Personal Identification for Single Sample Using Finger Vein Location and Direction Coding

Wenming Yang, Qing Rao, Q. Liao
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引用次数: 56

Abstract

Recent years have seen a plenty of personal identification methods with different biometrics such as finger pattern, face, palm-print and vein. The majority of these methods focus on complex image data projections and transforms in Fourier space, wavelet space or other domains, which usually bring heavy load in computation and difficult understanding in perceptual intuition. Moreover, these methods, oriented to multiple samples learning, are constricted usually in application. Among so much biometrics, vein, as a living feature with high anti-counterfeiting capability, has attracted considerable attention. In this paper, we propose a structured personal identification approach using finger vein Location and Direction Coding(LDC). First of all, we design a finger vein imaging device with near-infrared(NIR) light source, by which a database for finger vein images is established. Subsequently, we make use of the brightness difference in the finger vein image to extract the vein pattern. Furthermore, finger vein LDC is proposed and performed, which creates a structured feature image for each finger vein. Finally, the structured feature image is utilized to conduct the personal identification on our image database for finger vein, which includes 440 vein images from 220 different fingers. The equal error rate of our method for this database is 0.44%.
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基于手指静脉定位和方向编码的单样本个人识别
近年来,基于指纹、面部、掌纹、静脉等不同生物特征的个人身份识别方法层出不穷。这些方法大多集中在复杂图像数据在傅里叶空间、小波空间或其他域的投影和变换上,通常会带来计算量大、感知直觉理解困难的问题。此外,这些面向多样本学习的方法在实际应用中往往存在局限性。在众多的生物识别技术中,静脉作为一种具有较高防伪能力的活体特征,受到了人们的广泛关注。本文提出了一种基于手指静脉定位与方向编码(LDC)的结构化个人识别方法。首先,我们设计了一种近红外光源的手指静脉成像装置,通过该装置建立了手指静脉图像数据库。随后,我们利用手指静脉图像的亮度差提取静脉模式。在此基础上,提出并实现了手指静脉LDC算法,为每个手指静脉生成结构化特征图像。最后,利用结构化特征图像在我们的手指静脉图像数据库中进行个人识别,该数据库包含220个不同手指的440张静脉图像。对于这个数据库,我们的方法的错误率为0.44%。
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