Modeling the Uncertainty in Finger-Vein Authentication by the Gaussian Mixture Model

Hongyu Ren, Da Xu, Wenxin Li
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引用次数: 1

Abstract

The robustness and uniqueness of finger-vein makes it an ideal biometric feature for personal authentication. General finger-vein authentication methods consist of two parts, feature extraction and feature matching. Finger-vein images captured by infrared device are subject to uncertainties caused by various temperature, irregular illumination and finger posture deformation. Uncertainties cause severe artifacts, which make the extracted features unsatisfying and hard to match. We try to alleviate the problem during matching by modeling the extracted features as Gaussian Mixture Model (GMM). In the proposed method, given two feature maps of finger-vein, we first model inputs as GMM using the normal distribution transform, and then minimize the distance between two GMMs based on gradient descent, lastly we output the possibility that two feature maps belong to one person. To show its superiority, we replace conventional feature matching schemes with proposed method and test the performance gain based on two kinds of finger-vein features: finger-vein trajectory and finger-vein skeleton. Experimental results on the RATE dataset show that the proposed method is superior to the conventional methods in precision.
基于高斯混合模型的指静脉认证不确定性建模
手指静脉的鲁棒性和唯一性使其成为理想的个人身份认证生物特征。一般的指静脉认证方法包括特征提取和特征匹配两个部分。红外设备采集到的指静脉图像受不同温度、不规则光照和手指姿态变形等因素的不确定性影响。不确定性会导致严重的伪影,使提取的特征不令人满意,难以匹配。我们试图通过将提取的特征建模为高斯混合模型(GMM)来缓解匹配过程中的问题。在该方法中,给定两个指静脉特征图,首先使用正态分布变换将输入建模为GMM,然后基于梯度下降最小化两个GMM之间的距离,最后输出两个特征图属于一个人的可能性。为了证明该方法的优越性,我们用该方法代替了传统的特征匹配方案,并对基于指静脉轨迹和指静脉骨架两种特征的性能增益进行了测试。在RATE数据集上的实验结果表明,该方法在精度上优于传统方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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