Iris-Fingerprint multimodal biometric system based on optimal feature level fusion model

Chetana Kamlaskar, A. Abhyankar
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引用次数: 8

Abstract

For reliable and accurate multimodal biometric based person verification, demands an effective discriminant feature representation and fusion of the extracted relevant information across multiple biometric modalities. In this paper, we propose feature level fusion by adopting the concept of canonical correlation analysis (CCA) to fuse Iris and Fingerprint feature sets of the same person. The uniqueness of this approach is that it extracts maximized correlated features from feature sets of both modalities as effective discriminant information within the features sets. CCA is, therefore, suitable to analyze the underlying relationship between two feature spaces and generates more powerful feature vectors by removing redundant information. We demonstrate that an efficient multimodal recognition can be achieved with a significant reduction in feature dimensions with less computational complexity and recognition time less than one second by exploiting CCA based joint feature fusion and optimization. To evaluate the performance of the proposed system, Left and Right Iris, and thumb Fingerprints from both hands of the SDUMLA-HMT multimodal dataset are considered in this experiment. We show that our proposed approach significantly outperforms in terms of equal error rate (EER) than unimodal system recognition performance. We also demonstrate that CCA based feature fusion excels than the match score level fusion. Further, an exploration of the correlation between Right Iris and Left Fingerprint images (EER of 0.1050%), and Left Iris and Right Fingerprint images (EER of 1.4286%) are also presented to consider the effect of feature dominance and laterality of the selected modalities for the robust multimodal biometric system.
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基于最优特征级融合模型的虹膜-指纹多模态生物识别系统
为了实现可靠、准确的基于多模态生物特征的人的身份验证,需要有效的判别特征表示和多模态提取的相关信息融合。本文采用典型相关分析(canonical correlation analysis, CCA)的概念,对同一个人的虹膜和指纹特征集进行融合。该方法的独特之处在于,它从两种模态的特征集中提取出最大的相关特征,作为特征集中有效的判别信息。因此,CCA适合于分析两个特征空间之间的潜在关系,并通过去除冗余信息生成更强大的特征向量。我们证明了利用基于CCA的联合特征融合和优化,可以在显著减少特征维度的情况下实现高效的多模态识别,计算复杂度更低,识别时间小于1秒。为了评估该系统的性能,本实验考虑了SDUMLA-HMT多模态数据集的左右虹膜和双手拇指指纹。我们表明,我们提出的方法在等错误率(EER)方面明显优于单峰系统识别性能。我们还证明了基于CCA的特征融合优于匹配分数水平融合。此外,还探讨了右虹膜和左指纹图像(EER为0.1050%)和左虹膜和右指纹图像(EER为1.4286%)之间的相关性,以考虑特征优势和所选模态对鲁棒多模态生物识别系统的横向影响。
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来源期刊
AIMS Electronics and Electrical Engineering
AIMS Electronics and Electrical Engineering Engineering-Control and Systems Engineering
CiteScore
2.40
自引率
0.00%
发文量
19
审稿时长
8 weeks
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