 98 % ∓ 1 on CASIA datasets, with very fast identification process, about 0.01 second for identifying an individual, which proves system efficiency in contactless palm vein problems.

Highlights

  • The traditional personal identification or verification systems likehave become inefficient and unable to meet the needs of current society, since it can be stolen or lost

  • There are two types of palm vein acquisition techniques: contact based and contactless based, the contactless is more convenient for individuals, but without the peg guide the individual hand in contactless acquisition method, there will be pose variations in palm vein image affected by movement of the hand

  • Vol.15(4)2018 on local texture patterns for palm vein patterns using histograms and operators of multi-scale Local Binary Patterns (LBPs), higher-order local pattern descriptors is investigated by using histogram of Local Derivative Pattern (LDP), Abbas M, George E. in 2014 (5) suggested a palm vein recognition system using spatial energy distribution of wavelet sub-bands, Discrete Haar wavelet (DHW) is applied, the average energy distribution for each sub-band is computed, feature vector is gained by concatenated these sub-bands, Wang R, et al in in 2014 (6) presented palm vein identification method depending on Gabor wavelet, in the beginning, contrast limited adaptive histogram equalization (CLAHE) used for enhances the contrast and image skeletonization for vein thinning, Gabor wavelet transform-based method used for feature extraction

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Summary

Introduction

The traditional personal identification or verification systems like (passwords, ID cards, etc.). Have become inefficient and unable to meet the needs of current society, since it can be stolen or lost. For these reasons the biometrics identification systems becoming the focus of the research in recent years. Palm vein is a one of the most interesting type of biometric technologies, it is like a palmprint, but rather than using visible light spectrum for capturing palmprint, palm vein needs Near Infra-. Red (NIR) illumination for capture the vein pattern that hidden under palm skin. Each person has unique characteristics of the veins that can be used for identification or verification. Comparing with the other biometric techniques, palm vein is (1) (2): less costly

Easy acquiring
Baghdad Science Journal
Synthetic Dataset for Testing Phase
Data Augmentation
Histogram Equalization
Feature Extraction and Classification using CNN
Results and Discussion
No Augmentation
Full Text
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