Haar-Wavelet Transform based finger knukle print recognition

K. Usha, M. Ezhilarasan
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引用次数: 2

Abstract

In real time biometric based authentication environments, wavelet based functions are widely incorporated as one of the promising methods for feature extraction of biometric traits. In this paper, we propose a novel finger knuckle print (FKP) recognition technique based on Haar-Wavelet Transform (HWT). Haar - Wavelet transform is used to transform the original knuckle image into a subset of its feature space known as `Eigen Knuckle'. The principle components and local space variations are extracted and represented in the form of Eigen vectors. Matching of a knuckle images for personal identification is done by means of a classifier using correlation. Matching scores obtained from various finger knuckles of the same person are fused by means of sum-weighting rule of matching score level fusion. From the exhaustive experiments conducted using two publically available database for FKP, viz. PolyU FKP database and IIT FKP database, it has been found that the proposed HWT based feature extraction algorithm produces high recognition rate when compared to the existing transform based methods of FKP recognition.
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基于haar -小波变换的指关节指纹识别
在基于生物特征的实时认证环境中,小波函数作为一种很有前途的生物特征提取方法被广泛采用。本文提出了一种基于haar -小波变换(HWT)的指关节指纹识别技术。Haar -小波变换用于将原始关节图像转换为其特征空间的子集,称为“特征关节”。提取主分量和局部空间变化,并以特征向量的形式表示。采用相关分类器对指关节图像进行匹配,实现了指关节图像的个人识别。采用匹配分数等级融合的加权和规则,对同一人不同指关节的匹配分数进行融合。通过使用两个公开的FKP数据库(PolyU FKP数据库和IIT FKP数据库)进行详尽的实验,我们发现基于HWT的特征提取算法比现有的基于变换的FKP识别方法具有更高的识别率。
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