Article ID Journal Published Year Pages File Type
535847 Pattern Recognition Letters 2012 6 Pages PDF
Abstract

Multimodal biometrics based on feature-level fusion is a significant topic in personal identification research community. In this paper, a new fingerprint-vein based biometric method is proposed for making a finger more universal in biometrics. The fingerprint and finger-vein features are first exploited and extracted using a unified Gabor filter framework. Then, a novel supervised local-preserving canonical correlation analysis method (SLPCCAM) is proposed to generate fingerprint-vein feature vectors (FPVFVs) in feature-level fusion. Based on FPVFVs, the nearest neighborhood classifier is employed for personal identification finally. Experimental results show that the proposed approach has a high capability in fingerprint-vein based personal recognition as well as multimodal feature-level fusion.

► Proposed a new fingerprint-fingervein based biometric method. ► Extracted the two biometric features using an unified Gabor framework. ► Proposed a novel supervised local-preserving canonical correlation analysis method.

Related Topics
Physical Sciences and Engineering Computer Science Computer Vision and Pattern Recognition
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