Finger Knuckle Print Recognition using MMDA with Fuzzy Vault

MuthuKumar Arunachalamand, Kavipriya Amuthan
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引用次数: 4

Abstract

Currently frequent biometric scientific research such as with biometric applications like face, iris, voice, hand-based biometrics traits like palm print and fingerprint technique are utilized for spotting out the persons. These specific biometrics habits have their own improvement and weakness so that no particular biometrics can adequately opt for all terms like the accuracy and cost of all applications. In recent times, in addition, to distinct with the hand-based biometrics technique, Finger Knuckle Print (FKP) has been appealed to boom the attention among biometric researchers. The image template pattern formation of FKP embraces the report that is suitable for spotting the uniqueness of individuality. This FKP trait observes a person based on the knuckle print and the framework in the outer finger surface. This FKP feature determines the line anatomy and finger structures which are well established and persistent throughout the life of an individual. In this paper, a novel method for personal identification will be introduced, along with that data to be stored in a secure way has also been proposed. The authentication process includes the transformation of features using 2D Log Gabor filter and Eigen value representation of Multi-Manifold Discriminant Analysis (MMDA) of FKP. Finally, these features are grouped using k-means clustering for both identification and verification process. This proposed system is initialized based on the FKP framework without a template based on the fuzzy vault. The key idea of fuzzy vault storing is utilized to safeguard the secret key in the existence of random numbers as chaff pints.
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基于模糊Vault的MMDA指关节指纹识别
目前频繁的生物识别科学研究,如面部、虹膜、声音等生物识别应用,以及基于手的生物识别特征,如掌纹和指纹技术,被用来识别人。这些特定的生物识别习惯有其自身的改进和弱点,因此没有特定的生物识别技术可以充分选择所有应用程序的准确性和成本等所有方面。近年来,手指指关节指纹(FKP)作为一种不同于基于手的生物识别技术,受到了生物识别研究人员的广泛关注。FKP的图像模板模式形成包含了适合发现个性独特性的报告。这种FKP特征是根据指关节印和外指表面的框架来观察一个人的。这种FKP特征决定了线条解剖结构和手指结构,这些结构在个体的一生中都很好地建立和持续。本文将介绍一种新的个人身份识别方法,并提出了一种安全存储数据的方法。该认证过程包括利用二维Log Gabor滤波器对特征进行变换和利用多流形判别分析(MMDA)的特征值表示。最后,使用k-means聚类对这些特征进行分组,以进行识别和验证过程。该系统是基于FKP框架初始化的,没有基于模糊vault的模板。利用模糊保险库存储密钥的思想,在存在随机数的情况下保护密钥。
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