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Curvelet and Ridgelet-based Multimodal Biometric Recognition System using Weighted Similarity Approach

机译:加权相似度的基于Curvelet和Ridgelet的多峰生物特征识别系统

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Biometric security artifacts for establishing the identity of a person with high confidence have evoked enormous interest in security and access control applications for the past few years. Biometric systems based solely on unimodal biometrics often suffer from problems such as noise, intra-class variations and spoof attacks. This paper presents a novel multimodal biometric recognition system by integrating three biometric traits namely iris, fingerprint and face using weighted similarity approach. In this work, the multi-resolution features are extracted independently from query images using curvelet and ridgelet transforms, and are then compared to the enrolled templates stored in the database containing features of each biometric trait. The final decision is made by normalizing the feature vectors, assigning different weights to the modalities and fusing the computed scores using score combination techniques. This system is tested with the public unimodal databases such as CASIA–Iris-V3-Interval, FVC2004, ORL and self-built multimodal databases. Experimental results obtained shows that the designed system achieves an excellent recognition rate of 98.75 per cent and 100 per cent for the public and self-built databases respectively and provides ultra high security than unimodal biometric systems. Defence Science Journal, 2014,?64(2), pp. 106-114.? DOI: http://dx.doi.org/10.14429/dsj.64.3469
机译:在过去的几年中,用于建立具有高信心的人的身份的生物统计安全制品引起了人们对安全和访问控制应用程序的极大兴趣。仅基于单峰生物特征识别的生物特征识别系统经常遭受噪声,类内变异和欺骗攻击等问题的困扰。本文通过加权相似度方法结合虹膜,指纹和面部三个生物特征,提出了一种新颖的多模式生物特征识别系统。在这项工作中,使用curvelet和ridgelet变换从查询图像中独立提取多分辨率特征,然后将其与存储在包含每个生物特征特征的数据库中的已注册模板进行比较。通过归一化特征向量,为模态分配不同的权重并使用分数组合技术融合计算出的分数,可以做出最终决定。该系统已通过公共单峰数据库(例如CASIA–Iris-V3-Interval,FVC2004,ORL和自建的多峰数据库)进行了测试。实验结果表明,所设计的系统对公共数据库和自建数据库的识别率分别达到98.75%和100%,比单峰生物特征识别系统具有更高的安全性。国防科学杂志,2014,64(2),第106-114页。 DOI:http://dx.doi.org/10.14429/dsj.64.3469

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